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MUSCA - 2025

2025Activity reportProject-Team‌​‌MUSCA

RNSR: 202023600V
  • Research​​​‌ center Inria Saclay Centre​ at Université Paris-Saclay
  • In​‌ partnership with:CNRS, INRAE​​
  • Team name: MUltiSCAle population​​​‌ dynamics for physiological systems​
  • In collaboration with:Physiologie​‌ de la reproduction et​​ des comportements (PRC), Mathématiques​​​‌ et Informatique Appliquée du​ Génome à l'Environnement (MAIAGE)​‌

Creation of the Project-Team:​​ 2020 July 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

  • A3.4. Machine​ learning and statistics
  • A6.1.1.​‌ Continuous Modeling (PDE, ODE)​​
  • A6.1.2. Stochastic Modeling
  • A6.1.4.​​​‌ Multiscale modeling
  • A6.2.1. Numerical​ analysis of PDE and​‌ ODE
  • A6.2.3. Probabilistic methods​​
  • A6.3.1. Inverse problems
  • A6.3.4.​​​‌ Model reduction
  • A7.2. Logic​ in Computer Science
  • A7.3.1.​‌ Computational models and calculability​​
  • A8.1. Discrete mathematics, combinatorics​​​‌
  • A8.8. Network science
  • A8.9.​ Performance evaluation
  • A8.11. Game​‌ Theory

Other Research Topics​​ and Application Domains

  • B1.1.2.​​​‌ Molecular and cellular biology​
  • B1.1.3. Developmental biology
  • B1.1.7.​‌ Bioinformatics
  • B1.1.8. Mathematical biology​​
  • B1.1.10. Systems and synthetic​​​‌ biology
  • B2.2. Physiology and​ diseases
  • B2.3. Epidemiology
  • B3.4.​‌ Risks
  • B3.6. Ecology

1​​ Team members, visitors, external​​​‌ collaborators

Research Scientists

  • Frédérique​ Clément [Team leader​‌, INRIA, Senior​​ Researcher, HDR]​​​‌
  • Pascale Crépieux [CNRS​, Senior Researcher,​‌ HDR]
  • Stefan Haar​​ [INRIA, Senior​​​‌ Researcher, HDR]​
  • Frédéric Jean-Alphonse [CNRS​‌, Researcher, HDR​​]
  • Pawan Kumar [​​​‌INRIA, Starting Research​ Position]
  • Béatrice Laroche​‌ [INRAE, Senior​​ Researcher, HDR]​​​‌
  • Anne Poupon [CNRS​, Senior Researcher,​‌ CTO of Mabsilico half-time​​, HDR]
  • Eric​​​‌ Reiter [INRAE,​ Senior Researcher, HDR​‌]
  • Lorenzo Sala [​​INRAE, Researcher]​​​‌
  • Romain Yvinec [INRAE​, Senior Researcher,​‌ HDR]

Faculty Member​​

  • Chloé Audebert [Sorbonne​​​‌ Université, Associate Professor​]

Post-Doctoral Fellows

  • Léo​‌ Darrigade [INRIA,​​ Post-Doctoral Fellow, until​​​‌ Mar 2025]
  • Rosario​ Medina Rodriguez [INRIA​‌, Post-Doctoral Fellow]​​
  • Chiara Villa [INRIA​​, Post-Doctoral Fellow,​​​‌ from Feb 2025 until‌ Aug 2025]

PhD‌​‌ Students

  • Marlène Davilma [​​INRAE]
  • Alice Fohr​​​‌ [UNIV PARIS SACLAY‌]
  • Louis Fostier [‌​‌INRAE, until Oct​​ 2025]
  • Eleonora Pastremoli​​​‌ [INRAE]
  • Pamela‌ Ignacia Romero Jofre [‌​‌INRAE]
  • Chloé Weckel​​ [INRIA]

Administrative​​​‌ Assistants

  • Bahar Carabetta [‌INRIA, until Nov‌​‌ 2025]
  • Ekaterina George​​ [INRIA, from​​​‌ Dec 2025]

2‌ Overall objectives

MUSCA is‌​‌ intrinsically interdisciplinary and brings​​ together applied mathematicians and​​​‌ experimental biologists. We address‌ crucial questions arising from‌​‌ biological processes from a​​ mathematical perspective. Our main​​​‌ research line is grounded‌ on deterministic and stochastic‌​‌ population dynamics, in finite​​ or infinite dimension. We​​​‌ study open methodological issues‌ raised by the modeling,‌​‌ analysis and simulation of​​ multiscale in time and/or​​​‌ space dynamics in the‌ field of physiology, with‌​‌ a special focus on​​ developmental and reproductive biology,​​​‌ and digestive ecophysiology.

3‌ Research program

3.1 General‌​‌ scientific positioning

The formalism​​ at the heart of​​​‌ our research program is‌ that of structured population‌​‌ dynamics, both in a​​ deterministic and stochastic version.​​​‌ Such a formalism can‌ be used to design‌​‌ multiscale representations (say at​​ the meso and macro​​​‌ levels), possibly embedding two-way‌ (bottom-up and top-down) interactions‌​‌ from one level to​​ another. We intend to​​​‌ couple structured population dynamics‌ with dynamics operating on‌​‌ the microscopic level -typically​​ large biochemical networks (signaling,​​​‌ metabolism, gene expression)-, whose‌ outputs can be fed‌​‌ into the higher level​​ models (see section 3.4​​​‌). To do so,‌ model reduction approaches have‌​‌ to be designed and​​ implemented to properly formulate​​​‌ the “entry points” of‌ the micro dynamics into‌​‌ the meso/macro formalism (e.g.​​ formulation of velocity terms​​​‌ in transport equations, choice‌ of intensities for stochastic‌​‌ processes) and to enable​​ one to traceback as​​​‌ much as possible the‌ variables and parameters from‌​‌ one scale to another.​​ This approach is common​​​‌ to EPC MUSCA's two‌ main applications in reproductive/developmental‌​‌ biology on one side,​​ and microbiota/holobiont biology on​​​‌ the other side, while‌ being applied to different‌​‌ levels of living organisms.​​ Schematically, the meso level​​​‌ corresponds to the cells‌ of a multi-cellular organism‌​‌ in the former case,​​ and to the individual​​​‌ actors of a microbial‌ community for the latter‌​‌ case.

Our general multiscale​​ framework will be deployed​​​‌ on the study of‌ direct problems as well‌​‌ as inverse problems. In​​ some situations these studies​​​‌ will be accompanied with‌ a post-processing layer of‌​‌ experimental data, which may​​ be necessary to make​​​‌ the observations compatible with‌ the model state variables,‌​‌ and will be based​​ on dedicated statistical tools.​​​‌ Even if our approach‌ may use classical modeling‌​‌ bricks, it is worth​​ highlighting that the design​​​‌ of de novo models,‌ specifically suited for addressing‌​‌ dedicated physiological questions, is​​ a central part of​​​‌ our activity. Due to‌ their intrinsic multiscale nature‌​‌ (in time and/or space),​​ infinite dimensional formulation (PDE​​​‌ and/or measure-valued stochastic processes)‌ and nonlinear interactions (across‌​‌ scales), such models raise​​​‌ most of the time​ open questions as far​‌ as their mathematical analysis,​​ numerical simulation, and/or parameter​​​‌ calibration. We intend to​ cope with the resulting​‌ methodological issues, possibly in​​ collaboration with external experts​​​‌ when needed to tackle​ open questions.

3.2 Design,​‌ analysis and reduction of​​ network-based dynamic models

We​​​‌ will deal with models​ representing dynamic networks, whether​‌ in a biochemical or​​ ecological context. The mathematical​​​‌ formulation of these models​ involve Ordinary Differential Equations​‌ (ODE), Piecewise Deterministic Markov​​ Processes (PDMP), or Continuous​​​‌ Time Markov Chains (CTMC).​ A prototypical example is​‌ the (mass-action) Chemical Reaction​​ Network (CRN) 78,​​​‌ defined by a set​ of d species and​‌ a directed graph ℛ​​ on a finite set​​​‌ of stoichiometric vectors {​yd​‌} (the linear combination​​ of reactant and product​​​‌ species). A subclass of​ CRN corresponds to a​‌ standard interaction network model​​ in ecology, the generalized​​​‌ Lotka-Volterra (gLV) model, that​ lately raised a lot​‌ of interest in the​​ analysis of complex microbial​​​‌ communities 100, 72​. The model describes​‌ the dynamics of interacting​​ (microbial) species through an​​​‌ intrinsic d-dimensional growth​ rate vector μ and​‌ a directed weighted interaction​​ graph given by its​​​‌ d×d matrix​ A. The stochastic​‌ versions of these models​​ correspond respectively to a​​​‌ Continuous Time Markov Chain​ (CTMC) in the discrete​‌ state-space d,​​ and a birth-death jump​​​‌ process. This general class​ of models is relatively​‌ standard in biomathematics 78​​, 71, yet​​​‌ their theoretical analysis can​ be challenging due to​‌ the need to consider​​ high dimensional models for​​​‌ realistic applications. The curse​ of dimensionality (state space​‌ dimension and number of​​ unknown parameters) makes also​​​‌ very challenging the development​ of efficient statistical inference​‌ strategies.

Most of EPC​​ MUSCA's models based on​​​‌ CRNs deal with (unstructured)​ population dynamics (complex microbial​‌ communities, neutral models in​​ ecology, cell dynamics in​​​‌ developmental processes, macromolecule assemblies),​ biochemical kinetics and chemical​‌ reaction networks (signaling, gene,​​ and metabolic networks), coagulation-fragmentation​​​‌ models (in particular Becker-Döring​ model). Notwithstanding the diversity​‌ of our modeling applications,​​ we have to face​​​‌ common methodological issues to​ study such models, ranging​‌ from the theoretical analysis​​ of model behavior to​​​‌ parameter inference.

Network behavior​

In the case of​‌ autonomous systems (with no​​ explicit dependency on time),​​​‌ the main theoretical challenge​ is the prediction of​‌ the long time dynamics,​​ given the algebraic complexity​​​‌ associated with putative stationary​ states in high dimension.​‌ In physiological systems, the​​ intracellular reaction networks are​​​‌ not under a static​ or constant input stimulation​‌ but rather subject to​​ complex and highly dynamic​​​‌ signals such as (neuro-)hormones​ 27 or metabolites. These​‌ systems are thus non-autonomous​​ in nature. Understanding to​​​‌ what extent reaction network​ motifs are able to​‌ encode or decode the​​ dynamic properties of a​​​‌ time-dependent signal is a​ particularly challenging theoretical question,​‌ which has yet been​​ scarcely addressed, either in​​​‌ simplified case-studies 94,​14 or in the​‌ framework of “pulse-modulated systems”​​ 75.

Network reduction​​

The high dimension of​​​‌ realistic networks calls for‌ methods enabling to perform‌​‌ model reduction. Our strategy​​ for model reduction combines​​​‌ several tools, that can‌ be applied separately or‌​‌ sequentially to the initial​​ model. Both in stochastic​​​‌ biochemical systems and population‌ dynamics, large species abundance‌​‌ calls in general for​​ the functional law of​​​‌ large number and central‌ limit theorems, for which‌​‌ powerful results are now​​ established in standard settings​​​‌ of finite dimension models‌ 83. However, in‌​‌ more and more biological​​ applications, the very large​​​‌ spectrum of orders of‌ magnitude in reaction rates‌​‌ (or birth and death​​ rates) leads naturally to​​​‌ consider simultaneously large species‌ abundance with timescale separation,‌​‌ which generally results in​​ either algebraic-differential reduced models,​​​‌ or to hybrid reduced‌ models with both deterministic‌​‌ and stochastic dynamics. We​​ will apply the generic​​​‌ methodology provided by the‌ singular perturbation theory of‌​‌ Fenichel-Tikhonov in deterministic systems,​​ and Kurtz's averaging results​​​‌ in stochastic systems, which,‌ in the context of‌​‌ high dimensional reaction networks​​ or population dynamics, are​​​‌ still the matter of‌ active research both in‌​‌ the deterministic 84,​​ 76 and stochastic context​​​‌ 65, 82,‌ 93.

Other reduction‌​‌ approaches of deterministic systems​​ will consist in combining​​​‌ regular perturbation expansion with‌ standard linear model order‌​‌ reduction (MOR) techniques. We​​ will continue our previous​​​‌ work 18, 17‌ on the derivation of‌​‌ convergence and truncation error​​ bounds for the regular​​​‌ perturbation series expansion (also‌ known as Volterra series‌​‌ expansion) of trajectories of​​ a wide class of​​​‌ weakly nonlinear systems, in‌ the neighborhood of stable‌​‌ hyperbolic equilibria. The challenge​​ will be to obtain​​​‌ biologically interpretable reduced models‌ with appropriate features such‌​‌ as for instance positivity​​ and stability. Finding a​​​‌ general approach for the‌ reduction of strongly nonlinear‌​‌ systems is still an​​ open question, yet it​​​‌ is sometimes possible to‌ propose ad-hoc reduced models‌​‌ in specific cases, using​​ graph-based decomposition of the​​​‌ model 97, combined‌ with the reduction of‌​‌ weakly nonlinear subsystems.

