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SIMBA - 2025

2025Activity reportProject-Team​​SIMBA

RNSR: 202424506M
  • Research​​​‌ center Inria Centre at​ Université de Lorraine
  • In​‌ partnership with:Université de​​ Lorraine, CNRS
  • Team name:​​​‌ Statistical Inference and Modeling​ for Biological Applications
  • In​‌ collaboration with:Institut Elie​​ Cartan de Lorraine (IECL)​​​‌

Creation of the Project-Team:​ 2024 January 01

Each​‌ year, Inria research teams​​ publish an Activity Report​​​‌ presenting their work and​ results over the reporting​‌ period. These reports follow​​ a common structure, with​​​‌ some optional sections depending​ on the specific team.​‌ They typically begin by​​ outlining the overall objectives​​​‌ and research programme, including​ the main research themes,​‌ goals, and methodological approaches.​​ They also describe the​​​‌ application domains targeted by​ the team, highlighting the​‌ scientific or societal contexts​​ in which their work​​​‌ is situated.

The reports​ then present the highlights​‌ of the year, covering​​ major scientific achievements, software​​​‌ developments, or teaching contributions.​ When relevant, they include​‌ sections on software, platforms,​​ and open data, detailing​​​‌ the tools developed and​ how they are shared.​‌ A substantial part is​​ dedicated to new results,​​​‌ where scientific contributions are​ described in detail, often​‌ with subsections specifying participants​​ and associated keywords.

Finally,​​​‌ the Activity Report addresses​ funding, contracts, partnerships, and​‌ collaborations at various levels,​​ from industrial agreements to​​​‌ international cooperations. It also​ covers dissemination and teaching​‌ activities, such as participation​​ in scientific events, outreach,​​​‌ and supervision. The document​ concludes with a presentation​‌ of scientific production, including​​ major publications and those​​​‌ produced during the year.​

Keywords

Computer Science and​‌ Digital Science

  • A3.1. Data​​
  • A3.2. Knowledge
  • A3.2.3. Inference​​​‌
  • A3.3. Data and knowledge​ analysis
  • A3.3.1. On-line analytical​‌ processing
  • A3.3.2. Data mining​​
  • A3.3.3. Big data analysis​​​‌
  • A6.1. Methods in mathematical​ modeling
  • A6.1.1. Continuous Modeling​‌ (PDE, ODE)
  • A6.1.2. Stochastic​​ Modeling
  • A6.1.3. Discrete Modeling​​​‌ (multi-agent, people centered)
  • A6.1.4.​ Multiscale modeling
  • A6.2. Scientific​‌ computing, Numerical Analysis &​​ Optimization
  • A6.2.2. Numerical probability​​​‌
  • A6.2.3. Probabilistic methods
  • A6.2.4.​ Statistical methods
  • A9.2.1. Supervised​‌ learning
  • A9.2.2. Unsupervised learning​​
  • A9.2.5. Bayesian methods
  • A9.2.7.​​​‌ Kernel methods

Other Research​ Topics and Application Domains​‌

  • B1. Life sciences
  • B1.1.​​ Biology
  • B1.1.2. Molecular and​​​‌ cellular biology
  • B1.1.4. Genetics​ and genomics
  • B1.1.6. Evolutionnary​‌ biology
  • B1.1.8. Mathematical biology​​
  • B1.1.10. Systems and synthetic​​​‌ biology
  • B1.1.11. Plant Biology​
  • B2.2. Physiology and diseases​‌
  • B2.2.1. Cardiovascular and respiratory​​ diseases
  • B2.2.3. Cancer
  • B2.3.​​​‌ Epidemiology
  • B2.4. Therapies
  • B2.4.2.​ Drug resistance

1 Team​‌ members, visitors, external collaborators​​

Research Scientists

  • Nicolas Champagnat​​​‌ [Team leader,​ INRIA, Senior Researcher​‌, HDR]
  • Coralie​​ Fritsch [INRIA,​​​‌ Researcher, HDR]​
  • Ulysse Herbach [INRIA​‌, Researcher]
  • Edouard​​ Strickler [CNRS,​​​‌ Researcher]

Faculty Members​

  • Koléhè Coulibaly Pasquier [​‌UL, Associate Professor​​ Delegation, from Sep​​ 2025]
  • Sandie Ferrigno​​​‌ [UL, Associate‌ Professor]
  • Anne Gégout‌​‌ Petit [UL,​​ Professor, HDR]​​​‌
  • Jean-Marie Monnez [UL‌, Emeritus, HDR‌​‌]
  • Pierre Vallois [​​UL, Professor,​​​‌ HDR]
  • Denis Villemonais‌ [Univ. Strasbourg,‌​‌ Professor, HDR]​​
  • Sophie Wantz-Mézières [UL​​​‌, Associate Professor]‌

Post-Doctoral Fellow

  • Elie Cerf‌​‌ [INRIA, Post-Doctoral​​ Fellow]

PhD Students​​​‌

  • Sophie Baland [UL‌]
  • Virgile Brodu [‌​‌UL, ATER,​​ from Sep 2025]​​​‌
  • Virgile Brodu [UL‌, until Aug 2025‌​‌]
  • Mathilde Gaillard [​​INRIA]
  • Vincent Kagan​​​‌ [UL]
  • Juan‌ Mardomingo Sanz [UL‌​‌, from Oct 2025​​]
  • Anouk Rago [​​​‌UL, ATER,‌ until Oct 2025]‌​‌
  • Vidhi Vidhi [INRIA​​]

Interns and Apprentices​​​‌

  • Lorenzo Boussion [ENS‌ Paris-Saclay, Intern,‌​‌ from Apr 2025 until​​ Jul 2025]
  • Roxane​​​‌ Cellier [INRIA,‌ Intern, from Apr‌​‌ 2025 until Sep 2025​​]
  • Juan Mardomingo Sanz​​​‌ [UL, Intern‌, from Apr 2025‌​‌ until Sep 2025]​​
  • Thibaut Pannet [INRIA​​​‌, Intern, from‌ May 2025 until Aug‌​‌ 2025]
  • Mattheo Rapenne​​ [UL, Intern​​​‌, from Apr 2025‌ until Aug 2025]‌​‌

Administrative Assistants

  • Emmanuelle Deschamps​​ [INRIA, until​​​‌ Mar 2025]
  • Ouiza‌ Herbi [INRIA,‌​‌ from Mar 2025]​​

2 Overall objectives

SIMBA​​​‌ is a joint team‌ of Inria, CNRS and‌​‌ University of Lorraine, within​​ the Institut Élie Cartan​​​‌ de Lorraine (IECL), UMR‌ 7502 CNRS-UL, laboratory in‌​‌ mathematics, of which Inria​​ is a strong partner.​​​‌ The team is composed‌ of applied mathematicians whose‌​‌ research interests mainly concern​​ probability and statistics with​​​‌ applications in biology and‌ medicine.

Many fundamental questions‌​‌ and applications in medicine​​ and biology critically rely​​​‌ on our capacity to‌ construct, estimate, analyse and‌​‌ simulate complex mathematical models.​​ They can aim at​​​‌ building predictions and decision‌ making processes upon heterogeneous,‌​‌ noisy, incomplete or inconsistent​​ data, at improving the​​​‌ understanding of complex phenomena‌ involving several interacting subsystems‌​‌ that can only be​​ calibrated separately, or at​​​‌ supplying a priori information‌ on phenomena that cannot‌​‌ be reproduced in laboratory​​ experiments or for which​​​‌ data are too costly‌ to collect. In the‌​‌ past years, these models​​ have been gradually refined,​​​‌ taking into account more‌ interactions or dependencies between‌​‌ different components, more heterogeneity​​ between subsystems and a​​​‌ wider range of time‌ or space scales. Along‌​‌ with this gradual complexification,​​ the importance of stochasticity​​​‌ has been recognized as‌ fundamental in many biological‌​‌ or medical studies, either​​ to take into account​​​‌ intrinsic randomness in biological‌ processes, to evaluate confidence‌​‌ in a model’s parameters​​ or predictions, or to​​​‌ take into account randomness‌ or uncertainties in environmental‌​‌ conditions. In parallel, the​​ specificities of bio-medical data,​​​‌ which are typically high‌ dimensional, heterogeneous, correlated and‌​‌ with few observations, and​​ their gradual increase pose​​​‌ new statistical challenges in‌ terms of classification, prediction,‌​‌ variable selection or streaming​​​‌ data analysis.

Our expertise​ gathers a large spectrum​‌ of mathematical domains, ranging​​ from statistics to stochastic​​​‌ modeling and analysis. We​ share a common experience​‌ and dedication to interactions​​ with other sciences (biology,​​​‌ medicine) and interested parties​ (physicians, clinical researchers in​‌ the medical domain, start-ups).​​ Our application domains are​​​‌ medicine, epidemiology, systems biology,​ ecology and evolution. The​‌ specificity of our group​​ is our capacity to​​​‌ use a broad range​ of tools to answer​‌ practical statistical, modeling and​​ analytical questions posed by​​​‌ collaborators from biology or​ medicine.

We believe that​‌ an interdisciplinary approach is​​ crucial to answer questions​​​‌ posed by biologists or​ physicians, but can also​‌ bring original mathematical questions​​ requiring the development of​​​‌ new theoretical tools which​ may apply to a​‌ broader range of application​​ domains. Our ambition is​​​‌ therefore both to follow​ a bottom-up research program,​‌ where we tackle practical​​ modeling or statistical questions​​​‌ posed by practitioners, and​ a top-down approach where​‌ we develop new mathematical​​ tools to study general​​​‌ models and questions from​ biology and medicine. Part​‌ of our work is​​ purely mathematical, but always​​​‌ motivated by biological applications.​

Statistical and stochastic modeling​‌ are central to our​​ project. The range of​​​‌ mathematical models we study​ is large, but they​‌ all share common features:​​ we are mainly interested​​​‌ in dynamical models of​ biological populations with interactions​‌ (in a general sense).​​ In our models, populations​​​‌ can be composed of​ individuals (in ecology, evolution​‌ or epidemiology), cells (e.g.​​ bacteria in ecology or​​​‌ tumor cells in medicine),​ genes or proteins (in​‌ systems biology), or populations​​ in the statistical sense​​​‌ (e.g. patients in epidemiology).​ Interactions or coupling can​‌ occur within a population​​ or between species (e.g.​​​‌ in evolution), between cells​ (e.g. in oncology), between​‌ genes or proteins (intracellular​​ networks), with an environment​​​‌ (e.g. in tumor growth,​ where environmental conditions are​‌ linked to medical treatment,​​ or in ecology) or​​​‌ between high-dimensional statistical variables​ (e.g. clustering and variable​‌ selection in epidemiology). In​​ biology and medicine, models​​​‌ were primarily developed to​ understand phenomena at fixed​‌ time and space scales.​​ Today, more and more​​​‌ models aim at studying​ phenomena at large scales​‌ resulting from delicate coupling​​ and interactions between scales.​​​‌ Descriptions at small scales​ are typically high dimensional​‌ and often involve stochastic​​ features, or a combination​​​‌ of stochastic and deterministic​ features (hybrid models). Our​‌ research project aims at​​ studying such complex systems​​​‌ using analytical tools to​ construct: 1. coarse-grained representations​‌ of small scale features​​ (through averaging, ergodic limits,​​​‌ homogenization, mean field models...);​ 2. specific numerical methods,​‌ possibly based on coarse-grained​​ representations, to efficiently bridge​​​‌ the gap between different​ time and space scales;​‌ 3. appropriate statistical inference​​ or learning tools often​​​‌ based on limited or​ partial observation, in order​‌ to make predictions.

3​​ Research program

The research​​​‌ challenges we present in​ this section are mainly​‌ theoretical or methodological. All​​ of them are motivated​​​‌ by biological or medical​ applications and provide a​‌ wide methodological toolbox that​​ can be combined to​​ answer biological or medical​​​‌ questions.

3.1 Stochastic modeling‌ for health

The modeling‌​‌ issues we address in​​ medicine aim at understanding​​​‌ fundamental mechanisms of cancer‌ development, understanding how cells‌​‌ make decisions through gene​​ expression and bringing new​​​‌ insights on the evolution‌ of telomere length distribution‌​‌ with age and across​​ a population. Telomeres are​​​‌ non-coding regions of repetitive‌ nucleotide sequences located at‌​‌ each end of chromosomes.​​ In human, they shorten​​​‌ at each cell division‌ and it is known‌​‌ that short telomere lengths​​ are statistically linked to​​​‌ age related diseases. These‌ transversal applications are described‌​‌ in Section 4.​​

Population dynamics of tumor​​​‌ cells have been modeled‌ in numerous works, either‌​‌ by deterministic models (​​ordinary differential equations or​​​‌ ODEs and partial differential‌ equations or PDEs), or‌​‌ stochastic ones, either discrete​​ (birth and death​​​‌ or branching processes,‌ individual-based models in infinite‌​‌ dimension) or continuous (​​stochastic differential equations or​​​‌ SDEs). Branching processes or‌ individual-based models are also‌​‌ fundamental tools to study​​ telomere length dynamics. Concerning​​​‌ gene networks, in addition‌ to classical models (e.g.‌​‌ Gaussian graphical models or​​ deterministic systems with external​​​‌ noise), we develop new‌ models (see Section 3.2.3‌​‌) based on PDMPs​​ (piecewise-deterministic Markov processes​​​‌). Our team gathers‌ experts of all these‌​‌ classes of models, both​​ from the analytical, statistical​​​‌ and numerical simulation points‌ of view. In most‌​‌ applications we have in​​ mind, we need to​​​‌ combine within-cell dynamics (such‌ as telomere shortening or‌​‌ gene expression) with cell​​ population dynamics, leading to​​​‌ multiscale and/or multicomponent hybrid‌ models. Multicomponent models are‌​‌ also ubiquitous in medicine​​ when one takes into​​​‌ account latent variables such‌ as the genealogical tree‌​‌ of mutations within a​​ tumor when only observations​​​‌ of clonal population sizes,‌ that is sizes of‌​‌ populations of cells sharing​​ the same genetic material,​​​‌ are available.

For​​ multiscale models, it is​​​‌ often relevant to distinguish‌ what could be called‌​‌ the microscopic level (i.e.​​ the level of single​​​‌ individuals), the macroscopic level‌ (i.e. the level of‌​‌ large population densities) or​​ the intermediate mesoscopic level​​​‌ (i.e. a level of‌ population densities, but where‌​‌ demographic stochasticity cannot be​​ neglected). Microscopic models can​​​‌ be for example stochastic,‌ individual-based models, mesoscopic models‌​‌ can be SDEs and​​ macroscopic models are usually​​​‌ models of population densities,‌ such as ODEs, PDEs‌​‌ or PDMPs. Many biological​​ questions are stated at​​​‌ the macroscopic level, and‌ the main modeling issue‌​‌ lies in the appropriate​​ way to incorporate meso-​​​‌ or microscopic features in‌ the description of the‌​‌ macroscopic scale.

Typically, individual-based​​ models are models where​​​‌ the population state at‌ time t is described‌​‌ as a counting measure​​ νt=∑​​​‌i=1N‌tδxi‌​‌(t) where​​ Nt is the​​​‌ number of individuals alive‌ at time t,‌​‌ and xi(​​t) is the​​​‌ characteristic of the i‌-th individual (e.g. phenotype,‌​‌ mass, size, length of​​​‌ telomeres, age...), belonging to​ some set 𝒳.​‌ The dynamics is strongly​​ dependent on the precise​​​‌ phenomenon to be modeled,​ but in the simplest​‌ cases, (νt​​)t0​​​‌ is a Markov jump​ process on point measures​‌ on 𝒳 whose infinitesimal​​ generator has the following​​​‌ form:

L ϕ (​ ν ) = ∫​‌ 𝒳 2 (​​ ϕ ( ν +​​​‌ δ y ) -​ ϕ ( ν )​‌ ) b ( x​​ , ν ; d​​​‌ y ) ν (​ d x ) +​‌ 𝒳 ( ϕ​​ ( ν - δ​​​‌ x ) - ϕ​ ( ν ) )​‌ d ( x ,​​ ν ) ν (​​​‌ d x ) ,​ 1

where b(​‌x,ν;​​dy) is​​​‌ the infinitesimal birth rate​ of an individual y​‌ from an individual x​​ in the population ν​​​‌ and d(x​,ν) is​‌ the death rate of​​ an individual x in​​​‌ the population ν.​

We have developed a​‌ strong expertise in the​​ derivation of simplified macroscopic​​​‌ models from complex microscopic​ effects when there is​‌ a strong separation between​​ time and/or space scales.​​​‌ Mathematically, this requires us​ to encode the scale​‌ separation through scaling parameters​​ and to solve an​​​‌ asymptotic analysis problem, which​ can be averaging (slow-fast​‌ dynamics, singular perturbation) 57​​, 2, homogeneization​​​‌ 48, 65,​ concentration limits 52,​‌ 55, 56 or​​ more generally parameter scaling​​​‌ problems where the scaling​ parameter has a biological​‌ meaning 54, 49​​. For individual-based models,​​​‌ the simplest parameter scaling​ that can be considered​‌ is a large population​​ asymptotic encoded with a​​​‌ parameter K, where​ the state of the​‌ population is modified as​​ νtK=​​​‌1Ki​=1Nt​‌δxi(​​t) and the​​​‌ generator (1)​ as

L K ϕ​‌ ( ν K )​​ = K ∫​​​‌ 𝒳 2 ϕ ν​ + 1 K δ​‌ y - ϕ (​​ ν ) b (​​​‌ x , ν K​ ; d y )​‌ ν K ( d​​ x ) + K​​​‌ 𝒳 ϕ ν​ - 1 K δ​‌ x - ϕ (​​ ν ) d (​​​‌ x , ν K​ ) ν K (​‌ d x ) ,​​ 2

leading to mean-field​​​‌ macroscopic models when K​ 54.​‌ More complex scalings can​​ involve rare or small​​​‌ mutations combined with long-time​ scalings, complex local interactions​‌ as in 48 or​​ multiscale phenomena (e.g. within​​​‌ cell dynamics combined with​ the dynamics of populations​‌ of cells, like for​​ telomeres). Each problem usually​​​‌ requires new methodological development.​

3.1.2 Numerical analysis

Sometimes,​‌ it is not possible​​ to construct a simplified​​​‌ macroscopic description of complex,​ multiscale biological phenomena. In​‌ such cases, we need​​ to rely on numerical​​​‌ simulations. More generally, numerical​ simulations are very helpful​‌ to supply a priori​​ information on phenomena that​​ are difficult to reproduce​​​‌ in laboratory experiments or‌ on large-scale models that‌​‌ involve several interacting elements.​​

Despite increasing computing facilities,​​​‌ existing numerical schemes are‌ rarely adapted to individual-based‌​‌ models. Better numerical approaches​​ based on a deeper​​​‌ understanding of their multiscale‌ features would significantly reduce‌​‌ computational costs and yield​​ reliable error estimates. This​​​‌ is one of our‌ motivations in studying model‌​‌ reduction through asymptotic analysis​​ as described above. We​​​‌ propose to design numerical‌ schemes taking into account‌​‌ local extinction or local​​ deterministic approximation, or develop​​​‌ hybrid methods relying on‌ duality methods based e.g.‌​‌ on the Poisson representation​​ of birth and death​​​‌ processes, which allows to‌ switch between microscopic and‌​‌ mesoscopic models when the​​ population size crosses a​​​‌ threshold.