Bridging​​ the gap between discrete​​​‌ and continuous networks through‌ most permissive semantics

Since‌​‌ their introduction in the​​ late 1960s, state- and​​​‌ time-discrete frameworks such as‌ Thomas Networks and Boolean‌​‌ Networks (BNs), which belong​​ to the subclass of​​​‌ logical models with only‌ two values possible in‌​‌ any variable, have been​​ widely adopted for reasoning​​​‌ about signaling and gene‌ networks, as they require‌​‌ few parameters and can​​ easily integrate information from​​​‌ omics datasets and genetic‌ screens. Two-way translations from‌​‌ BNs to discrete Petri​​ nets (PNs) allow one​​​‌ to transfer both theoretical‌ results and efficient algorithms‌​‌ from one model class​​ to the other (see​​​‌ 6) ; we‌ therefore regard BNs and‌​‌ discrete PNs as one​​ class, which we call​​​‌ discrete models. These‌ models represent processes with‌​‌ a high degree of​​ generalization and can offer​​​‌ coarse-grained but robust predictions.‌ That makes them particularly‌​‌ suitable for large biological​​ networks, for which ample​​​‌ global knowledge exists about‌ potential interactions with little‌​‌ precise data on actual​​​‌ molecules abundances and reaction​ kinetics. In this way,​‌ discrete models provide one​​ with an approach orthogonal​​​‌ to that enabled by​ continuous deterministic dynamics (via​‌ differential equations). In fact,​​ whereas deterministic models reflect​​​‌ in a very fine​ way the spatio-temporal dynamics​‌ in chemical reactions and​​ biological networks, the reliability​​​‌ of their predictions strongly​ depends on the precision​‌ of the knowledge concerning​​ existence and strength of​​​‌ interactions, and of precise​ measurements of all parameters,​‌ initial conditions and external​​ influences; perturbations in either​​​‌ domain are hard to​ apprehend, and their impact​‌ very difficult to predict.​​ Typically, such models are​​​‌ useful for conducting campaigns​ of large numbers of​‌ simulations with varying parameters,​​ giving a panorama of​​​‌ some possible types of​ system evolution. Obviously, there​‌ remains an irreducible coverage​​ problem: do the​​​‌ simulations we performed capture​ all the evolutions that​‌ the wild system could​​ have undergone?

By contrast,​​​‌ discrete models are fundamentally​ non-deterministic in their behavior,​‌ allowing one to extract​​ at moderate computational cost​​​‌ a complete, possibilistic overview​ of any evolution the​‌ system may take (see​​ 15, 5,​​​‌ 24). Some of​ these evolutions may be​‌ actually ruled out by​​ intrinsic quantitative features; discrete​​​‌ models thus may predict​ as possible some behaviors​‌ that will not actually​​ occur. It has long​​​‌ been believed that discrete​ models systematically over-approximate the​‌ system evolution. Our previous​​ work on the most​​​‌ permissive semantics7,​ 22 has shown that​‌ this is the case​​ if, but also only​​​‌ if, the semantics of​ the discrete system is​‌ sufficiently enriched (by one​​ additional, intermediate state PLUS​​​‌ the liberty, for every​ function, to read this​‌ ambiguous value as either​​ 0 or 1). Integrating​​​‌ into a new execution​ paradigm, called Most Permissive​‌ Boolean Networks (MPBNs), one​​ can therefore ensure that​​​‌ a carefully crafted discrete​ model predicts at least​‌ the actual possible behaviors​​ of the system. Moreover,​​​‌ MPBNs significantly reduce the​ complexity of dynamical analysis​‌ (e.g. reachability verification can​​ be done in linear​​​‌ time), enabling one to​ model genome-scale networks. A​‌ recent line of research​​ in MUSCA studies the​​​‌ dynamics of continuous Petri​ nets (CPNs). These​‌ models differ from their​​ discrete counterparts in the​​​‌ facts that transitions may​ be enabled with real​‌ rather than integer enabling​​ degrees, and may fire​​​‌ with any fraction of​ their enabling degree, leading​‌ to a continuous state​​ space. A crucial tool​​​‌ is to use abstract​ and symbolic semantics, in​‌ which state classes lump​​ together all continuous states​​​‌ that have the same​ activity, that is,​‌ the same set of​​ transitions that are eventually​​​‌ firable in some sequence​ initiated in those states.​‌ While being of great​​ interest in its own​​​‌ right, this allows one​ to capture the long-run​‌ behavior efficiently. The particularly​​ helpful mathematical properties of​​​‌ CPN allow for very​ efficient verification of reachability​‌ and limit-reachability; all attractors​​ are leaves, and vice​​​‌ versa. Emerging research directions​ are followed in MUSCA​‌ to (i) efficiently explore​​ the dynamics of biological​​ networks ; (ii) further​​​‌ study the relationships between‌ CPN, MPBN and related‌​‌ models; (iii) investigate the​​ passageways between discrete and​​​‌ continuous stochastic system models‌ ; and develop attractor‌​‌ search and reprogramming algorithms.​​

Statistical Inference, Data-fitting

Once​​​‌ again, a key challenge‌ in parameter estimation is‌​‌ due to the high​​ dimension of the state​​​‌ space and/or parameter space.‌ We will develop several‌​‌ strategies to face this​​ challenge. Efficient Maximum likelihood​​​‌ or pseudo-likelihood methods will‌ be developed and put‌​‌ in practice 1611​​, using either existing​​​‌ state-of-the art deterministic derivative-based‌ optimization 98 or global‌​‌ stochastic optimization 73.​​ In any case, we​​​‌ pay particular attention to‌ model predictivity (quantification of‌​‌ the model ability to​​ reproduce experimental data that​​​‌ were not used for‌ the model calibration) and‌​‌ parameter identifiability (statistical assessment​​ of the uncertainty on​​​‌ parameter values). A particularly‌ challenging and stimulating research‌​‌ direction of interest concerning​​ both model reduction and​​​‌ statistical inference is given‌ by identifiability and inference-based‌​‌ model reduction 86.​​ Another strategy for parameter​​​‌ inference in complex, nonlinear‌ models with fully observed‌​‌ state, but scarce and​​ noisy observations, is to​​​‌ couple curve clustering, which‌ allows reducing the system‌​‌ state dimension, with robust​​ network structure and parameter​​​‌ estimation. We are currently‌ investigating this option, by‌​‌ combining curve clustering 80​​ based on similarity criteria​​​‌ adapted to the problem‌ under consideration, and an‌​‌ original inference method inspired​​ by the Generalized Smoothing​​​‌ (GS) method proposed in‌ 96, which we‌​‌ call Modified Generalized Smoothing​​ (MGS). MGS is performed​​​‌ using a penalized criterion,‌ where the log-likelihood of‌​‌ the measurement error (noisy​​ data) is penalized by​​​‌ a model error for‌ which no statistical model‌​‌ is given. Moreover, the​​ system state is projected​​​‌ onto a functional basis‌ (we mainly use spline‌​‌ basis), and the inference​​ simultaneously estimates the model​​​‌ parameters and the spline‌ coefficients.

3.3 Design, analysis‌​‌ and simulation of stochastic​​ and deterministic models for​​​‌ structured populations

The mathematical‌ formulation of structured population‌​‌ models involves Partial Differential​​ Equation (PDE) and measure-valued​​​‌ stochastic processes (sometimes referred‌ as Individual-Based Models–IBM). A‌​‌ typical deterministic instance is​​ the McKendrick-Von Foerster model,​​​‌ a paragon of (nonlinear)‌ conservation laws. Such a‌​‌ formalism rules the changes​​ in a population density​​​‌ structured in time and‌ (possibly abstract) space variable(s).‌​‌ The transport velocity represents​​ the time evolution of​​​‌ the structured variable for‌ each “individual” in the‌​‌ population, and might depend​​ on the whole population​​​‌ (or a part of‌ it) in the case‌​‌ of nonlinear interactions (for​​ instance by introducing nonlocal​​​‌ terms through moment integrals‌ or convolutions). The source‌​‌ term models the demographic​​ evolution of the population,​​​‌ controlled by birth or‌ death events. One originality‌​‌ of our multiscale approach​​ is that the formulation​​​‌ of velocities and/or source‌ terms may arise, directly‌​‌ or indirectly, from an​​ underlying finite-dimension model as​​​‌ presented in section 3.2‌. According to the‌​‌ nature of the structuring​​ variable, diffusion operators may​​​‌ arise and lead to‌ consider second-order parabolic PDEs.‌​‌ For finite population dynamics,​​​‌ the stochastic version of​ these models can be​‌ represented using the formalism​​ of Poisson Measure-driven stochastic​​​‌ differential equations.

From the​ modeling viewpoint, the first​‌ challenge to be faced​​ with this class of​​​‌ models yields in the​ model formulation itself. Obtaining​‌ a well-posed and mathematically​​ tractable formulation, that yet​​​‌ faithfully accounts for the​ “behavioral law” underlying the​‌ multiscale dynamics, is not​​ an obvious task.

On​​​‌ one side, stochastic models​ are suited for situations​‌ where relatively few individuals​​ are involved, and they​​​‌ are often easier to​ formulate intuitively. On the​‌ other side, the theoretical​​ analysis of deterministic models​​​‌ is generally more tractable,​ and provides one with​‌ more immediate insight into​​ the population behavior. Hence,​​​‌ the ideal situation is​ when one can benefit​‌ from both the representation​​ richness allowed by stochastic​​​‌ models and the power​ of analysis applicable to​‌ their deterministic counterparts. Such​​ a situation is actually​​​‌ quite rare, due to​ the technical difficulties associated​‌ with obtaining the deterministic​​ limit (except in some​​​‌ linear or weakly nonlinear​ cases), hence compromises have​‌ to be found. The​​ mathematical framework exposed above​​​‌ is directly amenable to​ multiscale modeling. As such,​‌ it is central to​​ the biomathematical bases of​​​‌ MUSCA and transverse to​ its biological pillars. We​‌ develop and/or analyze models​​ for structured cell population​​​‌ dynamics involved in developmental​ or tissue-homeostasis processes, structured​‌ microbial populations involved in​​ eco-physiological systems and molecule​​​‌ assemblies.

As in the​ case of finite dimension​‌ models, the study of​​ these various models involve​​​‌ common methodological issues.

Model​ behavior

The theoretical challenges​‌ associated with the analysis​​ of structured population models​​​‌ are numerous, due to​ the lack of a​‌ unified methodological framework. The​​ analysis of the well-posedness​​​‌ 25 and long-time behavior​ 10, and the​‌ design of appropriate numerical​​ schemes 1, 3​​​‌ often rely on more​ or less generic techniques​‌ 92, 88 that​​ we need to adapt​​​‌ in a case-by-case, model-dependent​ way: general relative entropy​‌ 89, 70,​​ measure solution framework 81​​​‌, 66, 74​, martingale techniques 67​‌, finite-volume numerical schemes​​ 85, just to​​​‌ name a few.

Due​ to their strong biological​‌ anchorage, the formulation of​​ our models often leads​​​‌ to new mathematical objects,​ which raises open mathematical​‌ questions. Specific difficulties generally​​ arise, for instance from​​​‌ the introduction of nonlocal​ terms at an “unusual​‌ place” (namely in the​​ velocities rather than boundary​​​‌ conditions 25), or​ the formulation of particularly​‌ tricky boundary conditions 12​​. When needed, we​​​‌ call to external collaborators​ to try to overcome​‌ these difficulties.

Model reduction​​

Even if the use​​​‌ of a structured population​ formalism leads to models​‌ that can be considered​​ as compact, compared to​​​‌ the high-dimensional ODE systems​ introduced in section 3.2​‌, it can be​​ useful to derive reduced​​​‌ versions of the models,​ for sake of computational​‌ costs, and also and​​ above all, for parameter​​​‌ calibration purposes.

To proceed​ to such a reduction,​‌ we intend to combine​​ several techniques, including moment​​ equations 91, dimensional​​​‌ reduction 9, timescale‌ reduction 4, spatial‌​‌ homogenization 6313,​​ discrete to continuous reduction​​​‌ 12 and stochastic to‌ deterministic limit theorems 19‌​‌.

Once again, all​​ these techniques need to​​​‌ be applied on a‌ case-by-case basis, and they‌​‌ should be handled carefully​​ to obtain rigorous results​​​‌ (appropriate choice of metric‌ topology, a priori estimates).‌​‌

Statistical inference, Data-fitting

The​​ calibration of structured population​​​‌ models is challenging, due‌ to both the infinite-dimensional‌​‌ setting and the difficulty​​ to obtain rich enough​​​‌ data in our application‌ domains. Our strategy is‌​‌ rather empirical. We proceed​​ to a sequence of​​​‌ preliminary studies before using‌ the experimental available data.‌​‌ Sensitivity analyses 79,​​ 69, and theoretical​​​‌ studies of the inverse‌ problems associated with the‌​‌ models 8 intend to​​ preclude unidentifiable situations and​​​‌ ill-posed optimization problems. The‌ generation and use of‌​‌ synthetic data (possibly noised​​ simulation outputs) allow us​​​‌ to test the efficiency‌ of optimization algorithms and‌​‌ to delimit an initial​​ guess for the parameters.​​​‌ When reduced or simplified‌ versions of the models‌​‌ are available (or derived​​ specifically for calibration purposes)​​​‌ 2, these steps‌ are implemented on the‌​‌ increasingly complex versions of​​ the model. In situations​​​‌ where PDEs are or‌ can be interpreted as‌​‌ limits of stochastic processes,​​ it is sometimes possible​​​‌ to estimate parameters on‌ the stochastic process trajectories,‌​‌ or to switch from​​ one formalism to the​​​‌ other.

3.4 Coupling biochemical‌ networks with cell and‌​‌ population dynamics

A major​​ challenge for multiscale systems​​​‌ biology is to rigorously‌ couple intracellular biochemical networks‌​‌ with physiological models (tissue​​ and organic functions) 95​​​‌, 64, 99‌, 87. Meeting‌​‌ this challenge requires reconciling​​ very different mathematical formalisms​​​‌ and integrating heterogeneous biological‌ knowledge in order to‌​‌ represent in a common​​ framework biological processes described​​​‌ on very contrasting spatial‌ and temporal scales. On‌​‌ a generic ground, there​​ are numerous methodological challenges​​​‌ associated with this issue‌ (such as model or‌​‌ graph reduction, theoretical and​​ computational connection between different​​​‌ modeling formalisms, integration of‌ heterogenous data, or exploration‌​‌ of the whole parameter​​ space), which are far​​​‌ from being overcome at‌ the moment.

Our strategy‌​‌ is not to face​​ frontally these bottlenecks, but​​​‌ rather to investigate in‌ parallel the two facets‌​‌ of the question, through​​ (i) the modeling of​​​‌ the topology and dynamics‌ of infra-individual networks or‌​‌ dynamics, accounting for individual​​ variability and local spatialization​​​‌ or compartmentalization at the‌ individual level, as encountered‌​‌ for instance in cell​​ signaling; and (ii) the​​​‌ stochastic and/or deterministic multiscale‌ modeling of populations, establishing‌​‌ rigorous link between the​​ individual and population levels.​​​‌ To bridge the gap,‌ the key point is‌​‌ to understand how intracellular​​ (resp. infra-individual) networks produce​​​‌ outputs which can then‌ be fed up in‌​‌ a multicellular (resp. microbial​​ population) framework, in the​​​‌ formulation of terms entering‌ the multiscale master equations.‌​‌ A typical example of​​ such outputs in individual​​​‌ cell modeling is the‌ translation of different (hormonal‌​‌ or metabolic) signaling cues​​​‌ into biological outcomes (such​ as proliferation, differentiation, apoptosis,​‌ or migration). In turn,​​ the dynamics emerging on​​​‌ the whole cell population​ level feedback onto the​‌ individual cell level by​​ tuning the signal inputs​​​‌ qualitatively and quantitatively.

4​ Application domains

The multiscale​‌ modeling approach described in​​ section 3 is deployed​​​‌ on biological questions arising​ from developmental and reproductive​‌ biology, as well as​​ digestive ecophysiology.

Our main​​​‌ developmental and reproductive thematics​ are related to gametogenesis,​‌ and gonad differentiation and​​ physiology. In females, the​​​‌ gametogenic process of oogenesis​ (production and maturation of​‌ egg cells) is intrinsically​​ coupled with the growth​​​‌ and development of somatic​ structures called ovarian follicles.​‌ Ovarian folliculogenesis is a​​ long-lasting developmental and reproductive​​​‌ process characterized by well​ documented anatomical and functional​‌ stages. The proper morphogenesis​​ sequence, as well as​​​‌ the transit times from​ one stage to another,​‌ are finely tuned by​​ signaling cues emanating from​​​‌ the ovaries (especially during​ early folliculogenesis) and from​‌ the hypothalamo-pituitary axis (especially​​ during late folliculogenesis). The​​​‌ ovarian follicles themselves are​ involved in either the​‌ production or regulation of​​ these signals, so that​​​‌ follicle development is controlled​ by direct or indirect​‌ interactions within the follicle​​ population. We have been​​​‌ having a longstanding interest​ in the multiscale modeling​‌ of follicle development, which​​ we have tackled from​​​‌ a “middle-out”, cell dynamics-based​ viewpoint 2, completed​‌ progressively with morphogenesis processes​​ 21.

On the​​​‌ intracellular level, we are​ interested in understanding the​‌ endocrine dialogue within the​​ hypothalamo-pituitary-gonadal (HPG) axis controling​​​‌ the ovarian function. In​ multicellular organisms, communication between​‌ cells is critical to​​ ensure the proper coordination​​​‌ needed for each physiological​ function. Cells of glandular​‌ organs are able to​​ secrete hormones, which are​​​‌ messengers conveying information through​ circulatory systems to specific,​‌ possibly remote target cells​​ endowed with the proper​​​‌ decoders (hormone receptors). We​ have settled a systems​‌ biology approach combining experimental​​ and computational studies, to​​​‌ study signaling networks, and​ especially GPCR (G Protein-Coupled​‌ Receptor) signaling networks 16​​. In the HPG​​​‌ axis, we focus on​ the pituitary hormones FSH​‌ (Follicle-Stimulating Hormone) and LH​​ (Luteinizing Hormone) – also​​​‌ called gonadotropins-, which support​ the double, gametogenic and​‌ endocrine functions of the​​ gonads (testes and ovaries).​​​‌ FSH and LH signal​ onto gonadal cells through​‌ GPCRs, FSH-R and LH-R,​​ anchored in the membrane​​​‌ of their target cells,​ and trigger intracellular biochemical​‌ cascades tuning the cell​​ enzymatic activity, and ultimately​​​‌ controlling gene expression and​ mRNA translation. Any of​‌ these steps can be​​ targeted by pharmacological agents,​​​‌ so that the mechanistic​ understanding of signaling networks​‌ is useful for new​​ drug development.

Our main​​​‌ thematics in digestive ecophysiology​ are related to the​‌ interactions between the host​​ and its microbiota. The​​​‌ gut microbiota, mainly located​ in the colon, is​‌ engaged in a complex​​ dialogue with the large​​​‌ intestinal epithelium of its​ host, through which important​‌ regulatory processes for the​​ host's health and well-being​​​‌ take place. Through successive​ projects, we have developed​‌ an integrative model of​​ the gut microbiota at​​ the organ scale, based​​​‌ on the explicit coupling‌ of a population dynamics‌​‌ model of microbial populations​​ involved in fiber degradation​​​‌ with a fluid dynamics‌ model of the luminal‌​‌ content. This modeling framework​​ accounts for the main​​​‌ drivers of the spatial‌ structure of the microbiota,‌​‌ specially focusing on the​​ dietary fiber flow, the​​​‌ epithelial motility, the microbial‌ active swimming and viscosity‌​‌ gradients in the digestive​​ track 20.

Beyond​​​‌ its scientific interest, the‌ ambitious objective of understanding‌​‌ mechanistically the multiscale functioning​​ of physiological systems could​​​‌ also help on the‌ long term to take‌​‌ up societal challenges.

In​​ digestive ecophysiology, microbial communities​​​‌ are fundamental for human‌ and animal wellbeing and‌​‌ ecologic equilibrium. In the​​ gut, robust interactions generate​​​‌ a barrier against pathogens‌ and equilibrated microbiota are‌​‌ crucial for immune balance.​​ Imbalances in the gut​​​‌ microbial populations are associated‌ with chronic inflammation and‌​‌ diseases such as inflammatory​​ bowel disease or obesity.​​​‌ Emergent properties of the‌ interaction network are likely‌​‌ determinant drivers for health​​ and microbiome equilibrium. To​​​‌ use the microbiota as‌ a control lever, we‌​‌ require causal multiscale models​​ to understand how microbial​​​‌ interactions translate into productive,‌ healthy dynamics 26.‌​‌

In reproductive physiology, there​​ is currently a spectacular​​​‌ revival of experimental investigations‌ (see e.g. 90,‌​‌ 101), which are​​ driven by the major​​​‌ societal challenges associated with‌ maintaining the reproductive capital‌​‌ of individuals, and especially​​ female individuals, whether in​​​‌ a clinical (early ovarian‌ failure of idiopathic or‌​‌ iatrogenic origin in connection​​ with anticancer drugs in​​​‌ young adults and children),‌ breeding (recovery of reproductive‌​‌ longevity and dissemination of​​ genetic progress by the​​​‌ female route), or ecological‌ (conservation of germinal or‌​‌ somatic tissues of endangered​​ species or strains) context.​​​‌ Understanding the intricate (possibly‌ long range and long‌​‌ term) interactions brought to​​ play between the main​​​‌ cell types involved in‌ the gonadal function (germ‌​‌ cells, somatic cells in​​ the gonads, pituitary gland​​​‌ and hypothalamus) also requires‌ a multiscale modeling approach.‌​‌

5 Social and environmental​​ responsibility

5.1 Impact of​​​‌ research results

Given our‌ positioning in comparative physiology,‌​‌ future outcomes of MUSCA's​​ basic research can be​​​‌ expected in the fields‌ of Medicine, Agronomy (breeding)‌​‌ and Ecophysiology, in a​​ One Health logic. For​​​‌ instance, a deep understanding‌ of female gametogenesis can‌​‌ be instrumental for the​​ clinical management of ovarian​​​‌ aging, the development of‌ sustainable breeding practices, and‌​‌ the monitoring of micro-pollutant​​ effects on wild species​​​‌ (typically on fish populations).‌ These issues will be‌​‌ especially investigated in the​​ framework of the OVOPAUSE​​​‌ project and they are‌ also implemented as part‌​‌ of our collaboration with​​ INERIS (GinFiz project). In​​​‌ the same spirit, we‌ intend to design methodological‌​‌ and sofware tools for​​ the model-assisted validation of​​​‌ alternatives to hormone use‌ in reproduction control (ovarian‌​‌ stimulation, contraception). This line​​ is driven by the​​​‌ Contrabody project, which has‌ stimulated associated actions such‌​‌ as that dedicated to​​ the automatic assessment of​​​‌ the reproductive status from‌ ovary imaging. In the‌​‌ same spirit, our mechanistic​​​‌ view of the interactions​ between the host and​‌ gut microbiota leads to​​ new approaches of the​​​‌ antibioresistance phenomenon, which is​ the topic of the​‌ PARTHAGE project. Finally, our​​ systems biology and computational​​​‌ biology approaches dedicated to​ cell signaling and structural​‌ biology clearly target pharmacological​​ design and screening, and,​​​‌ on the long term,​ have the potential to​‌ accelerate and improve drug​​ discovery in the field​​​‌ of reproduction and beyond.​ Such approaches have proven​‌ particularly fruitful with the​​ MabSilico start-up (a spin-off​​​‌ of the BIOS group),​ which continues to interact​‌ with BIOS and MUSCA​​ on antibody-related projects. Globally,​​​‌ such modeling approaches can​ also help to develop​‌ alternatives to animal experimentation​​ and benefit to the​​​‌ 3R (Replacement, Reduction and​ Refinement) strategy, through for​‌ instance design of unified​​ and dynamic frameworks, reuse​​​‌ of data, prediction of​ hidden variables, in silico​‌ experiments, and experimental design.​​

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

6.1​ Latest software developments

6.1.1​‌ pyDynPeak

  • Keywords:
    Data processing,​​ Endocrinology
  • Scientific Description:
    Analysis​​​‌ of time series taking​ into account the inherent​‌ properties of secretion events​​ (form and pulse half-life,​​​‌ regularity of changes in​ rhythm)
  • Functional Description:
    Detection​‌ of LH pulses (luteinizing​​ hormone) and analysis of​​​‌ their rhythm. Visualisation, diagnostic​ and interactive correction of​‌ the detections.
  • URL:
  • Contact:
    Frédérique Clément

7​​​‌ New results

7.1 Mathematical​ analysis of nonlinear deterministic​‌ models

7.1.1 Bifurcation analysis​​ for gene regulatory networks​​​‌ embedding a toggle-switch model:​ Application to X chromosome​‌ inactivation

Participants: Frédérique Clément​​, Alice Fohr,​​​‌ Hélène Leman.

We​ have analyzed models of​‌ minimal gene regulatory networks​​ (GRN) introduced in the​​​‌ context of X chromosome​ inactivation (XCI), an epigenetic​‌ process occurring in placental​​ female mammals 68.​​​‌ A core module in​ these GRNs is a​‌ 2D toggle-switch (TS) model​​ resulting from a mutual​​​‌ inhibition. We have first​ performed a bifurcation analysis​‌ of the TS model,​​ where the main difficulty​​​‌ arises from the unknown​ coordinates of the fixed​‌ points. In the symmetric​​ case, we have proven​​​‌ the occurrence of a​ pitchfork bifurcation, and computed​‌ explicitly the bifurcation lines.​​ In the asymmetric case,​​​‌ we have designed a​ constructive numerical approach providing​‌ one simultaneously with the​​ bifurcation lines and fixed-point​​​‌ coordinates, and illustrated the​ occurrence of a saddle-node​‌ bifurcation using numerical continuation​​ tools. Bistability in the​​​‌ TS accounts for the​ possible choice between an​‌ activated (Xa​​) and inactivated (​​​‌Xi) state​ in the dynamics of​‌ a single X chromosome.​​ We then proceeded to​​​‌ a thorough analysis of​ 4D and 6D GRN​‌ models representing the joint​​ dynamics of the X​​​‌ chromosome pair, to (i)​ ensure the stability of​‌ the mono-inactivated (X​​iXa)​​​‌ state, and, then, (ii)​ exclude the stability of​‌ the bi-inactivated (X​​iXi)​​​‌ and bi-activated (X​aXa)​‌ states. Studying the 6D​​ GRN involves the analysis​​​‌ of TS models coupled​ through a state-dependent parameter.​‌ Combining proper changes of​​ variables and reparameterization, we​​ managed to study both​​​‌ the transient and asymptotic‌ behavior from a 2D‌​‌ phase plane analysis. We​​ further restricted the parameter​​​‌ space to meet quantitative‌ specifications on the relative‌​‌ gene expression level between​​ the Xi and​​​‌ Xa states.