3.2 Analysis of‌ biological and medical data‌​‌

Modern medicine is turning​​ to highly personalized approaches,​​​‌ and a major challenge‌ is to design and‌​‌ develop a new generation​​ of techniques to assist​​​‌ prevention, diagnosis, prognosis and‌ therapy. A major difficulty‌​‌ is the integration and​​ exploitation of data which​​​‌ are often high-dimensional, heterogeneous,‌ incomplete or inconsistent, to‌​‌ build predictions and decision​​ making processes. The main​​​‌ part of our research‌ in statistical learning aims‌​‌ to develop operational tools​​ for the analysis of​​​‌ data from our collaborations‌ with biologists and physicians.‌​‌ Another part of our​​ project builds upon the​​​‌ sophisticated models described in‌ Section 3.1, for‌​‌ which specific inference tools​​ need to be designed.​​​‌

3.2.1 Statistical learning, regression‌

We want to develop‌​‌ methodologies that take into​​ account the specificities of​​​‌ biological data: they are‌ often high dimensional and‌​‌ correlated (for instance multiomics​​ data, such as genome,​​​‌ proteome or transcriptome) but‌ with few observations (patients)‌​‌ and with missing data.​​ Variable selection is of​​​‌ particular interest to study‌ the link between an‌​‌ outcome (the occurence of​​ an illness for instance)​​​‌ with covariates or to‌ infer partial correlations between‌​‌ several variables for instance​​ to study quantitative microbiome​​​‌ data. For instance, in‌ variable selection, we propose‌​‌ to study the theoretical​​ guarantees of our methods​​​‌ 42, 72 and‌ to extend them to‌​‌ other models of dependencies​​ such as mixtures of​​​‌ quantitative or qualitative covariates‌ with dependencies between the‌​‌ covariates. In regression, we​​ wish to tackle the​​​‌ challenge not only to‌ select the covariates related‌​‌ to an event (illness,​​ death...), but also to​​​‌ understand which configuration of‌ these covariates triggers its‌​‌ occurrence.

We also develop​​ goodness-of-fit tests to assess​​​‌ the different assumptions of‌ a (possibly heteroscedastic) regression‌​‌ model. Most of them​​ are “directional” in that​​​‌ they detect departures from‌ a given assumption of‌​‌ the model. Other tests​​ are “omnibus” in that​​​‌ they assess whether a‌ model fits a dataset‌​‌ on all its assumptions.​​ We focus on the​​​‌ task of choosing the‌ structural part of the‌​‌ regression function because it​​ contains easily interpretable information​​​‌ about the studied relationship.‌ Among the large number‌​‌ of existing tests, we​​ consider nonparametric tests which​​​‌ are all based on‌ generalizations of the Cramér-von‌​‌ Mises statistic. To perform​​​‌ these goodness-of-fit tests, we​ develop the R package​‌ cvmgof41, 1​​, an easy-to-use tool​​​‌ which allows practitioners to​ compare the implemented tests.​‌ In the future, we​​ plan to enrich the​​​‌ cvmgof package with tests​ concerning the other assumptions​‌ of a regression model​​ such as the functional​​​‌ form of the variance​ or the additivity of​‌ the random error term,​​ using directional tests such​​​‌ as 67. Another​ perspective is to develop​‌ a similar tool for​​ other statistical models widely​​​‌ used in biostatistics such​ as generalized linear models.​‌

3.2.2 Signal or online​​ data analysis

We develop​​​‌ tools for the analysis​ of online data, which​‌ are now very frequent​​ in the health domain​​​‌ (recording of cardiac signals,​ physiological measurements via connected​‌ objects...). The purpose is​​ either the update of​​​‌ estimation parameters for models​ with sequential arrival of​‌ new data, or the​​ online detection of change-points​​​‌ in temporal signals. For​ the first purpose, stochastic​‌ algorithms are essential tools​​ 50, which allow​​​‌ one to approximate eigenvectors​ in a stepwise manner​‌ 83, 82,​​ 86. We focus​​​‌ on several incremental procedures​ for regression and data​‌ analysis like PCA (Principal​​ Component Analysis) 84 and​​​‌ linear and logistic regressions​ on standardised data in​‌ order to avoid numerical​​ explosion 78. Our​​​‌ aim is to apply​ these results to other​‌ methods related to PCA,​​ such as multiple factorial​​​‌ analyses, partial PCA, and​ to learning (classification, regression,​‌ event scores).

Change-point detection​​ is of particular interest​​​‌ in e-health, for example​ for detecting changes in​‌ the health status of​​ the elderly or people​​​‌ at risk of a​ disease. We plan to​‌ develop tools for online​​ change-point detection using score-based​​​‌ CUSUM statistics. Our aim​ is to use the​‌ beginning of the signal​​ to build simulation-based thresholds​​​‌ that have to be​ crossed for the detection​‌ of the change-point. We​​ also want to propose​​​‌ new stopping rules adapted​ to the characteristics of​‌ the signal. These questions​​ may be relevant for​​​‌ a large part of​ the applications we shall​‌ develop with physicians.

3.2.3​​ Network inference

Inferring networks​​​‌ from data is often​ a crucial step for​‌ understanding biological interactions, such​​ as regulatory links between​​​‌ genes within individual cells​ 73, 47 or​‌ communication relationships between bacteria​​ within a population.

Concerning​​​‌ gene regulatory networks, we​ are interested in so-called​‌ single-cell data, where mRNA​​ levels are measured individually​​​‌ in many cells rather​ than being population-averaged, revealing​‌ the intrinsically stochastic “transcriptional​​ bursting” phenomenon. In previous​​​‌ work 73, we​ described a promising strategy​‌ in which the network​​ inference problem is seen​​​‌ as a calibration procedure​ for a PDMP model​‌ that is able to​​ fit real single-cell data​​​‌ 10. In the​ simplest version of this​‌ model, the state of​​ each gene i∈​​​‌{1,...​,n} at​‌ time t is described​​ by its promoter state​​​‌ Ei(t​){0​‌,1},​​ the quantity of transcribed​​ RNA Yi(​​​‌t)ℝ‌+ and of translated‌​‌ proteins Xi(​​t)ℝ​​​‌+, where

E‌ i ( t )‌​‌ jumps from 0 to​​ 1 at rate k​​​‌ on , i (‌ X ( t )‌​‌ ) and from 1​​ to 0 at rate​​​‌ k off , i‌ , Y ˙ i‌​‌ ( t ) =​​ s 0 , i​​​‌ E i ( t‌ ) - d 0‌​‌ , i Y i​​ ( t ) ,​​​‌ X ˙ i (‌ t ) = s‌​‌ 1 , i Y​​ i ( t )​​​‌ - d 1 ,‌ i X i (‌​‌ t ) . 3.2.3​​

Interactions between genes in​​​‌ the network are encoded‌ in functions kon‌​‌,i(x​​)koff​​​‌,i which correspond‌ to burst frequencies. We‌​‌ plan to develop dynamical​​ models that fully exploit​​​‌ the particular time structure‌ of the data: as‌​‌ cells have to be​​ killed for measurements, such​​​‌ data do not consist‌ of cell trajectories but‌​‌ rather independent samples of​​ time-varying multivariate distributions. As​​​‌ the number of genes‌ can be large (‌​‌2×10​​5 in humans), we​​​‌ will also investigate variational‌ methods, which generalize the‌​‌ usual expectation-maximization (EM) algorithm,​​ as a relevant way​​​‌ to make the inference‌ procedure both robust and‌​‌ scalable.

We also develop​​ methods to infer gene​​​‌ networks from dynamic gene‌ expression data within a‌​‌ collaboration with CHRU Strasbourg.​​ The goal here is​​​‌ to design new models‌ and inference methods adapted‌​‌ to the prediction of​​ the outcome of biological​​​‌ intervention experiments such as‌ “gene knock-down”, in order‌​‌ to identify therapeutic targets​​ that could be experimentally​​​‌ studied.

3.2.4 Inference for‌ stochastic processes

In our‌​‌ collaborations with practitioners, we​​ are led to infer​​​‌ specific quantities of interest‌ for stochastic dynamical models‌​‌ of various classes, such​​ as the speed of​​​‌ telomere shortening using multitype‌ branching processes; the growth‌​‌ rate of clonal populations​​ and their phylogenetic tree​​​‌ using heterogeneous population growth‌ models in cancer; links‌​‌ between gene expressions using​​ PDMPs or the speed​​​‌ of propagation of fungi‌ using stochastic models with‌​‌ latent variables given by​​ the solution of a​​​‌ partial differential equation (see‌ our main applications in‌​‌ Section 4). For​​ all these sophisticated stochastic​​​‌ processes, statistical inference raises‌ many open, difficult questions.‌​‌ In particular, we plan​​ to develop inference tools​​​‌ for general classes of‌ models such as PDMP,‌​‌ bifurcating Markov processes or​​ branching processes. More generally,​​​‌ the inference of dynamical‌ models relies strongly on‌​‌ their long-time behavior, for​​ which the team has​​​‌ a strong expertise (see‌ Section 3.3). Most‌​‌ often in biology, models​​ rely on latent variables,​​​‌ that may follow complex‌ dynamics as in the‌​‌ examples above. The inference​​ of this kind of​​​‌ models requires us to‌ develop efficient Bayesian algorithms,‌​‌ EM like algorithms and​​ variational methods.

3.3 Stochastic​​​‌ modeling for ecology and‌ evolution

In ecology, we‌​‌ are specifically interested in​​​‌ theoretical challenges in conservation​ biology (the branch of​‌ biology dealing with extinction​​ and survival of species)​​​‌ and in the response​ of ecosystems to environmental​‌ perturbations such as climate​​ change, anthropization or niche​​​‌ construction. In evolution, we​ have a strong expertise​‌ in the study of​​ the long term evolution​​​‌ of biological populations using​ approximate models based on​‌ various biological assumptions. Although​​ this application domain is​​​‌ different from the one​ of Section 3.1,​‌ the questions we address​​ are close from the​​​‌ mathematical point of view.​

We develop here similar​​​‌ ideas as in Section​ 3.1.1, but the​‌ mathematical questions are of​​ different nature for models​​​‌ of tumor growth in​ medicine than for population​‌ models in ecology or​​ evolution, because in the​​​‌ first case one wants​ to capture transitory behavior​‌ (e.g., in growing populations​​ for tumor growth), whereas​​​‌ in the second case,​ one usually models long​‌ term evolution assuming that​​ the ecological dynamics is​​​‌ in a stationary (quasi-equilibrium)​ state and that evolution​‌ acts slowly.

In addition​​ to the various classes​​​‌ of models described in​ Section 3.1.1, which​‌ are also relevant for​​ ecology and evolution, some​​​‌ other types of models​ are well-developed in these​‌ domains, such as Dawson–Watanabe​​ processes 62, Fleming–Viot​​​‌ processes 68 or a​ particular class of PDMPs​‌ called switched dynamical systems​​ used to model abruptly​​​‌ changing environments. The general​ goal of designing macroscopic​‌ models from complex multiscale​​ models through parameter scalings​​​‌ extends to these new​ classes of models. For​‌ example, Fleming-Viot processes appear​​ as the fast dynamics​​​‌ in the long term​ evolution of biological populations​‌ under assumptions of small​​ mutations and large population​​​‌ 2.

In ecology,​ our motivations are to​‌ highlight the biological assumptions​​ underlying different classes of​​​‌ macroscopic models, or to​ take into account at​‌ the macroscopic scale complex​​ local interactions between individuals.​​​‌ In evolutionary biology, the​ time scales involved are​‌ so long that it​​ is hard to observe​​​‌ experimentally evolutionary phenomena such​ as diversification. Mathematical analysis​‌ of models is therefore​​ of great importance, e.g.​​​‌ to construct approximate models​ allowing to predict long​‌ term evolution of biological​​ populations.

3.3.2 Adaptive dynamics:​​​‌ concentration limits

Asymptotic analysis​ is particularly useful in​‌ the branch of evolutionary​​ biology called adaptive dynamics​​​‌. This biological theory​ which studies the interplay​‌ between ecological interactions and​​ long term evolution was​​​‌ developed in the mid​ 90's 80, 63​‌ and provides theoretical ecologists​​ with useful tools to​​​‌ deduce evolutionary patterns from​ ecological parameters (directional evolution​‌ through canonical equations and​​ diversification through evolutionary branching​​​‌).

So far, two​ mathematical approaches to justify,​‌ study and improve these​​ tools have been developed:​​​‌ a deterministic one, based​ on PDE models 64​‌, 88, 79​​ and a probabilistic one,​​​‌ based on individual-based models​ 52, 56.​‌ Both approaches are concentration​​ limits, aiming to construct​​​‌ approximate models where population​ densities are replaced by​‌ Dirac masses representing coexisting​​ sub-populations. They both can​​ be seen as particular​​​‌ parameter scalings on individual-based‌ models of the form‌​‌ (2), combining​​ large population scaling with​​​‌ scalings of rare mutations‌ and/or small mutations.

However,‌​‌ the adaptive dynamics toolbox​​ and the existing mathematical​​​‌ approaches are criticized because‌ they are based on‌​‌ unrealistic biological assumptions on​​ the scales involved in​​​‌ the process 92,‌ 89. Mathematical analysis‌​‌ is needed both to​​ quantify the underlying assumptions​​​‌ on scales and to‌ propose alternative models based‌​‌ on more realistic assumptions.​​ For example, we plan​​​‌ to design PDE models‌ of adaptive dynamics allowing‌​‌ for local extinctions of​​ populations 74, 81​​​‌. Similarly, the actual‌ occurrence of evolutionary branching‌​‌ in sexual populations is​​ debated 92 and our​​​‌ goal is to shed‌ light on these questions‌​‌ using asymptotic analysis starting​​ from individual-based models.

3.3.3​​​‌ Population dynamics with absorption‌ and quasi-stationary distributions

In‌​‌ conservation biology, it is​​ fundamental to quantify the​​​‌ chances of survival of‌ species in a given‌​‌ environment. In addition, the​​ observed biological populations are​​​‌ intrinsically conditioned to be‌ non-extinct, which introduces an‌​‌ observation bias that is​​ rarely taken into account.​​​‌ For a given model‌ of population dynamics, it‌​‌ is therefore important to​​ develop tools allowing to​​​‌ study the population size‌ before extinction and to‌​‌ quantify its extinction probability​​ in a given time​​​‌ window. When the population‌ size is stable during‌​‌ long time intervals before​​ extinction, it can be​​​‌ described by a quasi-stationary‌ distribution (QSD), defined as‌​‌ a stationary distribution conditionally​​ on non-extinction. The QSD​​​‌ also allows to quantify‌ the population extinction rate.‌​‌

Our research program on​​ this topic builds on​​​‌ recent works of the‌ team 59, 4‌​‌, where we developed​​ probabilistic criteria for the​​​‌ large time convergence of‌ conditional distributions of stochastic‌​‌ population processes, that proved​​ to apply to a​​​‌ wide range of stochastic‌ processes. These works open‌​‌ many perspectives. We focus​​ here on the methodological​​​‌ ones and will mention‌ some numerical issues in‌​‌ Section 3.3.4 below. A​​ first question is to​​​‌ obtain criteria for the‌ convergence of conditional distributions‌​‌ for weaker distances than​​ in 59, 4​​​‌: instead of the‌ total variation distance, we‌​‌ study convergence in Wasserstein​​ distances. This is particularly​​​‌ relevant for PDMPs or‌ for infinite dimensional processes‌​‌ such as individual-based models,​​ where coupling properties are​​​‌ not strong enough to‌ expect convergence in total‌​‌ variation. We also want​​ to study other questions​​​‌ related to QSDs: Can‌ we characterize the speed‌​‌ of convergence of conditional​​ distributions to a QSD?​​​‌ Is it possible to‌ study the path to‌​‌ extinction of a stochastic​​ population process, in order​​​‌ to characterize the parameters‌ improving their survival (e.g.‌​‌ for protected species) or​​ their extinction (e.g. for​​​‌ pests in agronomy)? What‌ can be said about‌​‌ the genealogy of populations​​ before extinction?

3.3.4 Numerical​​​‌ analysis

The challenges detailed‌ here are related to‌​‌ those described in Section​​ 3.1.2. Ecological or​​​‌ evolutionary models pose specific‌ numerical problems that we‌​‌ want to tackle. For​​​‌ example, in the numerical​ simulation of individual-based models​‌ like (1),​​ when the population size​​​‌ is small, randomness cannot​ be neglected and exact​‌ algorithms have to be​​ used; when the population​​​‌ size is large, such​ algorithms become too costly​‌ and one would like​​ to take advantage of​​​‌ deterministic approximations like those​ we developed in 53​‌, 70. The​​ error analysis of such​​​‌ hybrid numerical schemes is​ difficult 40, 76​‌ and the case of​​ spatially or trait-structured individual-based​​​‌ models is still largely​ open.

We are also​‌ interested in numerical methods​​ to approximate QSDs, among​​​‌ which the most developed​ are particle methods 91​‌, 58 and stochastic​​ algorithms such as self-interacting​​​‌ processes 44, 43​. The analysis of​‌ these algorithms relies on​​ long-time analysis of particle​​​‌ or nonlinear systems and​ our research project on​‌ QSDs detailed above will​​ be of great help.​​​‌ In particular, Wasserstein distances​ are known to be​‌ well adapted to the​​ study of convergence of​​​‌ particle systems thanks to​ their tensorization properties. We​‌ also plan to develop​​ new numerical approaches based​​​‌ on the stationary distribution​ of approximating processes, such​‌ as those obtained by​​ central limit theorems for​​​‌ stochastic processes 60.​

4 Application domains

We​‌ have described in the​​ last section our theoretical​​​‌ expertise and several mathematical​ challenges. However, our main​‌ motivation comes from our​​ interactions with biologists, physicians​​​‌ or clinical researchers. Most​ often, these interactions involve​‌ several of the methodological​​ tools developed above, that​​​‌ need to be combined​ for precise biological goals.​‌ Our strategy is to​​ establish collaborations with few​​​‌ groups of biologists and​ physicians, that allow us​‌ to tackle ambitious, long​​ term projects. In this​​​‌ section, we illustrate the​ different domains of application​‌ mentioned in the previous​​ section by describing several​​​‌ ongoing pluridisciplinary projects that​ involve large subgroups of​‌ the team.

4.1 Tumor​​ growth and heterogeneity

4.1.1​​​‌ Reconstruction of tumor heterogeneity​

Targeted therapies represent a​‌ real advance in the​​ treatment of patients with​​​‌ cancer. Most of these​ therapies are kinase inhibitors​‌ and require precise analysis​​ of tumor DNA mutations​​​‌ to ensure the absence​ of primary resistance. Indeed,​‌ tumors are often genetically​​ heterogeneous with the presence​​​‌ of many subclones, but​ they release “circulating” cell-free​‌ DNA (cfDNA) that can​​ be directly extracted from​​​‌ basic blood samples: as​ measurement sensitivity improves, such​‌ liquid biopsies increasingly appear​​ as a mirror of​​​‌ tumor heterogeneity. In this​ context, we are taking​‌ a promising statistical approach​​ to analyze longitudinal cfDNA​​​‌ data, with the purpose​ of gaining a deeper​‌ understanding of the mechanism​​ by which resistance develops​​​‌ in individual patients. While​ addressing the standard problem​‌ of reconstructing the associated​​ phylogenetic tree, this approach​​​‌ also describes the production​ of cfDNA from the​‌ temporal dynamics of cells,​​ in order to best​​​‌ exploit the longitudinal structure​ of the data. This​‌ is a project in​​ collaboration with physicians Jean-Louis​​​‌ Merlin (Institut de Cancérologie​ de Lorraine), Alexandre Harlé​‌ (Institut de Cancérologie de​​ Lorraine) and Erwan Pencreac'h​​ (CHRU Strasbourg). We currently​​​‌ also have another ongoing‌ project on a tumor‌​‌ heterogeneity reconstruction for chronic​​ lymphocytic leukemia in collaboration​​​‌ with Laurent Vallat (CHRU‌ Strasbourg).

4.1.2 Evolution of‌​‌ low-grade gliomas

We have​​ an ongoing collaboration with​​​‌ the Centre de Recherche‌ en Automatique de Nancy‌​‌ CRAN (Jean-Marie Moureaux) and​​ neuro-oncologist and surgeon from​​​‌ CHRU Nancy (Luc Taillandier,‌ Fabien Rech) about diffuse‌​‌ low-grade gliomas (DLGG). These​​ are slow-growing tumors that​​​‌ are often asymptomatic for‌ a long period of‌​‌ time. They progress to​​ a higher grade, resulting​​​‌ in the patient's death.‌ The current treatment strategy‌​‌ aims to surgically reduce​​ tumor volume as soon​​​‌ as possible. As DLGGs‌ infiltrate functional areas, surgery‌​‌ is performed in an​​ awake state, with active​​​‌ patient participation, while electrical‌ brain stimulations are done,‌​‌ to identify functional structures.​​ At CHRU Nancy, surgeries​​​‌ are filmed, but the‌ patient's responses are recorded‌​‌ manually. We aim to​​ develop an automatic tool​​​‌ to detect, analyse and‌ register the patients responses.‌​‌ We use deep learning​​ algorithms for motion and​​​‌ speech detection. In perspective,‌ the fine anomalies that‌​‌ can be identified are​​ likely to be correlated​​​‌ with the patient's short-‌ and long-term cognitive outcome.‌​‌

4.2 Telomeres

Telomeres are​​ non-coding regions of repetitive​​​‌ nucleotide sequences located at‌ each end of a‌​‌ chromosome. They protect the​​ end of the chromosome​​​‌ from deterioration or from‌ fusion with neighboring chromosomes,‌​‌ ensuring the integrity of​​ genetic material over cell​​​‌ divisions. At each cell‌ division, telomeres loose a‌​‌ short fragment, a phenomenon​​ often called the `end​​​‌ replication problem'. When its‌ telomeres are too short,‌​‌ the cell stops dividing​​ and enters a senescence​​​‌ phase. In human, it‌ is known that short‌​‌ telomere lengths are statistically​​ linked to age related​​​‌ diseases 46.

In‌ an ongoing collaboration with‌​‌ Athanase Benetos (CHRU of​​ Nancy) and Simon Toupance​​​‌ (CHRU of Nancy), we‌ study the telomere length‌​‌ distribution in a human​​ body, its relation with​​​‌ the patient's phenotype, its‌ evolution with age and‌​‌ across generations. Our contribution​​ to the project is​​​‌ to bring competences ranging‌ from theoretical probability to‌​‌ applied statistics, including modelling​​ and numerical simulation of​​​‌ stochastic models and analysis‌ of distributional data of‌​‌ telomeres length. A first​​ goal is to provide​​​‌ physicians with additional medical‌ statistics to better understand‌​‌ the health state of​​ a patient using its​​​‌ telomere length distribution, based‌ on our observation that‌​‌ the shape of the​​ telomere length distribution is​​​‌ stable accross ages of‌ an individual, leading to‌​‌ the concept of telomere​​ signature 9. We​​​‌ plan to study larger‌ cohorts of individuals with‌​‌ medical records and parental​​ relationships to construct an​​​‌ equivalence relationship between shapes‌ of distributions and to‌​‌ develop health scores for​​ patients allowing to assess​​​‌ the risk of particular‌ diseases. A second goal‌​‌ is to bring new​​ insights for the description​​​‌ and modelling of the‌ evolution of telomere length‌​‌ distribution with age and​​ across a population. For​​​‌ this, we study a‌ stochastic branching model of‌​‌ the telomere length into​​​‌ a given tissue of​ the form of (​‌1) where x​​i(t)​​​‌ is the vector of​ lengths of telomeres of​‌ cell i. We​​ also plan to study​​​‌ models for the evolution​ of the telomere length​‌ accross a population of​​ individuals and on evolutionary​​​‌ time scales, where x​i(t)​‌ is the telomere lengths​​ in gametes of individual​​​‌ i. This project​ requires advanced mathematical tools​‌ related to the theory​​ of branching processes and​​​‌ of non-conservative semi-groups. We​ also plan to tackle​‌ parameter estimation questions for​​ these models.

In another​​​‌ ongoing project with Marie-Noëlle​ Simon (CRCM, Aix-Marseille Université),​‌ we study modeling and​​ inference of the different​​​‌ mechanisms of telomere shortening​ or elongation in survivor​‌ cells of yeast Saccharomyces​​ cerevisiae for which telomerase​​​‌ is inactivated. Telomerase is​ an enzyme that is​‌ active in normal yeasts​​ and compensates telomere shortening​​​‌ due to the end​ replication problem. When telomerase​‌ in inactivated, most yeasts​​ undergo replicative senescence, except​​​‌ a few ones called​ survivor cells, which are​‌ able to develop alternative​​ telomere elongation mechanisms. The​​​‌ goal of the project​ is to develop a​‌ full model of the​​ evolution of survivor cells,​​​‌ in particular by estimating​ the rates and sizes​‌ of abrupt telomere shortening​​ or lengthening in survivor​​​‌ cells.

4.3 Gene networks​ and single-cell data

4.3.1​‌ Modeling gene expression at​​ single-cell level

Gene expression​​​‌ in cells has long​ been only observable through​‌ averaged quantities over cell​​ populations. The development of​​​‌ single-cell transcriptomics has enabled​ gene expression to be​‌ measured in individual cells:​​ it turns out that​​​‌ even for an isogenic​ population located in a​‌ homogeneous medium, molecular variability​​ can be large. An​​​‌ average description is therefore​ not sufficient to account​‌ for fundamental phenomena such​​ as cell differentiation. Recently,​​​‌ a view emerged that​ the dynamics governing the​‌ switching of cells from​​ one differentiation state to​​​‌ another could be characterized​ by a peak in​‌ gene expression variability at​​ the point of fate​​​‌ commitment 90. We​ are continuing on this​‌ path, working on the​​ link between PDMP models​​​‌ and notions of entropy​ and epigenetic landscape.

4.3.2​‌ Transcriptional bursting in regulatory​​ networks

Working in the​​​‌ active field of single-cell​ dynamics and gene regulatory​‌ networks provides opportunities to​​ interact with biologists such​​​‌ as Olivier Gandrillon from​ ENS Lyon 90,​‌ 77, and potentially​​ also physicians such as​​​‌ Erwan Pencreac'h in CHRU​ Strasbourg. The biological literature​‌ increasingly highlights gene regulatory​​ networks as playing an​​​‌ important role (independent of​ genetic mutations) in the​‌ acquisition of resistance to​​ cancer treatments, hence this​​​‌ topic might become soon​ also relevant to the​‌ application area of oncology.​​

4.3.3 Prediction and identification​​​‌ of therapeutic targets for​ chronic lymphocytic leukemia

In​‌ an ongoing collaboration with​​ Laurent Vallat (CHRU Strasbourg),​​​‌ we develop new models​ and inference methods for​‌ gene regulation networks allowing​​ to make prediction of​​​‌ biological intervention experiments (such​ as gene knock-down). Inference​‌ is performed on gene​​ expression data from cells​​ of patients suffering from​​​‌ different forms of chronic‌ lymphocytic leukemia. The goal‌​‌ is to use prediction​​ to identify therapeutic targets​​​‌ which could be knocked-down‌ to reduce the cells'‌​‌ proliferation. Biological experiments will​​ be performed by Laurent​​​‌ Vallat and his group‌ to assess the therapeutic‌​‌ potential of the new​​ targets.

4.4 Chalara

The​​​‌ Chalara project 69 is‌ a team project with‌​‌ Benoît Marçais (INRAE Champenoux)​​ and Marie Grosdidier (INRAE​​​‌ Avignon). Chalara is an‌ ash disease that arrived‌​‌ in France 12 years​​ ago through Grand Est​​​‌ and has been spreading‌ throughout France ever since.‌​‌ The disease spreads by​​ means of fungus spores​​​‌ that are deposited on‌ the leaves of trees‌​‌ during summer, fall at​​ the foot of the​​​‌ trees during fall and‌ give rise to fungi‌​‌ that release new spores​​ that spread the following​​​‌ summer. Affected trees show‌ signs of decline (defoliation,‌​‌ canker...) that can lead​​ to their death.

The​​​‌ objective is to model‌ the spread of chalara‌​‌ and to study and​​ quantify the potential underlying​​​‌ environmental effects, such as‌ humidity or high temperatures.‌​‌ We use a hybrid​​ model where spores spread​​​‌ is based on reaction-diffusion‌ PDEs and other steps‌​‌ of the disease cycle​​ are stochastic. The project​​​‌ involves modeling, Bayesian statistics‌ and intensive simulation.

5‌​‌ Highlights of the year​​

5.1 Awards

  • The K.P.​​​‌ Hadeler prize for best‌ paper in the Journal‌​‌ of Mathematical Biology in​​ 2024 goes to Michel​​​‌ Benaim, Claude Lobry, Tewfik‌ Sari and Edouard Strickler‌​‌ for their paper entitled​​ “When can a​​​‌ population spreading across sink‌ habitats persist?” 45‌​‌.

6 Latest software​​ developments, platforms, open data​​​‌

6.1 Latest software developments‌

6.1.1 cvmgof

  • Keywords:
    Regression,‌​‌ Test, Estimators
  • Scientific Description:​​
    Many goodness-of-fit tests have​​​‌ been developed to assess‌ the different assumptions of‌​‌ a (possibly heteroscedastic) regression​​ model. Most of them​​​‌ are "directional" in that‌ they detect departures from‌​‌ a given assumption of​​ the model. Other tests​​​‌ are "global" (or "omnibus")‌ in that they assess‌​‌ whether a model fits​​ a dataset on all​​​‌ its assumptions. cvmgof focuses‌ on the task of‌​‌ choosing the structural part​​ of the regression function​​​‌ because it contains easily‌ interpretable information about the‌​‌ studied relationship. It implements​​ 2 nonparametric "directional" tests​​​‌ and one nonparametric "global"‌ test, all based on‌​‌ generalizations of the Cramer-von​​ Mises statistic.
  • Functional Description:​​​‌
    cvmgof is an R‌ library devoted to Cramer-von‌​‌ Mises goodness-of-fit tests. It​​ implements three nonparametric statistical​​​‌ methods based on Cramer-von‌ Mises statistics to estimate‌​‌ and test a regression​​ model.
  • URL:
  • Publication:​​​‌
  • Contact:
    Romain Azais‌
  • Participants:
    Sandie Ferrigno, Marie-Jose‌​‌ Martinez, Romain Azais

6.1.2​​ Harissa

  • Name:
    Hartree approximation​​​‌ for inference along with‌ a stochastic simulation algorithm‌​‌
  • Keywords:
    Gene regulatory networks,​​ Reverse engineering, Molecular simulation​​​‌
  • Functional Description:
    Harissa is‌ a Python package for‌​‌ both inference and simulation​​ of gene regulatory networks,​​​‌ based on stochastic gene‌ expression with transcriptional bursting.‌​‌ It was implemented in​​ the context of a​​​‌ mechanistic approach to gene‌ regulatory network inference from‌​‌ single-cell data.
  • URL:
  • Publications:
  • Contact:
    Ulysse​‌ Herbach

6.1.3 MultiRNAflow

  • Name:​​
    An R package for​​​‌ the analysis of RNAseq​ raw counts with multiple​‌ biological conditions and time​​ points
  • Keywords:
    RNA-seq, Gene​​​‌ regulatory networks, Integrated data​ analysis, Complex experimental design,​‌ Multiple temporal and biological​​ conditions, Differential expression
  • Functional​​​‌ Description:
    The R package​ MultiRNAflow provides an easy​‌ to use unified framework​​ allowing to make both​​​‌ unsupervised and supervised analysis​ (differential expression analysis) for​‌ RNAseq datasets with an​​ arbitrary number of biological​​​‌ conditions and time points.​ In particular, this package​‌ makes a deep downstream​​ analysis of differential expression​​​‌ information, e.g. identifying temporal​ patterns across biological conditions​‌ and differentially expresses genes​​ which are specific to​​​‌ a biological condition for​ each time.
  • Release Contributions:​‌
    First version
  • URL:
  • Contact:
    Nicolas Champagnat
  • Participants:​​​‌
    Rodolphe Loubaton, Nicolas Champagnat,​ Pierre Vallois, Laurent Vallat​‌
  • Partner:
    CHRU de Strasbourg​​

6.1.4 quantCurves

  • Keyword:
    Statistical​​​‌ modeling
  • Functional Description:
    Non-parametric​ methods as local normal​‌ regression, polynomial local regression​​ and penalized cubic B-splines​​​‌ regression are used to​ estimate quantiles curves.
  • URL:​‌
  • Contact:
    Sandie Ferrigno​​

6.1.5 PEOC

  • Name:
    Parameters​​​‌ Estimation Of Chalara model​
  • Keywords:
    Statistical inference, Iterative​‌ algorithm, Monte Carlo estimation,​​ Python, Statistical modeling
  • Functional​​​‌ Description:
    PEOC is Python​ software which aims to​‌ simulate and estimate the​​ parameters of the chalara​​​‌ model of the article​ 'Mechanistic-statistical model for the​‌ expansion of ash dieback'​​ by Coralie Fritsch, Marie​​​‌ Grosdidier, Anne Gégout-Petit and​ Benoît Marçais. It allows​‌ to reproduce the simulations​​ made in this article,​​​‌ which is available at​ the following url https://hal.science/hal-04690647.​‌
  • URL:
  • Contact:
    Coralie​​ Fritsch

7 New results​​​‌

7.1 Stochastic modeling for​ health, ecology and evolution​‌

7.1.1 Gene regulatory networks​​

Stochastic modeling and simulation​​​‌ of gene regulatory networks​ at single-cell level

Participants:​‌ Mathilde Gaillard, Ulysse​​ Herbach.