7.1.2‌ Bifurcation analysis of a‌​‌ size-structured population model: Application​​ to oocyte dynamics and​​​‌ ovarian cycle

Participants: Frédérique‌ Clément, Louis Fostier‌​‌, Romain Yvinec.​​

In the framework of​​​‌ Louis Fostier's PhD thesis‌ 55, we have‌​‌ introduced and analyzed a​​ quasilinear size-structured population model​​​‌ with nonlinearities accounting for‌ nonlocal interactions between individuals‌​‌ 29. The recruitment​​ (immigration), growth and death​​​‌ rates are inhomogeneous in‌ time and/or space and‌​‌ depend on weighted averages​​ of the density. We​​​‌ have first proven the‌ existence and uniqueness of‌​‌ globally bounded weak solutions​​ using the characteristic curves​​​‌ and Banach fixed point‌ Theorem, after transforming the‌​‌ partial differential equation into​​ an equivalent system of​​​‌ integral equations. We then‌ investigated the long-time behavior‌​‌ of the PDE in​​ the case when the​​​‌ growth rate is separable.‌ Applying a classical time-scaling‌​‌ transformation, the problem boils​​ down to a PDE​​​‌ with linear growth rate‌ and nonlinear inflow boundary‌​‌ condition, entering the theoretical​​ framework of abstract semilinear​​​‌ Cauchy problems. We could‌ then perform a bifurcation‌​‌ analysis which revealed the​​ richness of the model​​​‌ behavior. Depending on the‌ ratio of the recruitment‌​‌ to the growth rate,​​ the model can exhibit​​​‌ multistability and stable oscillatory‌ solutions, emanating respectively through‌​‌ saddle-node and Hopf bifurcations.​​ We have illustrated these​​​‌ theoretical results on the‌ biological application motivating this‌​‌ work, oogenesis, the process​​ of production and maturation​​​‌ of female gametes (oocytes)‌ that is critical to‌​‌ reproductive fitness.

7.1.3 Rapid​​ cell turnover to model​​​‌ adipocyte size distribution

Participants:‌ Chloé Audebert, Louis‌​‌ Fostier, Romain Yvinec​​, and collaborators.​​​‌

White adipose tissue, composed‌ of adipocyte cells, primarily‌​‌ stores energy as lipid​​ droplets. The size of​​​‌ adipocytes varies significantly within‌ the tissue according to‌​‌ the amount of stored​​ lipids. A striking observation​​​‌ is that the adipocyte‌ size distribution is bimodal,‌​‌ and thus, this tissue​​ is lacking a characteristic​​​‌ size. We have proposed‌ a novel dynamical model,‌​‌ based on a partial​​ differential equation, to represent​​​‌ the adipocyte size distribution‌ 30. The model‌​‌ assumes continuous adipocyte growth,​​ with a velocity dependent​​​‌ on cell radius and‌ extracellular lipid availability, together‌​‌ with constant rates of​​ cell recruitment and death.​​​‌ We have proven the‌ existence and local stability‌​‌ of a unique stationary​​ solution for a broad​​​‌ range of growth velocity‌ functions. Choosing a parsimonious‌​‌ formulation, we have shown​​ that three parameters are​​​‌ enough to describe adipocyte‌ size distributions measurements in‌​‌ rats. These parameters are​​ robustly estimated through approximate​​​‌ Bayesian computation, and the‌ model demonstrates excellent agreement‌​‌ with experimental data. This​​ mechanistic, three-parameter framework offers​​​‌ a new and interpretable‌ approach to characterizing adipocyte‌​‌ size distributions.

7.2 Multiscale​​ modeling

7.2.1 A mechanistic​​​‌ modelling approach of the‌ host–microbiota interactions to investigate‌​‌ beneficial symbiotic resilience in​​​‌ the human gut

Participants:​ Béatrice Laroche, Eleonora​‌ Pastremoli, Lorenzo Sala​​, and collaborators.​​​‌

The health and well-being​ of a host are​‌ deeply influenced by the​​ interactions with its gut​​​‌ microbiota. Diet, especially the​ amount of fiber intake,​‌ plays a pivotal role​​ in modulating these interactions​​​‌ impacting microbiota composition and​ functionality. We have introduced​‌ a novel mathematical model​​ 77, designed to​​​‌ delve into these interactions,​ by integrating dynamics of​‌ the colonic epithelial crypt,​​ bacterial metabolic functions and​​​‌ sensitivity to inflammation as​ well as colon flows​‌ in a transverse colon​​ section. Unique features of​​​‌ our model include accounting​ for metabolic shifts in​‌ epithelial cells based on​​ butyrate and hydrogen sulfide​​​‌ concentrations, representing the effect​ of innate immune pattern​‌ recognition receptors activation in​​ epithelial cells, capturing bacterial​​​‌ oxygen tolerance based on​ data analysis, and considering​‌ the effect of antimicrobial​​ peptides on the microbiota.​​​‌ Using our model, we​ show a proof-of-concept that​‌ a high-protein, low-fiber diet​​ intensifies dysbiosis and compromises​​​‌ symbiotic resilience. Our simulation​ results highlight the critical​‌ role of adequate butyrate​​ concentrations in maintaining mature​​​‌ epithelial crypts. Through differential​ simulations focused on varying​‌ fiber and protein inputs,​​ our study offers insights​​​‌ into the system resilience​ following the onset of​‌ dysbiosis. The present model,​​ while having room for​​​‌ enhancement, offers essential understanding​ of elements such as​‌ oxygen levels, the breakdown​​ of fiber and protein,​​​‌ and the basic mechanisms​ of innate immunity within​‌ the colon environment.

In​​ the framework of Eleonora​​​‌ Pastremoli 's PhD, this​ model has been further​‌ enriched to incorporate a​​ newly identified hard mucus​​​‌ layer, with additional specific​ boundary conditions and reaction​‌ terms such as the​​ degradation rate. The completed​​​‌ model intends to capture​ accurately the micro-scale processes​‌ within the crypt, such​​ as cell-microbe interactions and​​​‌ nutrient absorption, and their​ impact on the macro-scale​‌ dynamics of the colon.​​ With this comprehensive framework,​​​‌ we can establish a​ virtual laboratory to test​‌ various hypotheses about gut​​ microbiota interactions, such as​​​‌ simulating different dietary regimes​ or studying the inflammatory​‌ response associated with microbial​​ groups. Current efforts are​​​‌ focused on enhancing the​ computational efficiency of the​‌ model simulations by developing​​ model order reduction techniques.​​​‌

7.2.2 Multiscale modeling of​ single cell-based dynamics of​‌ ovarian development

Participants: Chloé​​ Audebert, Frédérique Clément​​​‌, Fabien Crauste,​ Pawan Kumar.

In​‌ mammals, females are endowed​​ at birth with a​​​‌ limited number of germ​ cells (oocytes) hosted in​‌ somatic structures called ovarian​​ follicles. The pool of​​​‌ primordial (not yet activated)​ follicles corresponds to the​‌ ovarian reserve, which will​​ get progressively exhausted with​​​‌ ovarian aging. In the​ framework of the AI4scMED​‌ axis of PEPR Santé​​ numérique and Pawan Kumar's​​​‌ postdoc, we have developed​ a multiscale model representing​‌ the selection of the​​ future oocytes among the​​​‌ germ cell population, which​ occurs within germ cysts​‌ during ovarian development, and​​ involves complex interactions between​​​‌ germ cells and somatic​ cells. The model has​‌ been implemented in the​​ SiMuScale environment that enables​​ one to couple biochemical​​​‌ dynamics, namely gene regulatory‌ dynamics (GRN), with spatially-distributed‌​‌ cell population dynamics. The​​ 3D individual-based model accounts​​​‌ for the different types‌ of germ cells and‌​‌ their neighboring somatic cells​​ within a spatially explicit​​​‌ framework describing the structure‌ of a germ cyst,‌​‌ and embeds a minimal​​ GRN for oocyte differentiation​​​‌ derived from scRNA seq-based‌ studies of ovarian development.‌​‌ We have investigated how​​ the germ cyst geometry​​​‌ affects the oocyte selection‌ outcome and associated changes‌​‌ in germ cell volume​​ associated with cytoplasmic mass​​​‌ transfer from non-selected germ‌ cells. The model parameters‌​‌ have been calibrated across​​ scales, ranging from GRN​​​‌ dynamics to cytoplasmic exchanges,‌ to ensure biological realism,‌​‌ with robustness evaluated through​​ local sensitivity analyses. We​​​‌ have assessed the statistical‌ reliability of simulation outcomes‌​‌ by estimating the minimum​​ number of stochastic runs​​​‌ required for stable and‌ reproducible results. Altogether, the‌​‌ model generates 3D spatiotemporal​​ distributions of germ-cell fate,​​​‌ tracks the stepwise differentiation‌ of germ cells into‌​‌ oocytes, captures cytoplasmic transfer​​ events and associated volume​​​‌ changes, and monitors the‌ timing of unselected germ‌​‌ cell death across simulations.​​ The model results give​​​‌ insight into how only‌ a small subset of‌​‌ germ cells survive, increase​​ in size—and ultimately contributes​​​‌ to establishing the ovarian‌ reserve.

7.3 Deep-learning based‌​‌ inference from data and​​ images

7.3.1 Computational prediction​​​‌ of intracellular signaling behavior‌ via machine learning

Participants:‌​‌ Frédéric Jean-Alphonse, Pamela​​ Romero, Romain Yvinec​​​‌, and collaborators.‌

Assessing the dynamics of‌​‌ intracellular signaling processes under​​ various conditions such as​​​‌ protein-protein interactions, protein conformational‌ changes, dose-dependent drug effects,‌​‌ and ligand binding is​​ crucial for biologists and​​​‌ pharmacologists. However, generating such‌ data can be time-consuming‌​‌ and costly. In 49​​, we used data​​​‌ obtained by Bioluminescence Resonance‌ Energy Transfer (BRET) in‌​‌ live cells to develop​​ models to predict the​​​‌ temporal dynamics of intracellular‌ second messenger cAMP (cyclic‌​‌ adenosine monophosphate). We formulated​​ the task of predicting​​​‌ time series in a‌ supervised manner and employed‌​‌ decision tree, random forest,​​ and XGBoost models within​​​‌ a multiple-input, multiple-output framework,‌ enabling simultaneous forecasting of‌​‌ multiple future time steps.​​ Our findings demonstrate that​​​‌ our model achieves, in‌ the main experiment, a‌​‌ mean absolute error of​​ less than 0.018 on​​​‌ the testing set. This‌ model is computationally efficient,‌​‌ requiring only 16​​ seconds for training, validation,​​​‌ and testing. Finally, we‌ identified that BRET signal‌​‌ intensities are the most​​ important feature for predictions​​​‌ among the set of‌ features in the models.‌​‌ These results highlight the​​ potential of machine learning​​​‌ models for advancing research‌ in dynamical biological processes,‌​‌ particularly in cellular signaling​​ and pharmacological systems.

7.3.2​​​‌ Biology-Informed inverse problems for‌ insect pests detection using‌​‌ pheromone sensors

Participants: Béatrice​​ Laroche, and collaborators​​​‌.

Most insects have‌ the ability to modify‌​‌ the odor landscape in​​ order to communicate with​​​‌ their conspecies during key‌ phases of their life‌​‌ cycle such as reproduction.​​ They release pheromones in​​​‌ their nearby environment, volatile‌ compounds that are detected‌​‌ by insects of the​​​‌ same species with exceptional​ specificity and sensitivity. Efficient​‌ pheromone detection is then​​ an interesting lever for​​​‌ insect pest management in​ a precision agroecological culture​‌ context. A precise and​​ early detection of pests​​​‌ using pheromone sensors offers​ a strategy for pest​‌ management before infestation. In​​ 40, we have​​​‌ developed a biology-informed inverse​ problem framework that leverages​‌ temporal signals from a​​ pheromone sensor network to​​​‌ build insect presence maps.​ Prior biological knowledge is​‌ introduced in the inverse​​ problem by the mean​​​‌ of a specific penalty,​ using population dynamics PDE​‌ residuals. We have benchmarked​​ the biological-informed penalty with​​​‌ other regularization terms such​ as Tikhonov, LASSO or​‌ composite penalties in a​​ simplified toy model. We​​​‌ used classical comparison criteria,​ such as target reconstruction​‌ error, or Jaccard distance​​ on pest presence-absence, and​​​‌ also more task-specific criteria​ such as the number​‌ of informative sensors during​​ inference. Finally, the inverse​​​‌ problem has been solved​ in a realistic context​‌ of pest infestation in​​ an agricultural landscape by​​​‌ the fall armyworm (Spodoptera​ frugiperda).

7.3.3 Surrogate modeling​‌ of interactions in microbial​​ communities through Physics-Informed Neural​​​‌ Networks

Participants: Béatrice Laroche​, Lorenzo Sala,​‌ and collaborators.

Microorganisms​​ form complex communities known​​​‌ as microbiota, influencing various​ aspects of host well-being.​‌ The Generalized Lotka-Volterra (GLV)​​ model is commonly used​​​‌ to understand microorganism population​ dynamics, but its application​‌ to the microbiota faces​​ challenges due to limited​​​‌ bacterial data and complex​ interactions. This preliminary work​‌ exposed in 33 focuses​​ on using a Physics-Informed​​​‌ Neural Network (PINN) and​ synthetic data to build​‌ a surrogate model of​​ bacterial species evolution driven​​​‌ by a GLV model.​ The approach is calibrated​‌ and tested on several​​ models differing in size​​​‌ and dynamic behavior.

7.3.4​ Automatic detection and classification​‌ of ovarian follicles from​​ 2D histological images

Participants:​​​‌ Frédérique Clément, Rosario​ Medina-Rodriguez.

In the​‌ framework of Rosario Medina's​​ postdoctoral research within the​​​‌ OVOPAUSE project, we have​ developed a deep-learning model​‌ for the automatic detection​​ and classification of ovarian​​​‌ follicles from 2D histological​ images of mouse ovaries​‌ provided by domain expert​​ collaborators. The learning core​​​‌ is based on an​ object detection paradigm using​‌ the Detectron2 framework, where​​ a Mask R-CNN model​​​‌ with a Feature Pyramid​ Network (FPN) backbone, initialized​‌ with ImageNet-pretrained weights, is​​ used as the baseline​​​‌ architecture. The analysis of​ the images and annotations​‌ raises two major challenges:​​ (i) a significant variation​​​‌ in follicle sizes depending​ on the maturity stages,​‌ and (ii) a limited​​ number of annotated instances​​​‌ for each category, particularly​ for the smallest follicles.​‌ To tackle the latter​​ problem, we have performed​​​‌ dataset curation and annotation​ augmentation in order to​‌ mitigate class imbalance and​​ stabilize the training configurations​​​‌ tailored to the available​ datasets. The first step​‌ consisted in refining the​​ annotation protocol to capture​​​‌ biologically meaningful features on​ the whole follicle level​‌ (e.g. including the outward​​ theca corona) and help​​​‌ discriminating the follicles from​ other possibly morphologically similar​‌ structures (e.g. small vessels).​​ We have applied a​​ standardized preprocessing pipeline to​​​‌ the original images, including‌ resolution scaling, cropping to‌​‌ the minimal bounding box,​​ contrast enhancement, noise reduction,​​​‌ and background normalization, before‌ subsequently tiling them into‌​‌ overlapping square pixel patches.​​ Given the limited availability​​​‌ of labeled data and‌ the significant class imbalance,‌​‌ we have deployed several​​ strategies to improve the​​​‌ model robustness, such as‌ oversampling, geometric and photometric‌​‌ augmentations, stain normalization, and​​ controlled perturbations of stain​​​‌ color and intensity to‌ simulate realistic histological variability.‌​‌ These strategies were combined​​ with a pseudo-labeling approach​​​‌ to increase the number‌ of annotated datasets. Altogether,‌​‌ these steps have improved​​ the detection score of​​​‌ small follicles, which is‌ critical in the global‌​‌ performance. In parallel, a​​ Docker-based package integrating OMERO​​​‌ server with automated follicle‌ detection scripts was developed,‌​‌ enabling scalable inference and​​ integration into existing histopathology​​​‌ workflows.

7.3.5 3D imaging-based‌ analysis of the germline‌​‌ in teleost

Participants: Frédérique​​ Clément, Marlène Davilma​​​‌, and collaborators.‌

In teleost fish, female‌​‌ fecundity depends essentially on​​ the oocyte reserve, which​​​‌ determines the number of‌ eggs spawned in each‌​‌ reproductive cycle. Unlike mammals,​​ which have a limited​​​‌ and predefined stock of‌ oocytes at birth, this‌​‌ reserve can be renewed​​ throughout a female's life.​​​‌ In adult teleosts, this‌ reserve is, on the‌​‌ one hand, used to​​ generate mature oocytes ready​​​‌ to be spawned and,‌ on the other hand,‌​‌ replenished from germline stem​​ cells present in specialized​​​‌ structures called germline cradles.‌ A main issue is‌​‌ to understand the contribution​​ of these germline stem​​​‌ cells in the renewal‌ of the oocyte reserve‌​‌ in both juveniles and​​ adults, as well as​​​‌ the involved regulatory mechanisms.‌ In the framework of‌​‌ Marlène Davilma's PhD, co-supervised​​ by Violette Thermes and​​​‌ Frédérique Clément, we have‌ implemented a 3D whole‌​‌ ovary imaging strategy in​​ Medaka to provide quantitative​​​‌ data and study the‌ cell dynamics in the‌​‌ germinal cradle. We have​​ refined ovary clearing protocols​​​‌ combined with immunolabelings (e.g.,‌ anti-Vasa, anti-PH3, anti-GFP) and‌​‌ nuclear staining (MG), and​​ imaged the ovaries using​​​‌ light sheet and confocal‌ microscopy. In addition, we‌​‌ have set up 3D​​ image analysis pipelines that​​​‌ integrate pre-trained open-source neural‌ networks suitable for precise‌​‌ segmentation. These deep-learning–based pipelines​​ have greatly improved our​​​‌ ability to handle complex‌ 3D datasets on the‌​‌ whole-ovary scale and to​​ extract robust quantitative data​​​‌ for well-defined structures such‌ as ovarian follicles, while‌​‌ providing a framework for​​ future quantitative analyses of​​​‌ more complex structures such‌ as germinal cradles. We‌​‌ have characterized the spatial​​ organization, cell composition and​​​‌ developmental dynamics of germinal‌ cradles in wild-type females‌​‌ from hatching to adulthood,​​ revealing a highly dynamic​​​‌ and heterogeneous morphological organization,‌ with poorly individualized structures‌​‌ during growth stages that​​ progressively reorganize during ovarian​​​‌ maturation.

7.4 Discrete, continuous,‌ and hybrid network dynamics‌​‌

7.4.1 Petri nets faithfully​​ fluidify most permissive boolean​​​‌ networks

Participants: Stefan Haar‌, and collaborators.‌​‌

The analysis of biological​​ networks has benefited from​​​‌ the richness of Boolean‌ networks (BNs) and the‌​‌ associated theory. These results​​​‌ have been further fortified​ in the recent years​‌ by the emergence of​​ Most Permissive (MP) semantics,​​​‌ combining efficient analysis methods​ with a greater capacity​‌ of explaining pathways to​​ states hitherto thought unreachable,​​​‌ owing to limitations of​ the classical update modes.​‌ While MPBNs are understood​​ to capture any behavior​​​‌ that can be observed​ at a lower level​‌ of abstraction, all the​​ way down to continuous​​​‌ refinements, the specifics and​ potential of the models​‌ and analysis, especially attractors,​​ across the abstraction scale​​​‌ remain unexplored. In 48​, we have fluidified​‌ MPBNs by means of​​ Continuous Petri nets (CPNs),​​​‌ a model of (uncountably​ infinite) dynamic systems that​‌ has been successfully explored​​ for modeling and theoretical​​​‌ purposes. CPNs create a​ formal link between MPBNs​‌ and their continuous dynamical​​ refinements such as ODE​​​‌ models. The benefits of​ CPNs extend beyond the​‌ model refinement, and constitute​​ well established theory and​​​‌ analysis methods, recently augmented​ by abstract and symbolic​‌ reachability graphs. These structures​​ are shown to compact​​​‌ the possible behaviors of​ the system with focus​‌ on events which drive​​ the choice of long-term​​​‌ behavior in which the​ system eventually stabilizes. These​‌ results bring an important​​ keystone to this novel​​​‌ methodology for biological networks,​ namely the proof that​‌ extant PN encoding of​​ BNs instantiated as a​​​‌ CPN simulates the MP​ semantics. In spite of​‌ the underlying dynamics being​​ continuous, the analysis remains​​​‌ in the realm of​ discrete methods, constituting an​‌ extension of all previous​​ work.

7.4.2 Searching for​​​‌ attractors: To infinity and​ beyond

Participants: Stefan Haar​‌.

Discrete and nondeterministic​​ modeling of regulatory and​​​‌ signaling networks allows to​ characterize many of their​‌ crucial dynamical properties, with​​ a reasonable computational effort.​​​‌ A dynamical feature of​ particular interest in its​‌ own right, as well​​ as in terms of​​​‌ biological relevance, is the​ landscape of attractors and​‌ their attraction basins. In​​ the recent years, we​​​‌ have developed new approaches​ to discovery and global​‌ cartography of this basin​​ landscape. We have further​​​‌ enlarged the set of​ models used, by moving​‌ to Petri nets on​​ the one hand and​​​‌ an opening to continuous​ dynamics on the other​‌ 47. Surprisingly, these​​ openings are rewarded not​​​‌ only by a sharpening​ of the analysis, but​‌ also the emergence of​​ compact and readable data​​​‌ structures, and fast search​ algorithms. Altogether, this work​‌ highlights the cross-fertilization between​​ discrete and continuous approaches.​​​‌

7.4.3 Modeling compartmentalization in​ cell signaling networks

Participants:​‌ Léo Darrigade, Stefan​​ Haar, Frédéric Jean-Alphonse​​​‌, Romain Yvinec,​ Chloé Weckel.

In​‌ the course of the​​ COMPARTIMENTAGE exploratory action, we​​​‌ have initiated a new​ thematics on the compartmentalization​‌ of cell signaling, with​​ a special focus on​​​‌ the compartimentalization of G​ Protein-Coupled Receptors

In the​‌ framework of Leo Darrigade's​​ post-doc, we have designed​​​‌ a piecewise deterministic Markov​ process of intracellular GPCR​‌ trafficking and cAMP production.​​ The stochastic part of​​​‌ the model accounts for​ the formation, coagulation, fragmentation​‌ and recycling of intracellular​​ vesicles carrying the receptors,​​ while the deterministic part​​​‌ of the model represents‌ the chemical reactions mediating‌​‌ the response to the​​ activated receptor. The stochastic​​​‌ part of the model‌ accounts for the formation,‌​‌ coagulation, fragmentation and recycling​​ of intracellular vesicles carrying​​​‌ the receptors, while the‌ deterministic part of the‌​‌ model represents the chemical​​ reactions mediating the response​​​‌ to the activated receptor.‌ We have studied the‌​‌ long time behavior analysis​​ of the model and​​​‌ shown the existence of‌ a stationary measure under‌​‌ mild conditions. Studying the​​ existence of an accessible​​​‌ Doeblin point for our‌ process, we have obtained‌​‌ a general condition to​​ prove convergence in Total​​​‌ Variation towards a unique‌ stationary measure. This condition‌​‌ relies on the properties​​ of the flow associated​​​‌ with the membrane signaling‌ and the intracellular-vesicle signaling,‌​‌ and can be verified​​ on concrete examples, case​​​‌ by case. Under stronger‌ conditions (e.g. the flow‌​‌ is exponentially contractive), we​​ have further shown the​​​‌ exponential ergodicity in a‌ weak topology.

In the‌​‌ framework of Chloé Weckel's​​ PhD thesis, we have​​​‌ designed a complementary mathematical‌ framework applicable to generic‌​‌ GPCRs. We have designed​​ a compartmental model based​​​‌ on systems of ordinary‌ differential equations (Chemical Reaction‌​‌ Networks), and we have​​ studied the effects of​​​‌ internalization and recycling on‌ the receptor-induced cell responses.‌​‌ This approach helped us​​ to address two reciprocal​​​‌ questions: (i) How does‌ trafficking influence the cell‌​‌ responses? and (ii) Does​​ the cell response affect​​​‌ trafficking? We have demonstrated‌ that receptor trafficking can‌​‌ either enhance or reduce​​ te pharmacological effect of​​​‌ ligands, depending on plasma‌ membrane versus endosomal signaling‌​‌ properties, and revealed that,​​ in turn, the signal​​​‌ feedback on receptor trafficking‌ can induce complex phenomena‌​‌ like multi-stability.

7.5 Exploration​​ of signaling networks

7.5.1​​​‌ Trafficking of luteinizing hormone‌ receptor directs the differential‌​‌ signal activation between luteinizing​​ hormone and chorionic gonadotropin​​​‌

Participants: Frédéric Jean-Alphonse,‌ Eric Reiter, and‌​‌ collaborators.

Luteinizing hormone​​ (LH) and human choriogonadotropin​​​‌ (hCG) support distinct reproductive‌ events via differential activation‌​‌ of the luteinizing hormone​​ receptor (LHCGR). LH-mediated LHCGR​​​‌ trafficking is known to‌ be key in activating‌​‌ and regulating its signal​​ responses, yet whether LH​​​‌ and hCG differentially direct‌ LHCGR trafficking is unknown.‌​‌ In 38, using​​ bioluminescence resonance energy transfer​​​‌ (BRET) trafficking biosensors and‌ highresolution TIRF imaging, we‌​‌ have demonstrated that LH​​ induces rapid internalization and​​​‌ recycling via an APPL1linked‌ very early endosomal pathway,‌​‌ while hCG-mediated receptor trafficking​​ and recycling is slower,​​​‌ and preferentially involves beta-arrestins‌ and accumulation in endocytic‌​‌ compartments positive for early​​ and late endosomal markers.​​​‌ Receptor internalization was differentially‌ required for Gq, Gi‌​‌ and Gs protein-mediated signals,​​ revealing distinct LH- vs​​​‌ hCG-trafficking signatures that may‌ be fundamental to preserving‌​‌ unique hormone signaling patterns​​ and their impact at​​​‌ the genomic level. These‌ results support different LH‌​‌ vs hCG modes of​​ action on the LHCGR​​​‌ through differential post-endocytic sorting‌ of the receptor, providing‌​‌ a potential “location bias”​​ mechanism underlying the distinct​​​‌ physiological roles of these‌ two gonadotropins.