Single-cell data​​​‌ reveal the presence of​ biological stochasticity between cells​‌ of identical genome and​​ environment, in particular highlighting​​​‌ the transcriptional bursting phenomenon.​ To account for this​‌ property, gene expression may​​ be modeled as a​​​‌ continuous-time Markov chain where​ biochemical species are described​‌ in a discrete way,​​ leading to Gillespie's stochastic​​​‌ simulation algorithm (SSA) which​ turns out to be​‌ computationally expensive for realistic​​ mRNA and protein copy​​​‌ numbers. Alternatively, hybrid models​ based on piecewise-deterministic Markov​‌ processes (PDMPs) offer an​​ effective compromise for capturing​​​‌ cell-to-cell variability 73,​ but their simulation remains​‌ limited to specialized mathematical​​ communities.

With a view​​​‌ to making them more​ accessible, we introduced a​‌ simple simulation method that​​ is reminiscent of SSA,​​​‌ while allowing for much​ lower computational cost 23​‌. We detailed the​​ algorithm for a bursty​​​‌ PDMP describing an arbitrary​ number of interacting genes,​‌ and proved that it​​ simulates exact trajectories of​​​‌ the model. As an​ illustration, we used the​‌ algorithm to simulate a​​ two-gene toggle switch: this​​​‌ example highlights the fact​ that bimodal distributions as​‌ observed in real data​​ are not explained by​​​‌ transcriptional bursting per se,​ but rather by distinct​‌ burst frequencies that may​​ emerge from interactions between​​ genes.

Cell trajectory inference​​​‌ based on Schrödinger problem‌ and a mechanistic model‌​‌ of stochastic gene expression​​

Participants: Ulysse Herbach.​​​‌

External collaborators: Université‌ Paris Cité, Aix Marseille‌​‌ Université, Université Lyon 1,​​ ENS Lyon.

Cellular differentiation​​​‌ is the biological process‌ that leads a cell‌​‌ to opt for a​​ particular cellular identity. Recently,​​​‌ single-cell RNA-sequencing has enabled‌ the simultaneous measurement of‌​‌ gene expression levels at​​ specific times for a​​​‌ large number of individual‌ cells and a large‌​‌ number of genes. Repeating​​ such measurements at different​​​‌ time points gives access‌ to the temporal variation,‌​‌ or transport, of a​​ distribution over gene expression​​​‌ space. The whole temporal‌ trajectory of distributions thus‌​‌ characterizes the differentiation process​​ at population level, but​​​‌ trajectories of individual cells‌ are still out of‌​‌ reach since most measurement​​ techniques are destructive.

The​​​‌ optimal transport theory that‌ has been used so‌​‌ far to infer cellular​​ differentiation trajectories from time-stamped​​​‌ single-cell RNA-seq data involves‌ solving the so-called Schrödinger‌​‌ problem in its most​​ common version. This implies​​​‌ assuming that cells move,‌ in the gene expression‌​‌ space, by diffusion. Yet,​​ real gene dynamics are​​​‌ much more complex. In‌ 31, we assume‌​‌ that mRNA dynamics are​​ characterized by brief and​​​‌ important production of RNA,‌ with long periods of‌​‌ inactivity in between, and​​ consider a bursty PDMP​​​‌ model of gene dynamics‌ 23. We use‌​‌ this model to define​​ a reference process for​​​‌ the Schrödinger problem. By‌ comparing the solutions of‌​‌ the Schrödinger problems with​​ diffusive and bursty reference​​​‌ processes, under different conditions,‌ we show that the‌​‌ bursty model provides a​​ better approximation of the​​​‌ underlying gene dynamics when‌ inferring cell trajectories.

Prediction‌​‌ of silencing experiments on​​ gene networks for chronic​​​‌ lymphocytic leukemia

Participants: Nicolas‌ Champagnat, Anne Gégout-Petit‌​‌, Anouk Rago,​​ Pierre Vallois.

External​​​‌ collaborators: CHRU Strasbourg‌

In this collaboration with‌​‌ the group of Laurent​​ Vallat in CHRU Strasbourg,​​​‌ we work on the‌ inference of dynamical gene‌​‌ networks from RNA-seq data​​ of chronic lymphocytic leukemia.​​​‌ The goal is to‌ infer a model of‌​‌ gene expression allowing to​​ predict gene expression in​​​‌ cells where the expression‌ of specific genes is‌​‌ knocked-down (e.g. using siRNA,​​ i.e. small interfering ribonucleic​​​‌ acid), in order to‌ select the knock-down experiments‌​‌ which are more likely​​ to reduce cell proliferation.​​​‌ We expect the selected‌ genes to provide new‌​‌ therapeutic targets for the​​ treatment of chronic lymphocytic​​​‌ leukemia. This year, we‌ developed in 27 two‌​‌ general mathematical frameworks do​​ model knock-down experiments on​​​‌ gene regulatory networks using‌ gene expression data of‌​‌ cells without knock-down: the​​ first one is based​​​‌ on conditional probabilities and‌ applies to any quantitative‌​‌ model and the second​​ assumes that the model​​​‌ is mechanistic.

7.1.2 Parameter‌ scalings in population dynamics‌​‌

Adaptive dynamics in biological​​ populations with small mutations​​​‌

Participants: Nicolas Champagnat.‌

External collaborators: Vincent‌​‌ Hass (Université de Franche-Comté)​​

In 15 we studied​​​‌ general individual-based models of‌ biological populations with mutation‌​‌ and selection, under assumptions​​​‌ of large population and​ small mutations. We recover​‌ variants of the canonical​​ equation of adaptive dynamics,​​​‌ which describes the long​ time evolution of the​‌ dominant phenotype in the​​ population, under less stringent​​​‌ biological assumptions than in​ previous works such as​‌ 56.

Averaging principle​​ for models with slow-fast​​​‌ components

Participants: Vincent Kagan​, Edouard Strickler,​‌ Denis Villemonais.

In​​ 33, we consider​​​‌ a slow-fast stochastic process​ where the slow component​‌ is a jump process​​ on a measurable index​​​‌ set whose transition rates​ depend on the position​‌ of the fast component.​​ Between the jumps, the​​​‌ fast component evolves according​ to an ergodic dynamic​‌ in a state space​​ determined by the index​​​‌ process. We prove that,​ when the ergodic dynamics​‌ are accelerated, the slow​​ index process converges to​​​‌ an autonomous pure jump​ process on the index​‌ set. These results can​​ be used to legitimate​​​‌ classical toy-models long used​ in applications, providing a​‌ justification for their simplifying​​ assumptions. In particular, we​​​‌ apply our results to​ prove the convergence of​‌ a typed branching process​​ toward a continuous-time Galton-Watson​​​‌ process, and of an​ epidemic model with fast​‌ viral loads dynamics to​​ a standard contact process.​​​‌

Multiscale dynamics and condensation​ phenomenon in coagulation-fragmentation processes​‌

Participants: Elie Cerf,​​ Coralie Fritsch, Denis​​​‌ Villemonais.

External collaborator​: Alex Watson (University​‌ College London)

This collaboration​​ is an ongoing work​​​‌ aimed to study the​ condensation phenomenon in the​‌ context of a large​​ population of particles randomly​​​‌ interacting through fragmentation and​ coagulation. More precisely, we​‌ want to exhibit the​​ possible coexistence of two​​​‌ phases respectively made of​ microscopic and macroscopic aggregates.​‌ In the first part​​ of this project, we​​​‌ extend the results of​ 49 on the chemostat​‌ model to study a​​ stochastic growth-fragmentation-coagulation model in​​​‌ which a population of​ particles determined by their​‌ masses deterministically consume a​​ substrate to grow and​​​‌ randomly interact, affecting the​ size of the population.​‌ Using usual tools of​​ individual-based models (IBM), we​​​‌ establish the convergence of​ a process modeling the​‌ population to the solution​​ of an integro-differential equation​​​‌ when the size of​ the population tends to​‌ infinity, for a general​​ class of random fragmentation​​​‌ laws. In a second​ part, we aim to​‌ use our understanding of​​ the previous IBM to​​​‌ study the stochastic Becker-Döring​ model of aggregation and​‌ fragmentation. In the deterministic​​ case, it is well​​​‌ known that even though​ the Becker-Döring system conserves​‌ its total mass in​​ finite times there are​​​‌ conditions under which, as​ the time goes to​‌ infinity, a positive fraction​​ of the mass gets​​​‌ trapped in an ever-growing​ macroscopic aggregate. In particular,​‌ Niethammer 87 showed that​​ under a precise normalization,​​​‌ the dynamic of the​ infinite cluster is given​‌ by a Lifshitz-Slyozov-Wagner coarsening​​ model. Our goal is​​​‌ to obtain similar results​ in the stochastic framework.​‌

7.1.3 Individual-based modeling in​​ medicine, ecology and evolution​​​‌

Telomeres

Participants: Sophie Baland​, Nicolas Champagnat,​‌ Coralie Fritsch, Juan​​ Mardomingo Sanz, Denis​​ Villemonais.

External collaborators​​​‌: CHRU Nancy, CRCM‌ Aix-Marseille Université

In most‌​‌ cells, at each cell​​ division, telomeres shorten due​​​‌ to the so-called end‌ replication problem, which can‌​‌ lead to replicative senescence​​ and a variety of​​​‌ age-related diseases. In certain‌ cells, the presence of‌​‌ the enzyme telomerase can​​ lead to the lengthening​​​‌ of telomeres, which may‌ delay or prevent the‌​‌ onset of such diseases​​ but can also increase​​​‌ the risk of cancer.‌ In 14, C.‌​‌ Fritsch and D. Villemonais​​ developed, in collaboration with​​​‌ reserachers of CHRU Nancy,‌ a stochastic representation of‌​‌ this biological model, which​​ takes into account multiple​​​‌ chromosomes per cell, the‌ effect of telomerase, different‌​‌ cell types and the​​ dependence of the distribution​​​‌ of telomere length on‌ the dynamics of the‌​‌ process. We study theoretical​​ properties of this model,​​​‌ including its long-term behavior.‌ In addition, we investigate‌​‌ numerically the impact of​​ the model parameters on​​​‌ biologically relevant quantities, such‌ as the Hayflick limit‌​‌ and the Malthusian parameter​​ of the population of​​​‌ cells. Similar models including‌ mechanisms of hematopoiesis (the‌​‌ physiological process of blood​​ cell production) are also​​​‌ currently being developed by‌ S. Baland and D.‌​‌ Villemonais.

In another ongoing​​ project with Marie-Noëlle Simon​​​‌ (CRCM, Aix-Marseille Université), N.‌ Champagnat, C. Fritsch, J.‌​‌ Mardomingo Sanz and D.​​ Villemonais started to study​​​‌ modeling and inference of‌ the different mechanisms of‌​‌ telomere shortening or elongation​​ in survivor cells of​​​‌ yeast Saccharomyces cerevisiae for‌ which telomerase is inactivated.‌​‌ The telomerase enzyme is​​ active in normal yeasts​​​‌ and compensates telomere shortening‌ due to the end‌​‌ replication problem. When telomerase​​ is inactivated, most yeasts​​​‌ undergo replicative senescence, except‌ a few ones called‌​‌ survivor cells, which are​​ able to develop alternative​​​‌ telomere elongation mechanisms. We‌ are currently working on‌​‌ methods to estimate the​​ shortening of telomeres at​​​‌ cell division for survivor‌ cells using the full‌​‌ distribution of telomeres and​​ on population models with​​​‌ rare events of appearance‌ of survivors able to‌​‌ account for data of​​ yeasts cultures with daily​​​‌ dilution.

Allometric relationships in‌ Ecology

Participants: Virgile Brodu‌​‌, Nicolas Champagnat,​​ Coralie Fritsch.

External​​​‌ collaborator: Sylvain Billiard‌ (Université de Lille)

In‌​‌ 26, we designed​​ a stochastic individual-based model​​​‌ structured in energy, for‌ single species consuming an‌​‌ external resource, where populations​​ are characterized by a​​​‌ fixed positive energy at‌ birth. The resource is‌​‌ maintained at a fixed​​ amount, so we benefit​​​‌ from a branching property‌ at the population level.‌​‌ We focus on individual​​ trajectories, constructed as a​​​‌ PDMP with random jumps‌ modelling births and deaths‌​‌ in the population and​​ a continuous and deterministic​​​‌ evolution of energy between‌ jumps. We are interested‌​‌ in the case where​​ metabolic (i.e. energy loss​​​‌ for maintenance), growth, birth‌ and death rates depend‌​‌ on the individual energy​​ over time, and follow​​​‌ allometric scalings (i.e. power‌ laws). Our goal is‌​‌ to determine in a​​ bottom-up approach what are​​​‌ the possible allometric coefficients‌ (i.e. exponents of these‌​‌ power laws) under elementary​​​‌ and ecologically relevant constraints,​ for our model to​‌ be valid for the​​ whole spectrum of possible​​​‌ body sizes. We show​ in particular that assuming​‌ an allometric coefficient for​​ metabolism strongly constrains the​​​‌ range of possible values​ for the allometric coefficients​‌ for birth, death and​​ growth rates.

Niche construction​​​‌

Participants: Nicolas Champagnat,​ Coralie Fritsch, Edouard​‌ Strickler.

External collaborators​​: Universidad de Valparaiso,​​​‌ Pontificia Universidad Catolica de​ Chile, Santa Fe Institute,​‌ Universidad de Santiago de​​ Chile, INRAE Montpellier

In​​​‌ collaboration with Rolando Rebolledo,​ Pablo Marquet, Leonardo Videla,​‌ Cristobal Quininao and Nicolas​​ Zalduendo-Vidal, we are working​​​‌ on the modeling of​ the eco-evolutionary process of​‌ niche construction, by which​​ a species or an​​​‌ ecological community is able​ to modify its environment​‌ in such a way​​ that the induced adaptation​​​‌ enhances survival of the​ species or the community.​‌

In 28, we​​ study the properties of​​​‌ extinction and survival of​ population models with sublinear​‌ growth rate parameterized by​​ an exponent θ.​​​‌ We point out that​ this family of models,​‌ recently proposed to fit​​ various population growths, may​​​‌ have important flaws depending​ on the value of​‌ the parameter θ,​​ which make them unrealistic​​​‌ for ecological modeling. We​ both study birth-death processes​‌ and diffusion processes.

We​​ also work on a​​​‌ general modeling approach for​ niche construction based on​‌ birth-death processes of d​​ interacting (sub)species immersed in​​​‌ an environment which is​ influenced by the population​‌ state (the so-called niche​​ construction) and which evolves​​​‌ on a slower time-scale.​ Under the above hypotheses,​‌ extinction and/or re-emergence of​​ negligible species on long​​​‌ time scales can be​ observed. We prove that​‌ the joint dynamics of​​ the logarithm of the​​​‌ species sizes and the​ environment undergo a piecewise​‌ deterministic Markov process, which​​ can be approximated by​​​‌ an explicit dynamical system​ in the limit of​‌ large populations. We apply​​ this framework to study​​​‌ the long term co-existence​ of two specialist species​‌ consuming two resources, with​​ a “joint”' niche construction​​​‌ where each species constructs​ the niche of the​‌ other while depleting its​​ resources. We also study​​​‌ an example of immune​ escape in cancer, where​‌ the environmental variable is​​ associated to the state​​​‌ of the immune system​ and the species are​‌ associated to three types​​ of tumor cells. An​​​‌ article is currently being​ written.

7.1.4 Quasi-stationary distributions​‌

Participants: Nicolas Champagnat,​​ Edouard Strickler, Denis​​​‌ Villemonais.

External collaborators​: Michel Benaïm (Univ.​‌ Neuchâtel), Alex Cox (Univ.​​ Bath), Emma Horton (Univ.​​​‌ Warwick).

Denis Villemonais obtained​ in 34 a new​‌ criterion for existence and​​ convergence to a quasi-stationary​​​‌ distribution (QSD) based on​ the spectral theory of​‌ positive operators on Banach​​ lattices, building on domination​​​‌ properties for compactness of​ this type of operators​‌ as exposed in 39​​.

One central question​​​‌ in QSD theory is​ to construct and prove​‌ convergence of numerical schemes​​ for their approximation. In​​​‌ 30, D. Villemonais​ studied a binary branching​‌ model with Moran type​​ interactions introduced in 61​​. In this interacting​​​‌ particle system, particles evolve,‌ reproduce and die independently‌​‌ and, with a probability​​ that may depend on​​​‌ the configuration of the‌ whole system, the death‌​‌ of a particle may​​ trigger the reproduction of​​​‌ another particle, while a‌ branching event may trigger‌​‌ the death of another​​ particle. We prove optimal​​​‌ bounds for the distance‌ between the empirical distribution‌​‌ of the particle system​​ and the quasi-stationray distribution​​​‌ of the associated mean‌ semi-group.

In 16,‌​‌ N. Champagnat, E. Strickler​​ and D. Villemonais studied​​​‌ the convergence of general‌ penalized Markov processes with‌​‌ soft killing in (Monge-Kantorovich)​​ L1 Wasserstein distance.​​​‌ We propose a simple‌ criterion ensuring uniform convergence‌​‌ of conditional distributions to​​ a unique QSD. We​​​‌ give several examples of‌ application where our criterion‌​‌ can be checked, including​​ Bernoulli convolutions and piecewise​​​‌ deterministic Markov processes, for‌ which convergence in total‌​‌ variation is not possible.​​

In 29, N.​​​‌ Champagnat and D. Villemonais‌ characterized large classes of‌​‌ non-irreducible absorbed Markov processes​​ with polynomial speed of​​​‌ convergence to a QSD.‌ They applied their criteria‌​‌ to prove the existence​​ of a QSD for​​​‌ general processes in denumerable‌ state spaces, assuming only‌​‌ aperiodicity, the existence of​​ a Lyapunov function and​​​‌ the existence of a‌ point in the state‌​‌ space from which the​​ return time is finite​​​‌ with positive probability.

N.‌ Champagnat and D. Villemonais‌​‌ obtained in 11 general​​ criteria ensuring existence, uniqueness​​​‌ and/or exponential convergence properties‌ for QSD. The criteria‌​‌ were specifically designed to​​ apply to degenerate processes​​​‌ such as hypoelliptic diffusions‌ and allow to improve‌​‌ existing results in this​​ domain.

7.1.5 Multi-type bisexual​​​‌ and weighted branching process‌

Participants: Coralie Fritsch,‌​‌ Denis Villemonais.

External​​ collaborators: Nicolas Zalduendo-Vidal​​​‌ (INRAE Montpellier).

The quasi-stationary‌ behavior of asexual subcritical‌​‌ multi-type Galton-Watson branching processes​​ is well-known. However, this​​​‌ question was open for‌ bisexual processes, even in‌​‌ the single-type case. C.​​ Fritsch and D. Villemonais​​​‌ studied in 17 the‌ quasi-stationary behavior of the‌​‌ multi-type bisexual branching processes​​ in the subcritical case.​​​‌ We establish the existence‌ of an infinite number‌​‌ of QSDs for the​​ process. Among these distributions,​​​‌ only a finite number‌ has good integrability properties.‌​‌ In addition, when the​​ process is irreducible, its​​​‌ conditonal distributions converge towards‌ a unique QSD. This‌​‌ work is based on​​ our previous work 71​​​‌, which was the‌ first one studying the‌​‌ criticality of general multi-type​​ bisexual branching processes.

It​​​‌ is well-known that super-critical‌ multi-type classical branching processes‌​‌ follow the strong law​​ of large numbers at​​​‌ large times. In 35‌, D. Villemonais studied‌​‌ the long-term behavior of​​ weighted multi-type branching processes,​​​‌ focusing on extending classical‌ laws of large numbers‌​‌ and martingale convergence to​​ settings with infinitely many​​​‌ weighted particles, arbitrary type‌ spaces and non-geometric rescaling.‌​‌ We developed applications to​​ Galton-Watson trees indexed by​​​‌ random weights and by‌ random kernels, convergence in‌​‌ Wasserstein distance of the​​ underlying mean semi-group, and​​​‌ convergence of ergodic averages‌ along lineages.

7.1.6 ODE‌​‌ with semi-Markov switching

Participants:​​​‌ Edouard Strickler.

External​ collaborators: Tobias Hurth​‌ (Université de Neuchâtel, Suisse).​​

In classical PDMP, time​​​‌ durations between random events​ are distributed as exponential​‌ variables. This is made​​ in order to ensure​​​‌ the Markov property of​ the process but can​‌ be debated from a​​ modeling perspective. Indeed, the​​​‌ exponential law allows for​ arbitrarily fast switches, which​‌ is not realistic in​​ most biological or physical​​​‌ models, where a minimum​ time is required between​‌ two environmental changes. Motivated​​ by this question, in​​​‌ collaboration with Tobias Hurth,​ we developed in 32​‌ a framework for PDMP​​ where the times between​​​‌ jumps of the process​ can follow any law.​‌ We show that if​​ the law of jumping​​​‌ time is sufficently regular,​ then certain conditions on​‌ the deterministic dynamics leading​​ to ergodicity of the​​​‌ process in the case​ of exponentially distributed jump​‌ times can still be​​ used in this general​​​‌ context, even though times​ between jumps are not​‌ arbitrarily short—which was a​​ property of the exponential​​​‌ distributions used crucially in​ previous references.

7.1.7 Dispersal​‌ Induced Growth

Participants: Edouard​​ Strickler.

External collaborators​​​‌: Michel Benaïm (Université​ de Neuchâtel, Suisse), Claude​‌ Lobry (Université de Nice)​​ and Tewfik Sari (Inrae​​​‌ Montpellier).

In this collaboration,​ we exhaustively studied the​‌ phenomenon of Dispersal Induced​​ Growth (DIG), a term​​​‌ coined by Katriel in​ 75. In a​‌ population spreading across a​​ finite number of patches,​​​‌ individuals in a patch​ may undergo a time-varying​‌ growth rate which is​​ such that, in the​​​‌ absence of migration between​ the patches, the population​‌ will eventually become extinct​​ in each patch. There​​​‌ is Dispersal Induced Growth​ when adding migration between​‌ such patches leads the​​ whole population to grow​​​‌ and survive. In the​ paper 45 we developed​‌ several tools in order​​ to understand when the​​​‌ DIG phenomenon can happen.​ In case where the​‌ graph of migration is​​ connected at each time,​​​‌ then DIG happens if​ and only if the​‌ mean growth rate of​​ an idealized habitat which​​​‌ would have the maximal​ growth rate at each​‌ time is positive. In​​ 13, we consider​​​‌ the case where migration​ is time dependent and​‌ the graph of migration​​ is globally connected but​​​‌ not necessarily connected at​ each time. In this​‌ situation, we exhibit example​​ where there is no​​​‌ DIG. We also give​ an example of Dispersal​‌ Induced Decay, meaning that,​​ in the absence of​​​‌ migration, the population will​ survive in each patch,​‌ while adding migration may​​ lead the whole population​​​‌ to extinction. The study​ is performed via the​‌ sign of a Lyapunov​​ exponent, leading to necessary​​​‌ and sufficient conditions for​ DIG.

In the recent​‌ paper 51, P.​​ Carmona gives an asymptotic​​​‌ formula for the top​ Lyapunov exponent of a​‌ linear T-periodic cooperative​​ differential equation, in the​​​‌ limit T+​. The short​‌ note 12 discusses and​​ extends this result.

7.1.8​​​‌ Modeling of chronic obstructive​ pulmonary disease

Participants: Pierre​‌ Vallois.

External collaborators​​: Isabelle Dupin (Univ.​​ Bordeaux), Élise Maurat (Univ.​​​‌ Bordeaux).

Most of the‌ direct respiratory effects of‌​‌ air pollution result from​​ the disruption of the​​​‌ lungs' natural defense mechanisms.‌ Among the most essential‌​‌ ones is mucociliary clearance,​​ which describes the coordinated​​​‌ effort between mucus produced‌ in the respiratory tract‌​‌ to trap microorganisms and​​ particles and the unidirectional​​​‌ movement of cilia, that‌ propels trapped particles towards‌​‌ the throat. The perturbation​​ of mucociliary clearance can​​​‌ lead to the formation‌ of mucus plugs, abnormally‌​‌ thick mucus accumulations that​​ obstruct the airways. several​​​‌ fundamental aspects of mucus‌ plugs remain poorly understood,‌​‌ particularly how they form,​​ where exactly they localize​​​‌ within the bronchial tree,‌ and how they evolve‌​‌ over time. This year,​​ we have been working​​​‌ on using mathematical modeling‌ to simulate the entire‌​‌ bronchial network and explore​​ plug formation, distribution, and​​​‌ temporal behavior in ways‌ that are currently inaccessible‌​‌ experimentally. A paper is​​ currently being written.

7.1.9​​​‌ Drawdowns of diffusions

Participants:‌ Pierre Vallois.

External‌​‌ collaborators: Paavo Salminen​​ (Åbo Akademi University, Finland).​​​‌

In 22, using‌ the excursion theory of‌​‌ diffusion processes, we provide​​ new proofs of, firstly,​​​‌ Lehoczky's formula for the‌ joint distribution of the‌​‌ first drawdown time and​​ the maximum before this​​​‌ time, and, secondly, of‌ Malyutin's formula for the‌​‌ joint distribution of the​​ first hitting time and​​​‌ the maximum drawdown before‌ this time. It is‌​‌ remarkable that the excursion​​ approach which we developed​​​‌ first for Lehoczky's formula‌ also provides a proof‌​‌ for Malyutin's formula. Moreover,​​ we analyze the pure​​​‌ jump process describing the‌ maximum before the first‌​‌ drawdown time when the​​ size of the drawdown​​​‌ is varying.

7.2 Analysis‌ of biological and medical‌​‌ data

7.2.1 Quantifying and​​ predicting the evolution of​​​‌ clonal heterogeneity in chronic‌ lymphocytic leukemia

Participants: Nicolas‌​‌ Champagnat, Coralie Fritsch​​, Ulysse Herbach,​​​‌ Pierre Vallois, Vidhi‌ Vidhi.

External collaborators‌​‌: CHRU Strasbourg

The​​ development of targeted therapies​​​‌ has allowed considerable progress‌ in the treatment of‌​‌ many cancers, but their​​ efficacy is dependent on​​​‌ intra-tumor heterogeneity. In lymphomas‌ and leukemias, the identification‌​‌ of gene alterations by​​ high-throughput sequencing allows the​​​‌ characterization of this heterogeneity.‌ In these hemopathies, the‌​‌ initial leukemic clone has​​ a unique immune repertoire​​​‌ corresponding to specific human‌ immunoglobulin genes called VDJ‌​‌ genes encoding the antigen​​ receptor. The occurrence of​​​‌ additional mutations in VDJ‌ genes may be responsible‌​‌ for the emergence of​​ subclones with increased antigen​​​‌ receptor reactivity further complicating‌ the clonal heterogeneity of‌​‌ these hemopathies. However, this​​ second level of clonal​​​‌ heterogeneity and its evolution‌ remain poorly characterized and‌​‌ is not considered in​​ the management of these​​​‌ cancers.

In collaboration with‌ the group of Laurent‌​‌ Vallat in CHRU Strasbourg,​​ we aim to develop​​​‌ a mathematical model for‌ the evolution of the‌​‌ two levels of clonal​​ heterogeneity in leukemia, allowing​​​‌ to characterize their evolution‌ from longitudinal bulk sequencing‌​‌ data of VDJ and​​ cancer genes mutations using​​​‌ a Bayesian approach. This‌ year, we developed a‌​‌ model of the phylogenetic​​​‌ tree of squences of​ VDJ genes based on​‌ the weighted uniform distribution​​ over trees, with weights​​​‌ related to the Hamming​ distance which counts the​‌ number of mutations between​​ sequences. This model allows​​​‌ us to represent with​ a graph the most​‌ probable phylogenetic trees and​​ the uncertainties of certain​​​‌ parts of the tree.​ We are currently working​‌ on the development of​​ variational methods of inference​​​‌ of the tree in​ the context of unobserved​‌ VDJ sequences.

7.2.2 Promoting​​ physical activity and limiting​​​‌ sedentary behaviors to manage​ pain in endometriosis: analysis​‌ of psychosocial variables

Participants:​​ Ulysse Herbach.

External​​​‌ collaborators: Université de​ Haute-Alsace, Université de Nîmes​‌

Endometriosis is negatively linked​​ to physical activity (PA),​​​‌ as its symptoms and​ psychosocial barriers may hinder​‌ participation in PA. This​​ study compared PA, sedentary​​​‌ behavior (SED), and psychosocial​ variables in women with​‌ and without endometriosis 19​​. Women with endometriosis​​​‌ reported lower specific SED,​ poorer quality of life​‌ (QoL), greater score of​​ kinesiophobia, more health-related barriers​​​‌ to PA, lower physical​ self-concepts, and negative PA-related​‌ stereotypes (beliefs or perceptions).​​ The amount of PA​​​‌ was most related to​ previous PA behavior and​‌ intention in both groups.​​ In endometriosis, PA and​​​‌ SED are correlated to​ barriers related to health,​‌ motivational variables, beliefs about​​ the risks of PA,​​​‌ physical self-concepts and QoL.​ Findings highlight the importance​‌ of motivational variables and​​ self-concepts, which could be​​​‌ targeted to support engagement​ in PA to improve​‌ symptom management and QoL​​ in women with endometriosis.​​​‌ This study is a​ first step towards a​‌ finer multivariate analysis including​​ a specific treatment of​​​‌ the ordinal nature of​ the data, for example​‌ using latent Gaussian variables.​​

7.2.3 Uncovering candidate Nanog-Helper​​​‌ genes in early mouse​ embryo differentiation using differential​‌ entropy and network inference​​

Participants: Ulysse Herbach.​​​‌

External collaborators: Université​ libre de Bruxelles, ENS​‌ Lyon, Université Clermont Auvergne​​

In the preimplantation mammalian​​​‌ embryo, stochastic cell-to-cell expression​ heterogeneity is followed by​‌ signal reinforcement to initiate​​ the specification of Inner​​​‌ Cell Mass (ICM) cells​ into Epiblast (Epi). The​‌ expression of NANOG, the​​ key transcription factor for​​​‌ the Epi fate, is​ necessary but not sufficient:​‌ coincident expression of other​​ factors is required. To​​​‌ identify possible Nanog-helper genes,​ we analyzed gene expression​‌ variability in five time-stamped​​ single-cell transcriptomic datasets using​​​‌ differential entropy, a quantitative​ measure of cell-to-cell heterogeneity​‌ 21. The entropy​​ of Nanog displays a​​​‌ peak-shaped temporal pattern from​ the 16-cell to the​‌ 64-cell stage, consistent with​​ its key role in​​​‌ Epi specification. By estimating​ the entropy profiles of​‌ the 21 genes common​​ to all five datasets,​​​‌ we identified three genes​ - Pecam1, Sox2, and​‌ Hnf4a - whose variability​​ in expression patterns mirrors​​​‌ that of Nanog.

We​ further performed gene regulatory​‌ network inference using CARDAMOM​​ 10, an algorithm​​​‌ that exploits temporal dynamics​ and transcriptional bursting. The​‌ results revealed that these​​ three genes exhibit reciprocal​​​‌ activation with Nanog at​ the 32-cell stage. This​‌ regulatory motif reinforces fate-switching​​ decisions and co-expression states.​​ This analysis of single-cell​​​‌ transcriptomic data thus uncovers‌ a likely role for‌​‌ Pecam1, Sox2, and Hnf4a​​ as key genes that,​​​‌ when coincidentally expressed with‌ Nanog, initiate ICM differentiation.‌​‌

7.2.4 Harnessing ecological niche​​ modeling of Listeria monocytogenes​​​‌ for biopreservation system engineering‌

Participants: Sandie Ferrigno.‌​‌

External collaborators: LIBio​​ - Laboratoire d'Ingénierie des​​​‌ Biomolécules (

In this‌ collaboration with the LIBio‌​‌ - Laboratoire d'Ingénierie des​​ Biomolécules of Lorraine University,​​​‌ we work on the‌ presence of pathogens in‌​‌ food. To reduce this​​ presence, hurdle technology, which​​​‌ is based on the‌ use of a combination‌​‌ of several preservative methods,​​ is used by food​​​‌ business operators. Among the‌ multiple available hurdles, biopreservation‌​‌ consists of using microorganisms​​ as protective cultures and/or​​​‌ their metabolites to improve‌ the microbial quality of‌​‌ food. This study explores​​ the potential of ecological​​​‌ niche modeling to guide‌ the selection of biopreservation‌​‌ candidates. A luminescent strain​​ of Listeria monocytogenes was​​​‌ utilized in a multivariate‌ high-throughput competition assay. The‌​‌ resulting data were analyzed​​ using two parallel methods:​​​‌ k-means clustering and Response‌ Surface Modeling. An article‌​‌ 18 has been published​​ on this work.

7.2.5​​​‌ Nonparametric estimation

Participants: Sandie‌ Ferrigno.

External collaborators‌​‌: R. Azais (MOSAIC​​ INRIA Team, ENS Lyon),​​​‌ M.-J. Martinez (LJK-Grenoble University)‌

Many goodness-of-fit tests have‌​‌ been developed to assess​​ the different assumptions of​​​‌ a (possibly heteroscedastic) regression‌ model. Most of them‌​‌ are `directional' in that​​ they detect departures from​​​‌ a given assumption of‌ the model. Other tests‌​‌ are `global' (or `omnibus')​​ in that they assess​​​‌ whether a model fits‌ a dataset on all‌​‌ its assumptions. We focus​​ on the task of​​​‌ choosing the structural part‌ of the regression and‌​‌ the variance functions because​​ they contain easily interpretable​​​‌ information about the studied‌ relationship. We consider two‌​‌ nonparametric `directional' tests and​​ one nonparametric `global' test,​​​‌ all based on generalizations‌ of the Cramér-von Mises‌​‌ statistic. To perform these​​ goodness-of-fit tests, we have​​​‌ developed the R package‌ cvmgof, an easy-to-use tool‌​‌ for practitioners, available from​​ the Comprehensive R Archive​​​‌ Network (CRAN). The package‌ was updated in 2022‌​‌ (this is its third​​ version)(6.1.1). This​​​‌ latest version currently allows‌ testing the regression function‌​‌ in the model. Since​​ 2025, we worked to​​​‌ enrich the package by‌ allowing the user to‌​‌ test the homoscedasticity/heteroscedasticity of​​ the model. This new​​​‌ version will be submitted‌ to CRAN in 2026‌​‌ and an associated article​​ is currently being written.​​​‌ In parallel, with the‌ aim of obtaining better‌​‌ estimators in the various​​ tests we are studying,​​​‌ we have been working‌ on bandwidth selection choice,‌​‌ a crucial parameter in​​ nonparametric estimation. In particular,​​​‌ we have relied on‌ cross-validation methods and have‌​‌ also proposed new ones.​​ We plan to integrate​​​‌ these methods into the‌ cvmgof package in 2026‌​‌ to offer users choices​​ that will improve the​​​‌ quality of the estimators‌ used. We presented these‌​‌ results during the CMStatistics​​ congress in London in​​​‌ December 2025 36.‌

7.2.6 Online big data‌​‌ analysis and online learning​​​‌

Participants: Jean-Marie Monnez.​

A tool for analyzing​‌ streaming data is stochastic​​ approximation introduced by Robbins​​​‌ and Monro in 1951,​ that can be used​‌ for example to estimate​​ online parameters of a​​​‌ regression function 66 or​ centers of clusters in​‌ unsupervised classification 50.​​ Another type of stochastic​​​‌ approximation process, for estimating​ eigenvectors and eigenvalues of​‌ the unknown Q-symmetric​​ expectation B of a​​​‌ random matrix A using​ independent observations of A​‌, was introduced by​​ Benzécri in 1969 and​​​‌ studied by several authors,​ like the Oja process​‌ (1985). In this type​​ of process, independent observations​​​‌ of the random matrix​ are observed and one​‌ or a mini-batch of​​ observations per step are​​​‌ taken into account. We​ defined an extended Oja​‌ process where there is​​ a correlation model between​​​‌ the random matrices introduced​ at each step and​‌ where all the observations​​ up to the current​​​‌ step can be taken​ into account without storing​‌ them 85. Firstly,​​ this extends the scope​​​‌ of application of these​ processes, secondly previous experiments​‌ we have conducted show​​ that processes using all​​​‌ the data up to​ the current step generally​‌ converge faster than those​​ using a mini-batch of​​​‌ data.