7.5.2 LHR‌​‌ and Gαs​​​‌ trafficking drive sustained cAMP​ signalling from endosomes to​‌ control steroidogenesis

Participants: Frédéric​​ Jean-Alphonse, Eric Reiter​​​‌, and collaborators.​

A growing number of​‌ G protein-coupled receptors signal​​ through G proteins from​​​‌ intracellular compartments following endocytosis.​ While for few receptors​‌ the physiological relevance of​​ such mechanism has been​​​‌ established, the relationships between​ the spatio-temporal organization of​‌ cellular signaling and the​​ physiological responses are still​​​‌ to be elucidated for​ most receptors. Signaling by​‌ the luteinizing hormone receptor​​ (LHR) is essential to​​​‌ regulate sex steroids production​ in gonads, but how​‌ G protein-dependent signals from​​ endosomes are functionally important​​​‌ for steroidogenesis remains unexplored.​ In 58, we​‌ have demonstrated that transient​​ LHR activation promotes a​​​‌ prolonged Gαs/cAMP​ signaling from endosomes, which​‌ requires ligand-induced independent receptor​​ and Gαs​​​‌ trafficking. We have shown​ that endosomal trafficking is​‌ specifically required for ligand-induced​​ cAMP accumulation in the​​​‌ nucleus and gene expression,​ as well as for​‌ steroid production in Leydig​​ cells. These results contribute​​​‌ to further understand the​ molecular mechanisms by which​‌ LHR, through signaling compartmentalization,​​ controls gonadal steroidogenesis.

7.5.3​​​‌ A single domain intrabody​ as a novel tool​‌ to bias the subcellular​​ trafficking of the follicle-stimulating​​​‌ hormone receptor

Participants: Pascale​ Crépieux, Frédéric Jean-Alphonse​‌, Eric Reiter,​​ Romain Yvinec, Chloé​​​‌ Weckel, and collaborators​.

Variable fragments from​‌ heavy-chain only antibodies of​​ camelids (VHH) stabilize active​​​‌ G protein-coupled receptor conformations,​ enabling their 3D structural​‌ determination and facilitating detailed​​ structure–activity studies when expressed​​​‌ intracellularly, by linking specific​ receptor states to downstream​‌ signaling pathways. Recently, intra-VHHs​​ have been instrumental in​​​‌ tracking active GPCRs in​ various subcellular compartments. In​‌ 61, we have​​ reported the isolation and​​​‌ characterization of iPRC2, an​ intra-VHH selectively recognizing the​‌ intracellular loops of the​​ human follicle-stimulating hormone receptor​​​‌ (hFSHR). iPRC2 expression inside​ hFSHR-expressing cells decreases cAMP​‌ accumulation in response to​​ FSH binding, but requires​​​‌ Gαs for​ optimal interaction with the​‌ receptor. Importantly, iPRC2 reroutes​​ internalized hFSHR from very​​​‌ early endosomes, leading to​ an increased accumulation of​‌ active receptor in early​​ endosomes, and consequently, diminishes​​​‌ its recycling towards the​ cell surface. A compartmentalized​‌ modeling approach further supports​​ that the iPRC2-induced rerouting​​​‌ of hFSHR is sufficient​ to explain the decreased​‌ cAMP accumulation in response​​ to FSH binding. Hence,​​​‌ in contrast to previously​ described intra-VHHs that recognize​‌ active G protein-coupled receptor​​ intracellular location, iPRC2 provokes​​​‌ per se a location​ bias, through its ability​‌ to reroute hFSHR and​​ appears to be an​​​‌ innovative tool to examine​ the functional consequences of​‌ G protein-coupled receptor accumulation​​ in selective subcellular compartments.​​​‌

7.5.4 Endogenous ligands of​ bovine FFAR2/GPR43 display distinct​‌ pharmacological properties

Participants: Frédéric​​ Jean-Alphonse, Eric Reiter​​​‌, and collaborators.​

Free fatty acids (FFAs)​‌ have been identified as​​ ligands for members of​​​‌ the G protein-coupled receptor​ (GPCR) family, called free​‌ fatty acid receptors (FFARs).​​ Among these receptors, there​​​‌ is a particular interest​ in the physiological roles​‌ of FFAR2 and its​​ potential use as a​​ therapeutic target for various​​​‌ health disorders. Despite great‌ progress in other species,‌​‌ pharmacological properties of the​​ bovine FFAR2 (bFFAR2) are​​​‌ not fully understood. In‌ 41, we have‌​‌ evaluated how a selection​​ of FFAs (C2:0 to​​​‌ C8:0, and branched FFAs)‌ activate and regulate bFFAR2‌​‌ signaling. We used HEK293A​​ cells and BRET assays​​​‌ to measure Gα‌i/Gαq coupling‌​‌ and signaling, β-arrestin​​ 2 recruitment, and receptor​​​‌ internalization/trafficking. SRE and NFAT-RE‌ dependent transcription was assessed‌​‌ by luciferase reporter assay.​​ bFFAR2 presents a dual​​​‌ coupling to Gα‌i and Gα‌​‌q, and recruits β​​-arrestin 2 when stimulated​​​‌ with short and medium-chain‌ FFAs up to eight‌​‌ carbons. Straight-chain FFAs with​​ 4 to 7 carbons​​​‌ plus 3-methyl-butanoic acid showed‌ the greatest potency to‌​‌ activate bFFAR2 upstream and​​ downstream signaling, while C2:0,​​​‌ C3:0 and 2-methylpropanoic acid‌ (2MP) were the least‌​‌ potent. 2MP exhibited minimal​​ pharmacological activity towards β​​​‌-arrestin 2, and although‌ it induced receptor internalization,‌​‌ bFFAR2 trafficking to the​​ early endosome was not​​​‌ observed. Overall, the number‌ of carbons of straight-chain‌​‌ FFAs and methyl position​​ of branched FFAs differentially​​​‌ regulates the activation of‌ bFFAR2.

8 Partnerships and‌​‌ cooperations

8.1 International Initiatives​​

8.1.1 Participation in International​​​‌ Programs

  • Bill & Melinda‌ Gates Foundation, ContraBody (2021-February‌​‌ 2025, PI Eric Reiter​​ , 1.8 million U.S.​​​‌ dollars) “Non-hormonal contraception by‌ nanobody produced from within‌​‌ the body”. In partnership​​ with University of Modena​​​‌ E Regio Emilia, Italy,‌ MabSilico, France and InCellArt,‌​‌ France. Involved MUSCA members​​ : Eric Reiter ,​​​‌ Pascale Crépieux , Frédéric‌ Jean-Alphonse , Romain Yvinec‌​‌
  • Medical Research Council, MICA​​ (2022-February 2025, PI Waljit​​​‌ Dhillo, 642,000 euros) “Investigating‌ kisspeptin receptor signalling to‌​‌ improve the treatment of​​ reproductive disease”. Involved MUSCA​​​‌ member: Eric Reiter

8.1.2‌ Visits to international teams‌​‌

Research stays abroad

Chiara​​ Villa visited the Centre​​​‌ de Recerca Mathematica (Barcelona,‌ Spain) May 14-16, to‌​‌ work in collaboration with​​ Gissell Estrada-Rodriguez (Universitat Politecnica​​​‌ de Catalunya) on the‌ derivation of the fractional‌​‌ laplacian from mesoscopic models​​ incorporating the effect of​​​‌ internal noise in signalling‌ driving run-and-tumble dynamics in‌​‌ bacteria movement.

8.2 European​​ initiatives

8.2.1 Horizon Europe​​​‌

  • EU Pathfinder, ABCardionostics (2024-2028,‌ PI Gisèle Clofent-Sanchez, 3.6‌​‌ million euros). Involved MUSCA​​ member: Anne Poupon ,​​​‌ WP4 coordination

8.3 National‌ initiatives

  • PEPR SAFE Santé‌​‌ des Femmes, Santé des​​ Couples, National consortium Infertil-Safe​​​‌ (2026-2030, PI Sakina Mhaouty-Kodja‌ & Pierre Ray, BIOS‌​‌ funding 280,000 euros) Involved​​ MUSCA members: Pascale Crépieux​​​‌ , Frédéric Jean-Alphonse ,‌ Eric Reiter
  • Programme EXPLOR'AE‌​‌ Probiobody, France 2030 (2025-2026,​​ PI Eric Reiter ,​​​‌ 150,000 euros) “Délivrance in‌ vivo de nanocorps à‌​‌ activité pharmacologique par des​​ bactéries du microbiote”. Involved​​​‌ MUSCA member: Eric Reiter‌
  • PEPR SAMS pillar project‌​‌ CULTISSIMO (2024-2030, PI Lionel​​ Rigottier, MaiAGE funding 80,000​​​‌ euros) “Plateforme de culturomique‌ partagée pour accéder à‌​‌ un large répertoire de​​ micro-organismes, dont les non​​​‌ cultivés, afin de comprendre‌ les fonctions clés des‌​‌ microbiomes sur les écosystèmes​​ humains". Involved MUSCA members:​​​‌ Béatrice Laroche , Lorenzo‌ Sala .
  • PEPR Digital‌​‌ Health, Axis 2 “Multi-scale​​​‌ AI for Single Cell-Based​ Precision Medicine” of Program​‌ 1 “New numerical methods​​ for the analysis of​​​‌ multi-scale health data” (2023-2030,​ PI Franck Picard, MUSCA​‌ funding 102,000 euros). Involved​​ MUSCA members: Chloé Audebert​​​‌ , Frédérique Clément .​
  • PEPS AMIES SIFAREA (2024-2025,​‌ PI Chloé Audebert ,​​ 26,000 euros) “Digital simulator​​​‌ for the training of​ critical care anesthesiologists". Involved​‌ MUSCA members: Chloé Audebert​​ , Lorenzo Sala .​​​‌
  • FC3R digital approaches OVOTOX​ (2024-2026, PI Frédérique Clément​‌ , 50,000 euros) “Coupling​​ physiologically-based kinetic models of​​​‌ endocrine axes with structured​ cell population dynamics models:​‌ An integrative approach of​​ reproductive toxicity”. Involved MUSCA​​​‌ members: Frédérique Clément ,​ Romain Yvinec .
  • ANR​‌ PROBA (2025-2029, PI Violette​​ Thermes, 729,000 euros) “Germ​​​‌ Cell Proliferation-Growth Balance in​ fish”. Involved MUSCA Members:​‌ Frédérique Clément , Romain​​ Yvinec .
  • ANR OVOPAUSE​​​‌ (2022-2026, PI Romain Yvinec​ , 447,000 euros) “Dynamics​‌ and control of female​​ germ cell populations: understanding​​​‌ aging through population dynamics​ models”. Involved MUSCA Members:​‌ Frédérique Clément , Pascale​​ Crépieux , Louis Fostier​​​‌ , Frédéric Jean-Alphonse ,​ Eric Reiter , Romain​‌ Yvinec .
  • ANR MOSDER​​ (2022-2027, PI Frédéric Jean-Alphonse​​​‌ , 420,000 euros) “Multi-dimensional​ organization of signaling dynamics​‌ encoded by gonadotropin receptors”.​​ Involved MUSCA members: Pascale​​​‌ Crépieux , Frédéric Jean-Alphonse​ , Eric Reiter ,​‌ Romain Yvinec .
  • ANR​​ PARTHAGE (2022-2026, PI Lulla​​​‌ Opatowski, 620,000 euros) “Prédire​ la transmission de la​‌ résistance au sein et​​ entre les hôtes en​​​‌ combinant modélisation mathématique, génomique​ et épidémiologie”. Involved MUSCA​‌ member: Béatrice Laroche .​​
  • ANR YDOBONAN (2021-2025, PI​​​‌ Vincent Aucagne, 497,000 euros)​ “Mirror image nanobodies: pushing​‌ forward the potential of​​ enantiomeric proteins for therapeutic​​​‌ and pharmacological applications”. Involved​ MUSCA member: Eric Reiter​‌ .
  • ANR PHEROSENSOR (2021-2026,​​ PI Philippe Lucas, 1492K€)​​​‌ “Early detection of pest​ insects using pheromone receptor-based​‌ olfactory sensors”. Involved MUSCA​​ member: Béatrice Laroche .​​​‌
  • Programme Carnot GP-MycoFlu (2026-2029,​ PI Ignacio Caballero Posadas,​‌ 200,000 euros) “Targeting GPR39​​ to fight pig lung​​​‌ diseases”'. Involved MUSCA member:​ Eric Reiter .
  • LabEx​‌ MAbImprove (2011-2025, PI Hervé​​ Watier). Involved MUSCA members:​​​‌ Pascale Crépieux , Frédéric​ Jean-Alphonse , Anne Poupon​‌ , Eric Reiter ,​​ Romain Yvinec .
  • LabEx​​​‌ MAbImprove ANR-10- LABX-53 (2024,​ PI Pascale Crépieux ,​‌ 51,000 euros) “Perturbations physiologiques​​ induites par un VHH​​​‌ intra-cellulaire qui biaise le​ trafic intracellulaire du récepteur​‌ de la FSH”'. Involved​​ MUSCA members: Pascale Crépieux​​​‌ , Frédéric Jean-Alphonse ,​ Anne Poupon , Eric​‌ Reiter , Romain Yvinec​​ .
  • INRAE metaprogram DIGIT-BIO,​​​‌ FermenTwin project (2024-2025, PI​ Guillaume Gautreau, 10 K€)​‌ “Using digital twins to​​ predict the evolution of​​​‌ food microbiota during plant​ fermentation”. Involved MUSCA members:​‌ Lorenzo Sala and Béatrice​​ Laroche .
  • INRAE metaprogram​​​‌ DIGIT-BIO, Artemis consortium (2024-2025,​ PI Simon Labathe, 10,000​‌ euros) “Digital twins for​​ microbial systems”. Involved MUSCA​​​‌ members: Lorenzo Sala and​ Béatrice Laroche .
  • INRAE​‌ metaprogram Holoflux, MiMiSiPi (2024-2025,​​ PI Florent Kempf) “Metagenomics​​​‌ and metatranscriptomics of the​ gut microbiota in the​‌ context of Salmonella super​​ shedding induced dysbiosis in​​​‌ pigs”. Involved MUSCA members:​ Lorenzo Sala and Béatrice​‌ Laroche .
  • INRAE -​​ Inria 2022 AMI Risques​​ naturels et environnementaux, SMART​​​‌ project (2022-2025, PIs Stefan‌ Haar and Corinne Curt-Patat,‌​‌ 139,000 euros), “Multirisk scenarios​​ on a territory: A​​​‌ Petri net approach to‌ represent them all”. Involved‌​‌ MUSCA member: Stefan Haar​​ .
  • ANSES GinFiz project​​​‌ (2021-2025, PI Rémy Beaudouin),‌ “Gonadal aromatase inhibition and‌​‌ other toxicity pathways leading​​ to fecundity inhibition in​​​‌ zebrafish: From initiating events‌ to population impacts”. Involved‌​‌ MUSCA members: Frédérique Clément​​ , Romain Yvinec .​​​‌