Canonical components of​ the canonical analysis of​‌ two random vectors are​​ collinear with principal components​​​‌ of a PCA of​ the muldimensional linear regression​‌ function of one vector​​ with respect to the​​​‌ other or projected PCA.​ In the context of​‌ streaming data, we define​​ in 20 processes for​​​‌ estimating online in parallel​ this regression function and​‌ canonical components, possibly taking​​ into account at each​​​‌ step all the data​ up to this step​‌ without storing them and​​ using an extended Oja​​​‌ process 85. We​ deal with the cases​‌ of canonical correlation analysis,​​ factorial correspondence analysis and​​​‌ factorial discriminant analysis.

We​ also considered the canonical​‌ analysis of two random​​ vectors in the context​​​‌ of streaming data or​ big data. In the​‌ work described above, specific​​ stochastic approximation processes of​​​‌ canonical components and of​ couples of canonical components​‌ were defined separately for​​ canonical correlation analysis (CCA),​​​‌ factorial correspondence analysis (FCA)​ and factorial discriminant analysis​‌ (FDA). Here, using an​​ extension of the Oja​​​‌ process, we define general​ stochastic approximation processes of​‌ canonical components and of​​ couples of canonical components​​​‌ of the canonical analysis​ of two random vectors​‌ that can be directly​​ applied to CCA, FCA​​​‌ and FDA. A paper​ is currently being written.​‌

We are also currently​​ working on an extension​​​‌ of the Oja process​ to estimate the general​‌ and canonical components of​​ a generalized canonical analysis.​​​‌ It can be directly​ used in mixed data​‌ canonical analysis, generalized canonical​​ correlation analysis, multiple correspondence​​​‌ analysis and in the​ estimation of couples of​‌ canonical components in canonical​​ analysis of two random​​​‌ vectors.

Given a non-decreasing​ sequence of closed convex​‌ subsets (Kn​​) in a separable​​​‌ real Hilbert space H​, we are also​‌ currently studying the convergence​​ of a stochastic approximation​​ process in H with​​​‌ correlated observations, projected at‌ step n on K‌​‌n, that extends​​ processes of the Robbins-Monro​​​‌ type. We established theorems‌ of almost sure convergence‌​‌ and in quadratic mean​​ and applied them to​​​‌ streaming multidimensional linear regression,‌ using at each step‌​‌ a mini-batch of data​​ or all the data​​​‌ up to this step,‌ and to dynamic generalized‌​‌ linear models when the​​ parameter varies with time.​​​‌

7.2.7 Diffuse low-grade gliomas‌

Participants: Sophie Wantz-Mézières.‌​‌

External collaborators: CRAN​​ BioSIS, CHRU Nancy.

The​​​‌ therapeutic management of patients‌ with diffuse low-grade gliomas‌​‌ (DLGG) is based on​​ monitoring progress through regular​​​‌ MRIs, usually through the‌ reconstructed volume of the‌​‌ tumor (after semiautomatic delineation).​​ But this seems not​​​‌ sufficient. Up to now,‌ the diffuse nature of‌​‌ this kind of tumors​​ has been observed but​​​‌ is not well measured.‌ We designed a new‌​‌ MRI-based variable, the ESVR​​ (ExtraSphere Volume Ratio) to​​​‌ quantify the DLGG brain‌ infiltration and discriminate patterns‌​‌ of patients. A machine​​ learning approach allows us​​​‌ to detect that patients'‌ age and ESVR at‌​‌ diagnosis seem to play​​ an important role, as​​​‌ well as the well-known‌ anatomopathology results. This result‌​‌ has been submitted to​​ Biomedical Signal Processing and​​​‌ Control.

A thesis is‌ currently underway to develop‌​‌ a tool to assist​​ in awake surgery. This​​​‌ tool should make it‌ possible to better identify‌​‌ subtle disorders during surgery​​ that are impossible or​​​‌ difficult for humans to‌ assess, in order to‌​‌ better organize the procedure​​ (detection of possible “tipping​​​‌ points” beyond which the‌ patient is no longer‌​‌ performing) or to stop​​ it (detection of alterations​​​‌ that are generally minor‌ but which, in the‌​‌ patient's socio-professional context will​​ have deleterious consequences on​​​‌ their quality of life).‌ Significant progress has been‌​‌ made up to date.​​ The foundations of this​​​‌ tool have been laid,‌ based on two complementary‌​‌ processes: the detection of​​ motor states through pose​​​‌ recognition, and the transcription‌ of oral responses via‌​‌ speech recognition. In order​​ to identify the most​​​‌ suitable technical configuration for‌ the operating room context,‌​‌ work is currently being​​ carried out on simulated​​​‌ data obtained from volunteers:‌ comparison of voice transcription‌​‌ models on audio recordings,​​ and implementation of a​​​‌ comparative study of pose‌ recognition and motor state‌​‌ classification models, based on​​ videos mimicking the exercises​​​‌ performed in the operating‌ room. Finally, a tool‌​‌ for anonymizing videos from​​ the operating room has​​​‌ been developed, allowing secure‌ access to them without‌​‌ compromising patient identity. This​​ work has been partly​​​‌ presented in congress 37‌, and a communication‌​‌ has been submitted in​​ ICASSP 2026.

8 Partnerships​​​‌ and cooperations

Participants: Sophie‌ Baland, Virgile Brodu‌​‌, Nicolas Champagnat,​​ Elie Cerf, Coralie​​​‌ Fritsch, Mathilde Gaillard‌, Anne Gégout-Petit,‌​‌ Ulysse Herbach, Juan​​ Mardomingo Sanz, Anouk​​​‌ Rago, Édouard Strickler‌, Pierre Vallois,‌​‌ Vidhi Vidhi, Denis​​ Villemonais, Sophie Wantz-Mézières​​​‌.

8.1 International initiatives‌

8.1.1 Associate Teams in‌​‌ the framework of an​​​‌ Inria International Lab or​ in the framework of​‌ an Inria International Program​​

aStoNiche
  • Title
    Towards a​​​‌ stochastic theory of niche​ construction
  • Duration
    2024-2026
  • Coordinators​‌
    Nicolas Champagnat and Rolando​​ Rebolledo
  • Partners
    • Inria team​​​‌ SIMBA (N. Champagnat, C.​ Fritsch, E. Strickler)
    • Universidad​‌ de Valparaiso (R. Rebolledo,​​ N. Rivera)
    • Pontificia Universidad​​​‌ Catolica de Chile (P.​ Marquet, C. Quininao)
    • Universidad​‌ de Santiago de Chile​​ (L. Videla, N. Zalduendo-Vidal)​​​‌
  • Objectives
    We aim to​ provide a general stochastic​‌ formulation of the niche​​ construction process. In particular,​​​‌ we want to take​ into account the feedbacks​‌ of species on their​​ environment, and the evolutionary​​​‌ aspects that follow. This​ requires to deal with​‌ different time-scales (ecological, niche​​ construction, evolutionary…) and to​​​‌ keep track of non-extinct​ traits that may be​‌ positively selected after niche​​ construction. We plan to​​​‌ use mean-field stochastic individual-based​ model and branching processes​‌ and consider appropriate parameter​​ scalings.

8.1.2 Visits of​​​‌ international scientists

Other international​ visits to the team​‌
Leonardo Videla
  • Status
    Assistant​​ professor
  • Institution of origin:​​​‌
    University of Santiago de​ Chile
  • Country:
    Chile
  • Dates:​‌
    September 18 to 24​​
  • Context of the visit:​​​‌
    Collaboration within the associate​ team aStoNiche
  • Mobility program/type​‌ of mobility:
    Research stay​​
Cristobal Quininao
  • Status
    Assistant​​​‌ professor
  • Institution of origin:​
    University of Santiago de​‌ Chile
  • Country:
    Chile
  • Dates:​​
    November 3 to 7​​​‌
  • Context of the visit:​
    Collaboration within the associate​‌ team aStoNiche
  • Mobility program/type​​ of mobility:
    Research stay​​​‌
Nicolas Zalduendo-Vidal
  • Status
    Assistant​ professor
  • Institution of origin:​‌
    University of Santiago de​​ Chile
  • Country:
    Chile
  • Dates:​​​‌
    December 1 to 5​
  • Context of the visit:​‌
    Collaboration within the associate​​ team aStoNiche
  • Mobility program/type​​​‌ of mobility:
    Research stay​

8.1.3 Visits to international​‌ teams

Research stays abroad​​
Elie Cerf
  • Visited institution:​​​‌
    University College London
  • Country:​
    United Kingdom
  • Dates:
    June​‌ 30 - July 11​​
  • Context of the visit:​​​‌
    Collaboration with Alex Watson​ on multiscale dynamics in​‌ fragmentation-coagulation processes.
  • Mobility program/type​​ of mobility:
    Research stay​​​‌
Nicolas Champagnat
  • Visited institution:​
    Pontificia Universidad Católica de​‌ Chile
  • Country:
    Chile
  • Dates:​​
    March 8 to 20​​​‌
  • Context of the visit:​
    Collaboration within the associate​‌ team aStoNiche
  • Mobility program/type​​ of mobility:
    Research stay​​​‌

8.2 European initiatives

8.2.1​ H2020 projects

N. Champagnat​‌ is scientific collaborator of​​ the ERC SINGER (AdG​​​‌ 101054787) on Stochastic dynamics​ of sINgle cells, coordinated​‌ by S. Méléard (Ecole​​ Polytechnique). He is involved​​​‌ in the research axes​ “From stochastic processes to​‌ singular Hamilton-Jacobi equations” and​​ “Lineages and time reversed​​​‌ trajectories” of this project.​

8.3 National initiatives

Projects​‌ coordinated by the team:​​

  • INSERM funding
    Project Predi-CLL​​​‌, ITMO Physics, Mathematics​ applied to Cancer (from​‌ October 2023): “Quantifying and​​ predicting the evolution of​​​‌ clonal heterogeneity in chronic​ lymphocytic leukemia”. Funding organisms:​‌ ITMO Cancer, ITMO Technologies​​ pour la santé de​​​‌ l'alliance nationale pour les​ sciences de la vie​‌ et de la santé​​ (AVIESAN), INCa. Partners: Inria​​​‌ and IECL (Institut Élie​ Cartan de Lorraine) and​‌ CHRU Strasbourg. Leader: N.​​ Champagnat. Participants: C. Fritsch,​​​‌ U. Herbach, P. Vallois,​ V. Vidhi, D. Villemonais.​‌
  • France 2030 funding
    PEPR​​ Exploratoire Maths-VivES (from July​​ 2024), target project DyLT​​​‌ (Dynamics of Telomere Length)‌ on “Influence of telomere‌​‌ length dynamics and environmental​​ conditions on biological and​​​‌ clinical aspects of aging”'.‌ Funding organisms: ANR. Partners:‌​‌ Inria Nancy and Saclay,​​ Institut Élie Cartan de​​​‌ Lorraine (Nancy), CHRU Nancy,‌ Centre de Recherche en‌​‌ Cancérologie de Marseille and​​ Institut de recherche sur​​​‌ le cancer et le‌ vieillissement (Nice). Coordinators: N.‌​‌ Champagnat and A. Benetos​​ (CHRU Nancy). Participants: C.​​​‌ Fritsch, A. Gégout-Petit, J.‌ Mardomingo Sanz, D. Villemonais,‌​‌ S. Baland.

Projects in​​ which the team participates:​​​‌

  • France 2030 funding
    PEPR‌ Santé Numérique (from July‌​‌ 2023), project AI4scMed (Multiscale​​ AI for single-cell-based precision​​​‌ medicine), team involved in‌ WP3: “Regulatory network inference:‌​‌ from dynamical models to​​ logical models”. Funding organisms:​​​‌ ANR. Partners: Inria, Inserm,‌ CNRS. Coordinator: F. Picard‌​‌ (CNRS, ENS Lyon). Participants:​​ M. Gaillard, U. Herbach.​​​‌
  • VEOLIA funding
    Chair “Modélisation‌ Mathématique et Biodiversité” between‌​‌ VEOLIA, Ecole Polytechnique, Museum​​ National d'Histoire Naturelle and​​​‌ Fondation X. Coordinator: S.‌ Méléard. Participants: V. Brodu,‌​‌ N. Champagnat, C. Fritsch,​​ D. Villemonais.
  • ANR funding​​​‌
    ANR JCJC project CRESCENDO‌ (inCRease physical Exercise and‌​‌ Sport to Combat ENDOmetriosis,​​ AAPG 2022). Coordinator: G.​​​‌ Escriva-Boulley (LISEC, Université de‌ Haute-Alsace). Participant: U. Herbach.‌​‌
  • CNRS funding
    GDR 720​​ IASIS. Leader: C.​​​‌ Richard. Participant: S. Wantz-Mézières.‌
  • CNRS funding
    GDR Réseau‌​‌ Thématique MathSAV. Leader:​​ F. Crauste. Participants: N.​​​‌ Champagnat, C. Fritsch, U.‌ Herbach, A. Rago.

8.4‌​‌ Regional initiatives

  • A. Gégout-Petit​​ is one the two​​​‌ PIs of the interdisciplinary‌ program “Life Travel” of‌​‌ the I-Site “Lorraine Université​​ d'Excellence” on life trajectories​​​‌ and longevity (launched on‌ January 1, 2026.).
  • S.‌​‌ Wantz-Mézières received a grant​​ from Interdisciplinary Pilot AAP​​​‌ Life Travel 2025, with‌ Sébastien Hergalant (NGERE).

9‌​‌ Dissemination

Participants: Sophie Baland​​, Virgile Brodu,​​​‌ Nicolas Champagnat, Elie‌ Cerf, Sandie Ferrigno‌​‌, Coralie Fritsch,​​ Mathilde Gaillard, Anne​​​‌ Gégout-Petit, Ulysse Herbach‌, Vincent Kagan,‌​‌ Juan Mardomingo Sanz,​​ Jean-Marie Monnez, Anouk​​​‌ Rago, Édouard Strickler‌, Pierre Vallois,‌​‌ Vidhi Vidhi, Denis​​ Villemonais, Sophie Wantz-Mézières​​​‌.

9.1 Promoting scientific‌ activities

9.1.1 Scientific events:‌​‌ organisation

Member of the​​ organizing committees

9.1.2 Scientific events:​​ selection

Member of the​​​‌ conference program committees

9.1.3 Journal​​​‌

Member of the editorial‌ boards
  • N. Champagnat is‌​‌ associate editor for ESAIM:​​ Probability & Statistics and​​​‌ Stochastic Models
  • D. Villemonais‌ is associate editor for‌​‌ Applied Probability Trust

9.1.4​​ Invited talks

9.1.5​ Scientific expertise

  • N. Champagnat​‌ has been a member​​ of the Committee for​​​‌ junior permanent research positions​ of Centre Inria de​‌ Lille.
  • N. Champagnat and​​ C. Fritsch were members​​​‌ of the Committee for​ career advancement of Inria​‌ personnel.
  • C. Fritsch has​​ been a member of​​​‌ the Committee for junior​ permanent research positions of​‌ Centre Inria de l'Université​​ de Bordeaux and Centre​​​‌ Inria de Paris.
  • A.​ Gégout-Petit has been member​‌ of four recruitment committes​​ (Nancy (MCF), Montpellier University​​​‌ (PR), Troyes Technological University​ (PR) and Institut Henri​‌ Poincaré (Director)).
  • D. Villemonais​​ has been a member​​​‌ of a recruitment comittee​ (Strasbourg, PU).

9.1.6 Research​‌ administration

  • V. Brodu was​​ an elected representative of​​​‌ doctoral students at the​ doctoral school committee (local​‌ scale), and also at​​ the doctoral college committee​​​‌ (regional scale). He was​ then replaced by M.​‌ Gaillard.
  • N. Champagnat is​​ elected member of the​​​‌ Commission d'Evaluation of Inria,​ member of the COMIPERS​‌ (hiring committee for non-permanent​​ positions) of Centre Inria​​​‌ de Nancy, substitute member​ of the Comité de​‌ Centre of Centre Inria​​ de Nancy and local​​​‌ researcher (correspondant local) representing​ the COERLE (Inria's Ethic​‌ Committee) at Centre Inria​​ de Nancy.
  • C. Fritsch​​​‌ is elected member of​ the Commission d'Evaluation of​‌ Inria.
  • A. Gégout-Petit is​​ director of the research​​​‌ unit IECL (Institut Elie​ Cartan de Lorraine), Mathematics​‌ laboratory of Univ. Lorraine​​ (200 members).
  • S. Wantz-Mézières​​ is substitute member of​​​‌ the CNU, section 26,‌ college B.
  • D. Villemonais‌​‌ is head of the​​ Probability Team in Strasbourg,​​​‌ member of the MSII‌ doctoral school board in‌​‌ University of Strasbourg, and​​ elected member of the​​​‌ “Conseil de l'UFR de‌ mathématiques et informatique” in‌​‌ University of Strasbourg.

9.2​​ Teaching - Supervision -​​​‌ Juries - Educational and‌ pedagogical outreach

9.2.1 Teaching‌​‌

  • S. Ferrigno is in​​ charge of the “DU​​​‌ Big Data & Data‌ Science” in ENSMN, Univ.‌​‌ Lorraine.
  • D. Villemonais is​​ head of L3 DUAS​​​‌ (actuarial science) in Univ.‌ Strasbourg.
  • Master: V. Brodu,‌​‌ Distribution theory and PDEs,​​ 40h, M1, second year​​​‌ of ENSEM, Univ. Lorraine.‌
  • Master: V. Brodu, Monte-Carlo‌​‌ methods, 20h, M1, second​​ year of ENSMN, Univ.​​​‌ Lorraine.
  • Master: N. Champagnat,‌ Introduction to Quantitative Finance,‌​‌ 12h, M1, second year​​ of ENSMN, Univ. Lorraine.​​​‌
  • Master: N. Champagnat, Introduction‌ to Quantitative Finance, 9h,‌​‌ M2, third year of​​ ENSMN, Univ. Lorraine.
  • Master:​​​‌ S. Ferrigno, Experimental designs,‌ 6h, M1, fourth year‌​‌ of EEIGM, Univ. Lorraine.​​
  • Master: S. Ferrigno, Data​​​‌ analyzing and mining, 36h,‌ M1, second year of‌​‌ ENSMN, Univ. Lorraine.
  • Master:​​ S. Ferrigno, Modeling and​​​‌ forecasting, 32h, M1, second‌ year of ENSMN, Univ.‌​‌ Lorraine.
  • Master: S. Ferrigno,​​ Training projects, 18h, M1/M2,​​​‌ second and third year‌ of ENSMN, Univ. Lorraine.‌​‌
  • Master: C. Fritsch, Inverse​​ problem, 18h, M1, second​​​‌ year of ENSMN, Univ.‌ Lorraine.
  • Master: A. Gégout-Petit,‌​‌ Inferential statistics, 20h, M1​​ IMSD, Univ. Lorraine.
  • Master:​​​‌ A. Gégout-Petit, Complex data‌ modelling, 30h, M2 IMSD,‌​‌ Univ. Lorraine.
  • Master: D.​​ Villemonais, Probability M1 first​​​‌ and second semester, 56h‌
  • Master: D. Villemonais, Tutoring‌​‌ of student in actuarial​​ science (stage d'alternance)
  • Agregation​​​‌ of mathematics training: Denis‌ Villemonais, Modelling lesson
  • Master:‌​‌ S. Wantz-Mézières, Unsupervised Learning,​​ 25h, M2 IMSD, Univ.​​​‌ Lorraine
  • Master: S. Wantz-Mézières,‌ Advanced image analysis and‌​‌ digital optimization, M2 IS-SNIM,​​ 36h, Univ. Lorraine.
  • Licence:​​​‌ S. Baland, Applied probabilities,‌ 20h, L2 Informatique, Univ.‌​‌ Lorraine.
  • Licence: S. Baland,​​ Mathematical tools for biology,​​​‌ 22h, L1 Sciences de‌ la Vie, Univ. Lorraine.‌​‌
  • Licence: S. Baland, Probabilities,​​ 20h, L2 Informatique, Univ.​​​‌ Lorraine.
  • Licence: V. Brodu,‌ Probability theory and Statistics,‌​‌ 60h, L3, first year​​ of ENSEM, Univ. Lorraine.​​​‌
  • Licence: V. Brodu, Operational‌ Research, 30h, L3, first‌​‌ year of ENSMN, Univ.​​ Lorraine.
  • Licence: V. Brodu,​​​‌ Mathematical tools for engineers,‌ 20h, L3, first year‌​‌ of ENSEM, Univ. Lorraine.​​
  • Licence: E. Cerf, Complementary​​​‌ Analysis, 70h, L1 Mathématiques,‌ Univ. Lorraine.
  • Licence: E.‌​‌ Cerf, Mathematics, 12h, L1​​ Professorat des Ecoles, Univ.​​​‌ Lorraine.
  • Licence: E. Cerf,‌ Mathematical tools for biology,‌​‌ 22h, L1 Sciences de​​ la Vie, Univ. Lorraine.​​​‌
  • Licence: S. Ferrigno, Descriptive‌ and inferential statistics, 60h,‌​‌ L2, second year of​​ EEIGM, Univ. Lorraine.
  • Licence:​​​‌ S. Ferrigno, Statistical modeling,‌ 60h, L2, second year‌​‌ of EEIGM, Univ. Lorraine.​​
  • Licence: S. Ferrigno, Mathematical​​​‌ and computational tools, 20h,‌ L3, third year of‌​‌ EEIGM, Univ. Lorraine.
  • Licence:​​ S. Ferrigno, Training projects,​​​‌ 40h, L1/L3, first, second‌ and third year of‌​‌ EEIGM, Univ. Lorraine.
  • Licence:​​ M. Gaillard, Inférence statistique,​​​‌ 40h, L3, first year‌ of ENSEM, Univ. Lorraine.‌​‌
  • Licence: V. Kagan, Probability​​​‌ theory tutorial, 40h, L3,​ first year of ENSMN,​‌ Univ. Lorraine.
  • Licence: V.​​ Kagan, Numerical Analysis tutorial,​​​‌ 20h, L3, first year​ of ENSMN, Univ. Lorraine.​‌
  • Licence: J. Mardomingo Sanz,​​ Analyse numérique et optimisation,​​​‌ 40h, L3, first year​ of ENSMN, Univ. Lorraine.​‌
  • Licence: S. Wantz-Mézières, Applied​​ Mathematics: Probability, 48h, L3,​​​‌ first year of TELECOM-NANCY,​ Univ. Lorraine.
  • Licence: S.​‌ Wantz-Mézières, Mathematical tools for​​ management and Finance, 180h,​​​‌ L1/L2 first and second​ year of BUT GEA,​‌ IUT Nancy-Charlemagne, Univ. Lorraine.​​

9.2.2 Supervision

PhD
  • PhD:​​​‌ Virgile Brodu, “Stochastic individual-based​ models with allometric dynamics:​‌ branching, convergence, numerical simulations”,​​ grant ENS Lyon. Advisors:​​​‌ S. Billiard (Univ. Lille),​ N. Champagnat, C. Fritsch.​‌ Defense on August, 27​​ 24.
  • PhD: Anouk​​​‌ Rago, “Inférence de réseaux​ de gènes dynamiques et​‌ prédiction d'expériences d'interventions biologiques​​ dans des cellules cancéreuses”,​​​‌ grant Région Grand-Est and​ Inria. Advisors: N. Champagnat,​‌ A. Gégout-Petit. Defense on​​ June, 30.
  • PhD in​​​‌ progress: Sophie Baland, “Telomere​ length dynamics : modelisation,​‌ estimation and application to​​ diagnostic support systems”, funding​​​‌ LUE, since September 2023.​ Advisors: S. Toupance (Univ.​‌ Lorraine) and D. Villemonais.​​
  • PhD in progress: Mathilde​​​‌ Gaillard, “Processus de Markov​ déterministes par morceaux et​‌ inférence bayésienne de réseaux​​ de gènes”, grant PEPR​​​‌ Santé Numérique, since October​ 2023. Advisors: A. Gégout-Petit,​‌ U. Herbach.
  • PhD in​​ progress: Anouar Jeddi, “Convergence​​​‌ of individual-based population models​ to Hamilton-Jacobi equations”, grant​‌ ERC SINGER (Ecole Polytechnique),​​ since September 2023. Advisors:​​​‌ S. Méléard (Ecole Polytechnique)​ and N. Champagnat.
  • PhD​‌ in progress: Vincent Kagan,​​ “Asymptotic behavior of epidemiological​​​‌ models with individual viral​ load”, funding Université de​‌ Lorraine, since September 2023.​​ Advisors: E. Strickler (Univ.​​​‌ Lorraine) and D. Villemonais.​
  • PhD in progress: Juan​‌ Mardomingo Sanz, “Stochastic modeling​​ and estimation of the​​​‌ distribution of elongation and​ abrupt shortening of ALT​‌ cells in yeast”, funding​​ PEPR Math-VivES, since October​​​‌ 2025. Advisors: N. Champagnat,​ C. Fritsch, D. Villemonais.​‌
  • PhD in progress: Vidhi​​ Vidhi, “Stochastic modeling and​​​‌ statistics for quantifying the​ evolution of tumor heterogeneity​‌ in chronic lymphocytic leukemia”,​​ funding ITMO Cancer, since​​​‌ October 2024. Advisors: N.​ Champagnat, C. Fritsch, U.​‌ Herbach.
  • PhD in progress:​​ Léo Gérard, “Development of​​​‌ a tool to assist​ awake brain tumor surgery​‌ based on statistical learning​​ methods”, funding CRAN BioSIS,​​​‌ since october 2024. Advisors:​ J.M. Moureaux (CRAN), F.​‌ Rech (CHRU- CRAN), S.​​ Wantz-Mézières.
HDR
  • HDR: Coralie​​​‌ Fritsch, “Asymptotic behavior of​ probabilistic models for biology:​‌ criticality of processes, limit​​ theorems, quasi-stationary behavior, model​​​‌ approximation”. Defense on December,​ 15 25.
Other​‌
  • ENSMN third year (M2)​​ internship: M. Ammar, “Machine​​​‌ learning tasks in the​ context of air freight​‌ through the Cargostack application”.​​ Advisors: M. Bleu (Wiremind​​​‌ cargo), S. Ferrigno (ENSMN).​
  • ENSMN third year (M2)​‌ internship: A. Blanchard, “Development​​ of a rating model​​​‌ specific to badminton players”.​ Advisors: E.Hollville (Fédération française​‌ de badminton), S. Ferrigno​​ (ENSMN).
  • M2 internship: Roxane​​​‌ Cellier (Sorbonne Univ.), “Inference​ of kinetics for large​‌ multi-scale chemical reaction networks”.​​ Advisors: U. Herbach and​​​‌ J. Unterberger (IECL).
  • M2​ internship: Juan Mardomingo Sanz​‌ (M2 Mathématiques pour les​​ Sciences du Vivant of​​ Paris-Saclay Univ.), “Stochastic modeling​​​‌ and estimation of the‌ distribution of elongation of‌​‌ ALT cells in yeast”,​​ funded by the interdisciplinary​​​‌ program “Life Travel” of‌ the I-Site “Lorraine Université‌​‌ d'Excellence”, from April to​​ September 2025. Advisors: N.​​​‌ Champagnat, C. Fritsch, D.‌ Villemonais.
  • M2 internship: Mattheo‌​‌ Rapenne (Univ. Lorraine), “Diagnosis​​ of heart failure in​​​‌ the emergency service”. Advisors:‌ A. Gégout-Petit (IECL), N.‌​‌ Girerd (CHRU Nancy).
  • M1​​ internship: Lorenzo Boussion (ENS​​​‌ Paris-Saclay), “Necessary condition for‌ dispersal induced growth on‌​‌ time periodic networks”. Advisor:​​ E. Strickler.
  • M1 internship:​​​‌ Thibaut Pannet (ENSTA Paris),‌ “Variational Bayesian inference for‌​‌ single-cell transcriptomic data”. Advisor:​​ U. Herbach.
  • TELECOM-NANCY PIDR​​​‌ second-year project: N. Chatonnier,‌ R. Samba, N. Bermond,‌​‌ “Comparison of deep learning​​ models for automatic speech​​​‌ recognition: application to awake‌ brain surgery”. Advisors: S.‌​‌ Wantz-Mézières, with J.M. Moureaux​​ and L. Gérard (CRAN).​​​‌
  • ENSMN second year (M1)‌ Department project: Y. Souidi,‌​‌ Y. Laribi, “Multiple linear​​ regression and regularization methods”.​​​‌ Advisor: S. Ferrigno.

9.2.3‌ Juries

  • N. Champagnat was‌​‌ referee for the PhD​​ thesis of Nathanaël Boutillon​​​‌ (Aix-Marseille Univ., 11/06/2025).
  • N.‌ Champagnat, C. Fritsch and‌​‌ A. Gégout-Petit were examiners​​ for the PhD thesis​​​‌ of Virgile Brodu (Univ.‌ Lorraine, 27/08/2025).
  • N. Champagnat‌​‌ and A. Gégout-Petit were​​ examiners for the PhD​​​‌ thesis of Anouk Rago‌ (Univ. Lorraine, 30/06/2025).
  • N.‌​‌ Champagnat and A. Gégout-Petit​​ were examiners for the​​​‌ HDR jury of Coralie‌ Fritsch (Univ. Lorraine, 15/12/2025).‌​‌
  • A. Gégout-Petit was president​​ the PhD jury of​​​‌ Trinh Duong (Lorraine University,‌ 06/2025).
  • A. Gégout-Petit was‌​‌ referee for the PhD​​ jury of Cristina Chavez​​​‌ (Nanterre University, 04/2025).
  • A.‌ Gégout-Petit was referee for‌​‌ the PhD jury of​​ Julie Cartier (PSL University,​​​‌ 11/2025).
  • A. Gégout-Petit was‌ referee for the PhD‌​‌ jury of Valentin Portmann​​ (Univ. Bordeaux, 11/2025)
  • S.​​​‌ Wantz-Mézières was examiner for‌ the PhD thesis of‌​‌ Ghislain Fievet (NGERE, Univ.​​ Lorraine, 20/11/2025).
  • U. Herbach​​​‌ was examiner for the‌ PhD thesis of Emrys‌​‌ Reginato (Univ. Grenoble Alpes,​​ 24/11/2025).
  • U. Herbach was​​​‌ examiner for the PhD‌ thesis of Gustavo Magaña‌​‌ Loópez (Univ. Bordeaux, 17/12/2025).​​
  • E. Strickler was referee​​​‌ for the PhD thesis‌ of Jérémy Colombo (Univ.‌​‌ Neuchâtel, 20/11/25).
  • D. Villemonais​​ was referee for the​​​‌ PhD thesis of Jules‌ Olayé (Ecole Polytechnique, Palaiseau,‌​‌ 04/07/2025)

9.3 Popularization

J.-M.​​ Monnez wrote lecture notes​​​‌ 38 on the interpretation‌ of canonical analysis of‌​‌ two random vectors as​​ a projected principal component​​​‌ analysis (PCA), an extended‌ Oja process for estimating‌​‌ eigenvectors and stochastic approximation​​ for streaming canonical correlation,​​​‌ factorial correspondence and factorial‌ discriminant analyses.

9.3.1 Specific‌​‌ official responsibilities in science​​ outreach structures

  • S. Ferrigno:​​​‌ Advisor of groups of‌ EEIGM students in the‌​‌ context of “La main​​ à la Pâte” projects​​​‌ and “CGénial” projects, at‌ middle schools Paul Verlaine‌​‌ in Malzéville and La​​ Craffe in Nancy, at​​​‌ Institut médico-éducatif (IME) in‌ Commercy and in elementary‌​‌ schools in Nancy.
  • S.​​ Ferrigno: Advisor of a​​​‌ group of EEIGM students,‌ “Ateliers expérimentaux : Mécanique‌​‌ et Statistique” project, in​​ various high schools in​​​‌ Nancy.

9.3.2 Participation in‌ Live events

  • J. Mardomingo‌​‌ Sanz and V. Brodu​​​‌ volunteered in the popularization​ event “Fête de la​‌ Science” in Univ. Lorraine​​ in October.