8.4 Regional initiatives

  • DATAIA‌ program for Master internship‌​‌ funding (2025), PIVAE project​​ “Integrating physics-informed neural networks​​​‌ and variational autoencoders for‌ enhanced omics data interpretation‌​‌ in biological applications”. Involved​​ MUSCA member: Lorenzo Sala​​​‌

9 Dissemination

9.1 Promoting‌ scientific activities

9.1.1 Scientific‌​‌ events: organisation

Member of​​ the organizing committees
  • Chloé​​​‌ Audebert : Organization of‌ the Minisymposium “Models and‌​‌ methods for applications in​​ Biology and Medicine”, Biennale​​​‌ de la SMAI, June‌ 2-5, Carcans-Maubuisson
  • Béatrice Laroche‌​‌ and Lorenzo Sala :​​ Organization of the Minisymposium​​​‌ “Digital twins for biological‌ systems: Advancing multiscale modeling‌​‌ and hybrid solutions”, Biennale​​ de la SMAI, June​​​‌ 2-5, Carcans-Maubuisson
  • Eric Reiter‌ : Co-organization of the‌​‌ 13th Antibody Industrial Symposium,​​ June 25-26, Tours
  • Lorenzo​​​‌ Sala : Co-organization of‌ the workshop “Multiscale modeling‌​‌ of ocular and cardiovascular​​ systems” at American Institute​​​‌ of Mathematics, September 29‌ - October 3, Caltech,‌​‌ Pasadena (USA)
  • Chiara Villa​​ : Co-organization of the​​​‌ Minisymposium “Mathematical advances in‌ modeling cancer treatment”, Biennale‌​‌ de la SMAI, June​​ 2-5, Carcans-Maubuisson
Member of​​​‌ the conference program committees‌
  • Rosario Medina Rodriguez :‌​‌ Program committee co-chair -​​ 12th International Conference on​​​‌ Information Management and Big‌ Data (SIMBig2025), October 29-31,‌​‌ Lima (Peru)
Reviewer
  • Rosario​​ Medina Rodriguez : 38th​​​‌ IEEE International Symposium on‌ Computer-Based Medical Systems (CBMS2025),‌​‌ June 18-20, Madrid (Spain),​​ and 12th International Conference​​​‌ on Information Management and‌ Big Data (SIMBig2025), October‌​‌ 29-31, Lima (Peru)
  • Romain​​ Yvinec : ISMB/ECCB 2025:​​​‌ joint ISMB (Intelligent Systems‌ for Molecular Biology)/ ECCB‌​‌ (European Conference on Computational​​ Biology), July 20-24th, Liverpool​​​‌ (United Kingdom)

9.1.2 Journal‌

Member of the editorial‌​‌ boards
  • Stefan Haar ,​​ associate editor Discrete Event​​​‌ Dynamic Systems: Theory and‌ Applications
  • Pascale Crépieux and‌​‌ Eric Reiter , associate​​ editors Frontiers in Endocrinology​​​‌
  • Romain Yvinec , associate‌ editor Journal of Mathematical‌​‌ Biology
Reviewer - reviewing​​ activities
  • Chloé Audebert Mathematical​​​‌ Biosciences
  • Pascale Crépieux Bioessays,‌ Reproduction, Cell Reports, Nature‌​‌ Aging
  • Rosario Medina Rodriguez​​ Scientific Data, IEEE Latin​​​‌ America Transactions
  • Eric Reiter‌ Cell Reports, Endocrinology, Proceedings‌​‌ of the National Academy​​ of Sciences of the​​​‌ United States of America,‌ eLife, Nature Communications
  • Lorenzo‌​‌ Sala Computer Methods in​​ Biomechanics and Biomedical Engineering,​​​‌ Applied Mathematics, International Journal‌ of Numerical Methods in‌​‌ Biomedical Engineering, Computers in​​ Biology and Medicine, Acta​​​‌ Applicandae Mathematicae, La Matematica‌
  • Chiara Villa European Journal‌​‌ of Applied Mathematics, Journal​​ of Mathematical Biology
  • Romain​​​‌ Yvinec Mathematics and Computers‌ in Simulation, Bulletin of‌​‌ Mathematical Biology, Stochastic Processes​​ and their Applications, Journal​​​‌ of Theoretical Biology, Nature‌ Communications

9.1.3 Invited and‌​‌ contributed presentations

Chloé Audebert​​

  • Mathematical modeling of adipocyte​​​‌ size distribution, invited seminar,‌ MAP5 working group on‌​‌ Modeling, Analysis and Simulation,​​​‌ April 11
  • Parameter estimation​ and medical measurements, online​‌ invited seminar, Mathematical -​​ Biological Seminar, Faculty of​​​‌ Science, Charles University in​ Prague, March 25

Frédérique​‌ Clément

  • Modélisation de la​​ fonction ovarienne, invited talk,​​​‌ 49th colloque des Sciences​ de l'Animal de Laboratoire​‌ (AFSTAL), November 19-21, Nantes​​

Pascale Crépieux

  • Targeting FSHR​​​‌ and LHR with intracellular​ antibodies for structure-activity studies,​‌ invited seminar, Olson Center,​​ University of Nebraska Medical​​​‌ Center, June 2, Omaha​ (USA),
  • Modulation of gonadotropin​‌ receptor activity with intracellular​​ VHH, invited talk, Aging​​​‌ Pituitary/Gonadal Axis Spring Retreat,​ June 3, Omaha (USA)​‌
  • Des fragments d’anticorps intra-cellulaires​​ ciblant les récepteurs hormonaux,​​​‌ pour l’innovation thérapeutique, June​ 20, 10ème journée de​‌ Biotechnocentre, online,

Marlène Davilma​​

  • Unveiling the role of​​​‌ mir-187 in adulte ovarian​ follicle growth and female​‌ fecundity in medaka (Orizyas​​ latipes), invited talk, Colloque​​​‌ Différenciation et fonctions des​ gonades, March 21, Paris​‌

Alice Fohr

  • Dynamical systems​​ and stochastic processes applied​​​‌ to developmental biology :​ Modeling X-chromosome inactivation, poster​‌ communication, Journées Math-Bio-Santé, November​​ 5-7, Montpellier

Louis Fostier​​​‌

  • A PINN-based approach to​ the calibration of structured​‌ population models, poster communication,​​ Journées Math-Bio-Santé, November 5-7,​​​‌ Montpellier
  • A population dynamics​ model for fish oogenesis,​‌ invited talk to the​​ mini-symposium “Models and methods​​​‌ for applications in Biology​ and Medicine”, Biennale de​‌ la SMAI, June 2-5,​​ Carcans-Maubuisson
  • Size-structured population models​​​‌ with applications to cell​ populations

    contributed talk, Differential​‌ Equations and Applications to​​ Biology, June 16-20, Le​​​‌ Havre

    invited seminar, Math​ Bio seminar of Institut​‌ Denis Poisson, September 24,​​ Tours

    invited seminar, Laboratoire​​​‌ de Mathématiques Appliquées du​ Havre, November 27, Le​‌ Havre

Stefan Haar

  • Searching​​ for Attractors: To infinity​​​‌ and beyond, invited talk,​ AUTOMATA 2025, June 30​‌ - July 2, Lille​​
  • Continuous Petri nets faithfully​​​‌ fluidify most permissive boolean​ networks, contributed talk, 23rd​‌ International Conference on Computational​​ Methods in Systems Biology​​​‌ (CMSB 2025), September 10-12,​ Lyon

Frédéric Jean-Alphonse

  • LHR​‌ and Gs trafficking drive​​ sustained cAMP signaling from​​​‌ endosomes to control steroidogenesis,​ invited talk, neuroGPCR Symposium,​‌ September 17, Bordeaux

Pawan​​ Kumar

  • Decoding Biology Hackathon​​​‌ (Selected participant and special​ jury award with Cellf-Driving​‌ Agents team), OWKIN, September​​ 29 - October 1,​​​‌ Paris
  • Glioblastoma Moonshot Hackathon​ (finalist with GlioMatrix team),​‌ OWKIN and Servier, February​​ 3–4, Paris
  • Extending tumor​​​‌ hypoxia modeling from 2D​ to 3D: A mechanistic,​‌ data-driven approach informed by​​ 2D histopathology, poster presentation,​​​‌ Advanced Lecture Course on​ Computational Systems Biology (CompsysBio2025),​‌ October 6-10, Aussois
  • Multiscale​​ modeling of ovarian development:​​​‌ Mechanisms underlying the selection​ of future oocytes, contributed​‌ talk, Journées Math-Bio-Santé, November​​ 5-7, Montpellier

Rosario Medina​​​‌ Rodriguez

  • Detection and classification​ of ovarian follicles in​‌ histopathology images, poster presentation,​​ Spring School of Deep​​​‌ Learning for Medical Imaging​ 2025, April 21-25, Lyon​‌

Eleonora Pastremoli

  • Towards a​​ digital twin of the​​​‌ gut microbiota: Multiscale modeling​ and host interaction, invited​‌ talk to the minisymposium​​ “Digital twins for biological​​​‌ systems: Advancing multiscale modeling​ and hybrid solutions”, Biennale​‌ de la SMAI, June​​ 2-5, Carcans-Maubuisson

Lorenzo Sala​​​‌

  • Physics-informed neural networks for​ data-integrated modeling of microbial​‌ interactions, contributed talk, 16th​​ Conference on Dynamical Systems​​ applied on Biology and​​​‌ Natural Sciences (DSABNS25), January‌ 20-24, Napoli (Italy)
  • Physics-informed‌​‌ neural networks for generalized​​ Lotka-Volterra models: towards parameter​​​‌ estimation in microbial communities,‌ invited talk to the‌​‌ mini-symposium “Models and methods​​ for applications in Biology​​​‌ and Medicine”, Biennale de‌ la SMAI, June 2-5,‌​‌ Carcans-Maubuisson
  • Hybrid inference for​​ microbial community models: Physics-informed​​​‌ neural networks for parameter‌ estimation in generalized lotka-volterra‌​‌ system, invited talk, Optimization,​​ and Control in Biomedicine​​​‌ Worshop, September 28-29, Frankfurt‌ am Main (Germany)
  • Hybrid‌​‌ data integration with PINNs:​​ Mechanistic modeling of biological​​​‌ systems using omics data,‌ invited talk, Multi-Omics and‌​‌ Data Integration Conference, October​​ 16-17, Nice
  • Physics-informed neural​​​‌ networks for modeling plant‌ gene expression dynamics under‌​‌ stress, invited talk, Interactive​​ Mathematics Day, Institut des​​​‌ Hautes Études Scientifiques, November‌ 5, Bures-sur-Yvette
  • Physics-nformed neural‌​‌ networks for parameter inference​​ in biological systems, invited​​​‌ talk 4ièmes Journées annuelles‌ du GDR MECABIO Santé,‌​‌ November 26-28, Avignon