10 Scientific​​​‌ production

10.1 Major publications​

10.2 Publications of the​​ year

International journals

Conferences​ without proceedings

  • 23 inproceedings​‌M.Mathilde Gaillard and​​ U.Ulysse Herbach.​​​‌ Efficient Stochastic Simulation of​ Gene Regulatory Networks Using​‌ Hybrid Models of Transcriptional​​ Bursting.Computational Methods​​​‌ in Systems Biology15959​Lecture Notes in Computer​‌ ScienceLyon, FranceSpringer​​ Nature SwitzerlandAugust 2025​​​‌, 109-125HALDOI​back to textback​‌ to text

Doctoral dissertations​​ and habilitation theses

  • 24​​​‌ thesisV.Virgile Brodu​. Individual-based stochastic models​‌ with allometric dynamics :​​ branching, convergence, numerical simulations​​​‌.Université de Lorraine​August 2025HALback​‌ to text
  • 25 thesis​​C.Coralie Fritsch.​​​‌ Comportement asymptotique de modèles​ probabilistes pour la biologie​‌ : criticité de processus,​​ théorèmes limites, comportement quasi-stationnaire,​​​‌ approximation de modèles.​Université de LorraineDecember​‌ 2025HALback to​​ text

Reports & preprints​​​‌

Other scientific publications

Educational activities

10.3 Cited publications

  • 39​​​‌ bookC. D.Charalambos‌ D Aliprantis and O.‌​‌Owen Burkinshaw. Positive​​ operators.119Springer​​​‌ Science & Business Media‌2006back to text‌​‌
  • 40 articleD. F.​​David F. Anderson,​​​‌ A.Arnab Ganguly and‌ T. G.Thomas G.‌​‌ Kurtz. Error analysis​​ of tau-leap simulation methods​​​‌.Ann. Appl. Probab.‌2162011,‌​‌ 2226--2262URL: https://doi.org/10.1214/10-AAP756DOI​​back to text
  • 41​​​‌ unpublishedR.Romain Aza\"is‌, S.Sandie Ferrigno‌​‌ and M.-J.Marie-José Martinez​​. cvmgof: Cramer-von Mises​​​‌ goodness-of-fit tests.November‌ 2018, An R-package,‌​‌ available on the CRAN​​HALSoftware Heritageback​​​‌ to text
  • 42 unpublished‌B.Bérangère Bastien,‌​‌ T.Taha Boukhobza,​​ H.Hélène Dumond,​​​‌ A.Anne Gégout-Petit,‌ A.Aurélie Muller-Gueudin and‌​‌ C.Charlène Thiébaut.​​ A statistical methodology to​​​‌ select covariates in high-dimensional‌ data under dependence. Application‌​‌ to the classification of​​ genetic profiles in oncology​​​‌.September 2019,‌ https://arxiv.org/abs/1909.05481 - working paper‌​‌ or preprintHALback​​ to text
  • 43 article​​​‌M.Michel Bena\"im,‌ N.Nicolas Champagnat and‌​‌ D.Denis Villemonais.​​ Stochastic approximation of quasi-stationary​​​‌ distributions for diffusion processes‌ in a bounded domain‌​‌.Annales de l'Institut​​ Henri Poincaré, Probabilités et​​​‌ Statistiques5722021‌, 726 -- 739‌​‌URL: https://doi.org/10.1214/20-AIHP1093DOIback​​ to text
  • 44 article​​​‌M.Michel Benaim,‌ B.Bertrand Cloez and‌​‌ F.Fabien Panloup.​​ Stochastic approximation of quasi-stationary​​​‌ distributions on compact spaces‌ and applications.Ann.‌​‌ Appl. Probab.284​​2018, 2370--2416URL:​​​‌ https://doi.org/10.1214/17-AAP1360DOIback to‌ text
  • 45 articleM.‌​‌Michel Benaim, C.​​Claude Lobry, T.​​​‌Tewfik Sari and É.‌Édouard Strickler. When‌​‌ can a population spreading​​ across sink habitats persist?​​​‌Journal of Mathematical Biology‌8819January 2024‌​‌, 1-56HALDOI​​back to textback​​​‌ to text
  • 46 article‌A.Athanase Benetos and‌​‌ others. Short leukocyte​​​‌ telomere length precedes clinical​ expression of atherosclerosis: The​‌ blood-and-muscle model.Circulation​​ research1224Feb​​​‌ 2018, 616--623DOI​back to text
  • 47​‌ articleA.Arnaud Bonnaffoux​​, U.Ulysse Herbach​​​‌, A.Angélique Richard​, A.Anissa Guillemin​‌, S.Sandrine Gonin-Giraud​​, P.-A.Pierre-Alexis Gros​​​‌ and O.Olivier Gandrillon​. WASABI: a dynamic​‌ iterative framework for gene​​ regulatory network inference.​​​‌BMC Bioinformatics201​2019, 1--19back​‌ to text
  • 48 article​​F.Fabien Campillo and​​​‌ N.Nicolas Champagnat.​ Simulation and analysis of​‌ an individual-based model for​​ graph-structured plant dynamics.​​​‌Ecological Modelling2342012​, 93--105back to​‌ textback to text​​
  • 49 articleF.Fabien​​​‌ Campillo and C.Coralie​ Fritsch. Weak convergence​‌ of a mass-structured individual-based​​ model.Appl. Math.​​​‌ Optim.7212015​, 37--73URL: https://doi.org/10.1007/s00245-014-9271-3​‌DOIback to text​​back to text
  • 50​​​‌ articleH.Hervé Cardot​, P.Peggy Cénac​‌ and J.-M.Jean-Marie Monnez​​. A fast and​​​‌ recursive algorithm for clustering​ large datasets with k-medians​‌.Computational Statistics &​​ Data Analysis566​​​‌2012, 1434--1449back​ to textback to​‌ text
  • 51 inproceedingsP.​​Philippe Carmona. Asymptotic​​​‌ of the largest Floquet​ multiplier for cooperative matrices​‌.Annales de la​​ Faculté des sciences de​​​‌ Toulouse: Mathématiques314​2022, 1213--1221back​‌ to text
  • 52 article​​N.Nicolas Champagnat.​​​‌ A microscopic interpretation for​ adaptive dynamics trait substitution​‌ sequence models.Stoch.​​ Process. Appl.1168​​​‌2006, 1127--1160back​ to textback to​‌ text
  • 53 articleN.​​Nicolas Champagnat, R.​​​‌Régis Ferrière and S.​Sylvie Méléard. From​‌ individual stochastic processes to​​ macroscopic models in adaptive​​​‌ evolution.Stoch. Models​24suppl. 12008​‌, 2--44URL: http://dx.doi.org/10.1080/15326340802437710​​DOIback to text​​​‌
  • 54 articleN.Nicolas​ Champagnat, R.Régis​‌ Ferrière and S.Sylvie​​ Méléard. Unifying evolutionary​​​‌ dynamics: From individual stochastic​ processes to macroscopic evolution​‌.Theor. Pop. Biol.​​692006, 297--321​​​‌back to textback​ to text
  • 55 article​‌N.Nicolas Champagnat and​​ P.-E.Pierre-Emmanuel Jabin.​​​‌ The evolutionary limit for​ models of populations interacting​‌ competitively via several resources​​.J. Differential Equations​​​‌25112011,​ 176--195URL: https://doi.org/10.1016/j.jde.2011.03.007DOI​‌back to text
  • 56​​ articleN.Nicolas Champagnat​​​‌ and S.Sylvie Méléard​. Polymorphic evolution sequence​‌ and evolutionary branching.​​Probab. Theory Related Fields​​​‌1511-22011,​ 45--94URL: https://doi.org/10.1007/s00440-010-0292-9DOI​‌back to textback​​ to textback to​​​‌ text
  • 57 articleN.​Nicolas Champagnat, S.​‌Sylvie Méléard and V.​​ C.Viet Chi Tran​​​‌. Stochastic analysis of​ emergence of evolutionary cyclic​‌ behavior in population dynamics​​ with transfer.The​​​‌ Annals of Applied Probability​3142021,​‌ 1820--1867back to text​​
  • 58 articleN.Nicolas​​​‌ Champagnat and D.Denis​ Villemonais. Convergence of​‌ the Fleming-Viot process toward​​ the minimal quasi-stationary distribution​​​‌.ALEA - Latin​ American Journal of Probability​‌ and Mathematical Statisticsto​​ appear2019back to​​ text
  • 59 articleN.​​​‌Nicolas Champagnat and D.‌Denis Villemonais. Exponential‌​‌ convergence to quasi-stationary distribution​​ and Q-process.​​​‌Probab. Theory Related Fields‌1641-22016,‌​‌ 243--283URL: https://doi.org/10.1007/s00440-014-0611-7DOI​​back to textback​​​‌ to text
  • 60 article‌B.Bertrand Cloez and‌​‌ C.Coralie Fritsch.​​ Gaussian approximations for chemostat​​​‌ models in finite and‌ infinite dimensions.J.‌​‌ Math. Biol.754​​2017, 805--843URL:​​​‌ https://doi.org/10.1007/s00285-017-1097-6DOIback to‌ text
  • 61 inproceedingsA.‌​‌ M.Alexander MG Cox​​, E.Emma Horton​​​‌ and D.Denis Villemonais‌. Binary branching processes‌​‌ with Moran type interactions​​.Annales de l'Institut​​​‌ Henri Poincare (B) Probabilites‌ et statistiques612‌​‌Institut Henri Poincaré2025​​, 917--952back to​​​‌ text
  • 62 incollectionD.‌ A.Donald A. Dawson‌​‌. Measure-valued Markov processes​​.École d'Été de​​​‌ Probabilités de Saint-Flour XXI---1991‌1541Lecture Notes in‌​‌ Math.BerlinSpringer1993​​, 1--260back to​​​‌ text
  • 63 articleU.‌Ulf Dieckmann and R.‌​‌Richard Law. The​​ dynamical theory of coevolution:​​​‌ a derivation from stochastic‌ ecological processes.J.‌​‌ Math. Biol.345-6​​1996, 579--612back​​​‌ to text
  • 64 article‌O.Odo Diekmann,‌​‌ P.-E.Pierre-Emanuel Jabin,​​ S.Stéphane Mischler and​​​‌ B.Benoît Perthame.‌ The dynamics of adaptation:‌​‌ An illuminating example and​​ a Hamilton-Jacobi approach.​​​‌Theor. Pop. Biol.67‌2005, 257--271back‌​‌ to text
  • 65 article​​W.Weiwei Ding and​​​‌ T.Thomas Giletti.‌ Admissible speeds in spatially‌​‌ periodic bistable reaction-diffusion equations​​.Advances in Mathematics​​​‌3892021, 107889‌back to text
  • 66‌​‌ articleK.Kévin Duarte​​, J.-M.Jean-Marie Monnez​​​‌ and E.Eliane Albuisson‌. Sequential linear regression‌​‌ with online standardized data​​.Plos one13​​​‌12018, e0191186‌back to text
  • 67‌​‌ articleG. R.Gilles​​ R. Ducharme and S.​​​‌Sandie Ferrigno. An‌ omnibus test of goodness-of-fit‌​‌ for conditional distributions with​​ applications to regression models​​​‌.J. Statist. Plann.‌ Inference142102012‌​‌, 2748--2761URL: https://doi.org/10.1016/j.jspi.2012.04.008​​DOIback to text​​​‌
  • 68 articleS. N.‌S. N. Ethier and‌​‌ T. G.Thomas G.​​ Kurtz. Fleming-Viot processes​​​‌ in population genetics.‌SIAM J. Control Optim.‌​‌3121993,​​ 345--386back to text​​​‌
  • 69 unpublishedC.Coralie‌ Fritsch, M.Marie‌​‌ Grosdidier, A.Anne​​ Gégout-Petit and B.Benoit​​​‌ Marçais. Mechanistic-statistical model‌ for the expansion of‌​‌ ash dieback.September​​ 2024, working paper​​​‌ or preprintHALback‌ to text
  • 70 article‌​‌C.Coralie Fritsch,​​ J.Jérôme Harmand and​​​‌ F.Fabien Campillo.‌ A modeling approach of‌​‌ the chemostat.Ecological​​ Modelling2014back to​​​‌ text
  • 71 articleC.‌Coralie Fritsch, D.‌​‌Denis Villemonais and N.​​Nicolás Zalduendo. The​​​‌ Multi-type Bisexual Galton-Watson Branching‌ Process.Annales de‌​‌ l'Institut Henri Poincaré (B)​​ Probabilités et Statistiques60​​​‌42024, 2975-3008‌HALDOIback to‌​‌ text
  • 72 articleA.​​Anne Gégout-Petit, A.​​​‌Aurélie Gueudin-Muller and C.‌Clémence Karmann. The‌​‌ revisited knockoffs method for​​​‌ variable selection in L​ 1-penalized regressions.Communications​‌ in Statistics - Simulation​​ and Computation00​​​‌2020, 1-14URL:​ https://doi.org/10.1080/03610918.2020.1775850DOIback to​‌ text
  • 73 articleU.​​Ulysse Herbach, A.​​​‌Arnaud Bonnaffoux, T.​Thibault Espinasse and O.​‌Olivier Gandrillon. Inferring​​ gene regulatory networks from​​​‌ single-cell data: a mechanistic​ approach.BMC Syst.​‌ Biol.1112017​​back to textback​​​‌ to textback to​ text
  • 74 articleP.-E.​‌Pierre-Emmanuel Jabin. Small​​ populations corrections for selection-mutation​​​‌ models.Netw. Heterog.​ Media742012​‌, 805--836URL: https://doi.org/10.3934/nhm.2012.7.805​​DOIback to text​​​‌
  • 75 articleG.Guy​ Katriel. Dispersal-induced growth​‌ in a time-periodic environment​​.Journal of Mathematical​​​‌ Biology8532022​, 24back to​‌ text
  • 76 articleM.​​Michael Klann, A.​​​‌Arnab Ganguly and H.​Heinz Koeppl. Hybrid​‌ spatial Gillespie and particle​​ tracking simulation.Bioinformatics​​​‌28182012,​ i549--i555back to text​‌
  • 77 articleA.Alexey​​ Koshkin, U.Ulysse​​​‌ Herbach, M. R.​Mar\'ia Rodr\'iguez Mart\'inez,​‌ O.Olivier Gandrillon and​​ F.Fabien Crauste.​​​‌ Stochastic modeling of a​ gene regulatory network driving​‌ B cell development in​​ germinal centers.PLoS​​​‌ ONE193March​ 2024, e0301022HAL​‌DOIback to text​​
  • 78 articleB.Benoît​​​‌ Lalloué, J.-M.Jean-Marie​ Monnez and E.Eliane​‌ Albuisson. Streaming constrained​​ binary logistic regression with​​​‌ online standardized data.​Journal of Applied Statistics​‌In press2021HAL​​DOIback to text​​​‌
  • 79 articleA.Alexander​ Lorz, S.Sepideh​‌ Mirrahimi and B.Benoît​​ Perthame. Dirac mass​​​‌ dynamics in multidimensional nonlocal​ parabolic equations.Comm.​‌ Partial Differential Equations36​​62011, 1071--1098​​​‌URL: http://dx.doi.org/10.1080/03605302.2010.538784DOIback​ to text
  • 80 incollection​‌J. A.J. A.​​ J. Metz, S.​​​‌ A.S. A. H.​ Geritz, G.G.​‌ Meszéna, F. J.​​F. J. A. Jacobs​​​‌ and J. S.J.​ S. van Heerwaarden.​‌ Adaptive dynamics, a geometrical​​ study of the consequences​​​‌ of nearly faithful reproduction​.Stochastic and spatial​‌ structures of dynamical systems​​ (Amsterdam, 1995)Konink. Nederl.​​​‌ Akad. Wetensch. Verh. Afd.​ Natuurk. Eerste Reeks, 45​‌AmsterdamNorth-Holland1996,​​ 183--231back to text​​​‌
  • 81 articleS.Sepideh​ Mirrahimi, G.Guy​‌ Barles, B.Benoît​​ Perthame and P. E.​​​‌Panagiotis E. Souganidis.​ A singular Hamilton-Jacobi equation​‌ modeling the tail problem​​.SIAM J. Math.​​​‌ Anal.4462012​, 4297--4319URL: https://doi.org/10.1137/100819527​‌DOIback to text​​
  • 82 articleJ.-M.Jean-Marie​​​‌ Monnez. Approximation stochastique​ en analyse factorielle multiple​‌.Ann. I.S.U.P.50​​32006, 27--45​​​‌back to text
  • 83​ articleJ.-M.Jean-Marie Monnez​‌. Convergence d'un processus​​ d'approximation stochastique en analyse​​​‌ factorielle.Publ. Inst.​ Statist. Univ. Paris38​‌11994, 37--55​​back to text
  • 84​​​‌ unpublishedJ.-M.Jean-Marie Monnez​ and A.Abderrahman Skiredj​‌. Convergence of a​​ normed eigenvector stochastic approximation​​​‌ process and application to​ online principal component analysis​‌ of a data stream​​.May 2019,​​ working paper or preprint​​​‌HALback to text‌
  • 85 articleJ.-M.Jean-Marie‌​‌ Monnez. Stochastic approximation​​ of eigenvectors and eigenvalues​​​‌ of the Q-symmetric expectation‌ of a random matrix‌​‌.Communications in Statistics​​ - Theory and Methods​​​‌53515 pages‌2024, 1669-1683HAL‌​‌DOIback to text​​back to text
  • 86​​​‌ articleJ.-M.Jean-Marie Monnez‌. Stochastic approximation of‌​‌ the factors of a​​ generalized canonical correlation analysis​​​‌.Statist. Probab. Lett.‌78142008,‌​‌ 2210--2216URL: http://dx.doi.org/10.1016/j.spl.2008.01.088DOI​​back to text
  • 87​​​‌ articleB.Barbara Niethammer‌. On the evolution‌​‌ of large clusters in​​ the Becker-Döring model.​​​‌Journal of Nonlinear Science‌1312003,‌​‌ 115--122back to text​​
  • 88 articleB.Benoît​​​‌ Perthame and G.Guy‌ Barles. Dirac concentrations‌​‌ in Lotka-Volterra parabolic PDEs​​.Indiana Univ. Math.​​​‌ J.5772008‌, 3275--3301URL: http://dx.doi.org/10.1512/iumj.2008.57.3398‌​‌DOIback to text​​
  • 89 articleB.Benoît​​​‌ Perthame and M.Mathias‌ Gauduchon. Survival thresholds‌​‌ and mortality rates in​​ adaptive dynamics: conciliating deterministic​​​‌ and stochastic simulations.‌Math. Med. Biol.27‌​‌32010, 195--210​​URL: https://doi.org/10.1093/imammb/dqp018DOIback​​​‌ to text
  • 90 article‌A.Angélique Richard,‌​‌ L.Loïs Boullu,​​ U.Ulysse Herbach,​​​‌ A.Arnaud Bonnafoux,‌ V.Valérie Morin,‌​‌ E.Elodie Vallin,​​ A.Anissa Guillemin,​​​‌ N.Nan Papili Gao‌, R.Rudiyanto Gunawan‌​‌, J.Jérémie Cosette​​, O.Ophélie Arnaud​​​‌, J.-J.Jean-Jacques Kupiec‌, T.Thibault Espinasse‌​‌, S.Sandrine Gonin-Giraud​​ and O.Olivier Gandrillon​​​‌. Single-cell-based analysis highlights‌ a surge in cell-to-cell‌​‌ molecular variability preceding irreversible​​ commitment in a differentiation​​​‌ process.PLOS Biology‌14122016back‌​‌ to textback to​​ text
  • 91 articleD.​​​‌Denis Villemonais. Interacting‌ particle systems and Yaglom‌​‌ limit approximation of diffusions​​ with unbounded drift.​​​‌Electron. J. Probab.16‌2011, no. 61,‌​‌ 1663--1692URL: https://doi.org/10.1214/EJP.v16-925DOI​​back to text
  • 92​​​‌ articleD.D. Waxman‌ and S.S. Gavrilets‌​‌. 20 questions on​​ adaptive dynamics.J.​​​‌ Evol. Biol.182005‌, 1139--1154back to‌​‌ textback to text​​