Eric​​ Reiter

  • Selection and functional​​​‌ characterization of anti-CXCR4 antagonistic‌ VHHs, invited talk, Bioproduction‌​‌ congress (BIOPC2025), September 22,​​ Lyon.
  • Targeting gonadotropin receptors​​​‌ with single domain antibodies‌ to control reproduction and‌​‌ treat associated dysfunctions, invited​​ talk, 13th Antibody Industrial​​​‌ Symposium (AIS2025), June 25,‌ Tours
  • Recombinant antibody fragments‌​‌ as new modulators of​​ gonadotropin receptor activity, invited​​​‌ talk, Joint congress of‌ ESPE (European Society for‌​‌ Paediatric Endocrinology) and ESE​​ (European Society of Endocrinology),​​​‌ May 12, Copenhagen (Denmark).‌
  • Development of VHH to‌​‌ target GPCRs and modulate​​ their activities, invited talk,​​​‌ Symposium on Nanobodies and‌ Neuroscience, April 24, Bergen‌​‌ (Norway)

Chiara Villa

  • Calibration​​ and analysis of phenotype-structured​​​‌ PDEs of cancer adaptive‌ dynamics, invited talk, Young‌​‌ women in Mathematical Biology,​​ March 31 - April​​​‌ 4, Bonn (Germany)
  • Coupling‌ physiologically-based kinetic models of‌​‌ endocrine axes with structured​​ cell population dynamics models:​​​‌ an integrative approach of‌ reproductive toxicity, poster, Biennale‌​‌ de la SMAI, June​​ 2-5, Carcans-Maubuisson

Romain Yvinec​​​‌

  • Stochastic Becker-Döring model: large‌ population and large time‌​‌ results for phase transition​​ phenomena, invited seminar, MOME2​​​‌ : Journée de modélisation‌ mathématique pour l'écologie, November‌​‌ 17, Amiens
  • Ovarian follicle​​ population dynamics along lifetime,​​​‌ invited talk, Journées Math-Bio-Santé,‌ November 5-7, Montpellier
  • Kinetic‌​‌ biased and compartmentalized signaling:​​ a system biology approach,​​​‌ contributed talk, 5th annual‌ meeting of the IRN‌​‌ iGPCRnet, July 7-9, Barcelone​​ (Spain)

Chloé Weckel

  • Spatiotemporal​​​‌ modeling of signaling pathways:‌ Impact of endosomal compartmentalization‌​‌ and application to gonadotropin​​ receptors

    seminar at the​​​‌ TOP days (Tours, Orléans,‌ Poitiers), May 13-14, Tours‌​‌

    contributed talks at Advanced​​ Lecture Course on Computational​​​‌ Systems Biology (CompsysBio2025), October‌ 6-10, Aussois, and GPCR‌​‌ forum virtual conference, November​​ 12-14

    poster presentations, 5th​​​‌ annual meeting of the‌ IRN iGPCRnet, July 7-9,‌​‌ Barcelone (Spain) and Journées​​ Math-Bio-Santé, November 5-7, Montpellier​​​‌

  • Characterizing the signaling pathways‌ of gonadotropin receptors considering‌​‌ the impact of endosomal​​ compartmentalization, contributed talk, Journées​​​‌ de Biostatistiques, November 3-5,‌ Montpellier

9.1.4 Leadership within‌​‌ the scientific community

Frédérique​​ Clément

  • member of the​​​‌ direction board of RT‌ REPRO
  • member of the‌​‌ scientific board of PIXANIM​​ (Phénotypage par Imagerie in/eX​​​‌ vivo de l'ANImal à‌ la Molécule)
  • scientific member‌​‌ of the FC3R COR​​​‌
  • member of the steering​ committee of OI NFC​‌ (New Frontiers in Cancer)​​ Paris-Saclay

Pascale Crépieux

  • member​​​‌ (and board member) of​ CNRS section 24 ,​‌ “Physiologie, physiopathologie, biologie du​​ cancer”

Frédéric Jean-Alphonse

  • coordinator​​​‌ of Key Question 1​ (How can target activity​‌ be modulated through antibody​​ binding?), LabEx MAbImprove
  • member​​​‌ of the Early career​ scientist comittee (ECS) of​‌ iGPCRnet

Béatrice Laroche

  • member​​ of the steering committee​​​‌ of the INRAE metagrogram​ HOLOFLUX

Anne Poupon

  • coordinator​‌ of “Central Development Instrument​​ 1 (Interdisciplinary Innovation)”, LabEx​​​‌ MAbImprove

Romain Yvinec

  • member​ of the steering committee​‌ of RT REPRO
  • member​​ of the Directory committee​​​‌ of iGPCRnet

9.1.5 Scientific​ expertise

  • Frédérique Clément ,​‌ reviewer for the Czech​​ Science Foundation, member of​​​‌ the selection board for​ PhD fellowships from OI-NFC​‌
  • Pascale Crépieux , member​​ of the selection board​​​‌ for the recruitment of​ CNRS CRCN in Section​‌ 24
  • Béatrice Laroche ,​​ member of the selection​​​‌ board for DR2 INRAE​ “Génétiques animale et végétale,​‌ santé animale, physiologie”, member​​ of the selection board​​​‌ for the recruitment of​ Inria CRCN in Centre​‌ Inria de l'Université Grenoble​​ Alpes
  • Eric Reiter ,​​​‌ member of the selection​ board for PhD and​‌ Postdoc fellowships from PEPR​​ SAFE, member of the​​​‌ selection board for the​ Endocrinology, Diabetes and Metabolism​‌ award 2025, FNRS and​​ FWO (Belgium)
  • Romain Yvinec​​​‌ , member of the​ selection board for the​‌ recruitment of a MCU​​ in Université de Tours​​​‌ on job profile “Analyse​ des Équations aux Dérivées​‌ Partielles (EDP) et Applications”​​ (MCF 0782)

9.1.6 Research​​​‌ administration

  • Frédérique Clément is​ invited member of the​‌ scientific council of Graduate​​ School Life Sciences and​​​‌ Health of University Paris-Saclay,​ and member of Bureau​‌ du comité des équipes-projets​​ du Centre Inria de​​​‌ Saclay
  • Béatrice Laroche is​ director of MaIAGE
  • Eric​‌ Reiter is deputy director​​ of UMR PRC
  • Romain​​​‌ Yvinec is co-head of​ the Bios team in​‌ UMR PRC, co-head of​​ the regional federative structure​​​‌ CaSciModOT (Calcul Scientifique et​ Modélisation Orléans Tours)

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

9.2.1 Teaching​

  • Pascale Crépieux , M2​‌ Biology of Reproduction (2h),​​ M2 Infectiology, Immunity, Vaccinology​​​‌ and Biopharmaceuticals (3h), Université​ de Tours
  • Alice Fohr​‌ , L1 Mathematics/Computer Science​​ (Algebra and Geometry, 24h)​​​‌ , L1 Biology/Chemestry/Earth sciences​ (Mathematics for modeling, 28h),​‌ L2 Physics/Mathematics (Analysis and​​ Geometry, 24h), Université Paris​​​‌ Saclay
  • Louis Fostier ,​ L1 Computer Science, Université​‌ de Tours, Algebra and​​ Analysis (54h)
  • Stefan Haar​​​‌ , M2 Bioinformatics (Analysis​ of dynamics in biological​‌ networks, 24h), Université Paris​​ Saclay
  • Frédéric Jean-Alphonse ,​​​‌ M2 Physiopathology (2h), Université​ de Tours
  • Lorenzo Sala​‌ , M2 Mathématiques et​​ applications (3h30) Université Paris-Cité,​​​‌ M2 Mathématiques pour les​ Sciences du Vivant (2h)​‌ Université Paris-Saclay
  • Romain Yvinec​​ , M2 Infectiology, Immunity,​​​‌ Vaccinology and Biodrugs (3h),​ M2 Physiopathology (2h), Université​‌ de Tours
  • Chloé Weckel​​ , L1 Biology (Mathematical​​​‌ tools, 6h), L2 Biology​ (Statistics, 18h), Université de​‌ Tours

9.2.2 Supervision

  • PhD:​​ Juliette Gourdon, “Manipulation of​​​‌ the intracellular traffic and​ endosomal signaling of gonadotropin​‌ receptors, LH/CGR and FSHR,​​ by nanobodies: deciphering the​​ molecular mechanisms and the​​​‌ consequences on reproduction”, defended‌ on June 3, supervisors:‌​‌ Frédéric Jean-Alphonse and Eric​​ Reiter
  • PhD: Louis Fostier,​​​‌ “Multiscale mathematical modeling of‌ oogenesis in fish”, defended‌​‌ on October 10, supervisors:​​ Frédérique Clément and Romain​​​‌ Yvinec , associate supervisor:‌ Violette Thermes
  • PhD in‌​‌ progress: Aloïs Dauger, “Dynamics​​ of adipose tissue during​​​‌ changes in food intake‌ using mathematical and numerical‌​‌ approaches”, started September 2023,​​ supervisors: Chloé Audebert and​​​‌ Hedi Soula
  • PhD in‌ progress: Aleksandra Tomaszek, “Adipocyte‌​‌ size dynamics: models, mathematical​​ and numerical approaches, data​​​‌ comparison”', started October 2023,‌ supervisors: Chloé Audebert and‌​‌ Laurent Boudin
  • PhD in​​ progress: Marlène Davilma, “Role​​​‌ of miRNAs in the‌ control of oocyte reserve‌​‌ in fish”, started October​​ 2023, supervisors: Frédérique Clément​​​‌ and Violette Thermes
  • PhD‌ in progress: Alice Fohr,‌​‌ “Modeling of X chromosome​​ inactivation”, started September 2024,​​​‌ supevisors: Frédérique Clément and‌ Hélène Leman
  • PhD in‌​‌ progress: Souhila Founas, “Development​​ of a territorial approach​​​‌ for the representation of‌ multirisk scenarios using Petri‌​‌ nets”, started October 2023,​​ supervisors: Corinne Curt and​​​‌ Stefan Haar
  • PhD in‌ progress: Jérôme Kowalski “Whole-body‌​‌ vascular transport and pharmacokinetics​​ models: Application to imaging,​​​‌ in particular of liver”,‌ started December 2022, supervisors:‌​‌ Irène Vignon-Clementel and Lorenzo​​ Sala , associate supervisor​​​‌ Dirk Drasdo
  • PhD in‌ progress: Eleonora Pastremoli, “Towards‌​‌ a digital twin of​​ the gut microbiota: A​​​‌ multidisciplinary approach for an‌ in-depth understanding of composition,‌​‌ function and interaction with​​ the host”, started October​​​‌ 2023, supervisors : Béatrice‌ Laroche and Lorenzo Sala‌​‌
  • PhD in progress: Pamela​​ Romero Jofré, “Computational modeling​​​‌ of biased signaling in‌ G protein-coupled receptors”, started‌​‌ October 2024, supervisors: Misbah​​ Razzaq and Romain Yvinec​​​‌
  • PhD in progress: Chloé‌ Weckel, “Spatiotemporal modeling of‌​‌ signaling pathways: impact of​​ endosomal compartmentalization and application​​​‌ to gonadotropin receptors”, started‌ October 2024, supervisors: Stefan‌​‌ Haar and Romain Yvinec​​ , associate supervisor: Frédéric​​​‌ Jean-Alphonse
  • PhD follow-up committee‌ of Virginie Loison (ED‌​‌ STIC), member Chloé Audebert​​
  • PhD follow-up committee of​​​‌ Federica Padovano (ED 386),‌ member Chloé Audebert
  • PhD‌​‌ follow-up committee of Viviana​​ Gavilanes Guerrero (ED 515),​​​‌ member Chloé Audebert
  • PhD‌ mobility internship of Sagbo‌​‌ Mélain Zinsou (MAP5), supervisor​​ Lorenzo Sala
  • Master Internship:​​​‌ Tayssir Aittoumani, M1 Biology‌ of Reproduction, Université de‌​‌ Tours, supervisors: Pascale Crépieux​​ and Gilles Bruneau
  • Master​​​‌ internship: : Malo Denoual,‌ M2 Modeling and Ecology,‌​‌ Université de Rennes, supervisors:​​ Béatrice Laroche and Lorenzo​​​‌ Sala
  • Master internship: :‌ Omar Gawas, M2 Applied‌​‌ Mathematics, Université de Bordeaux,​​ supervisors: Guillaume Gautreau and​​​‌ Lorenzo Sala
  • Master internship:‌ Julien Joachim, M2 MPRI‌​‌ (Master Parisien de Recherche​​ en Informatique), Université Paris-Saclay,​​​‌ supervisors: Marc de Visme‌ and Stefan Haar
  • Master‌​‌ internship: : Victor Schmitt,​​ M2 Modeling and Ecology,​​​‌ Université de Rennes, supervisors:‌ Silvia Bottini and Lorenzo‌​‌ Sala
  • Master internship: Lou-Anne​​ Trapeaud M2 Biology of​​​‌ Reproduction, Université de Tours,‌ supervisor: Eric Reiter
  • Postdoc:‌​‌ Léo Darrigade, “PDMP-based modeling​​ of the GPCR compartmentalized​​​‌ signaling”, ended on March‌ 31, supervisor: Romain Yvinec‌​‌
  • Postdoc: Pawan Kumar, “Multiscale​​ modeling of single cell-based​​​‌ dynamics of ovarian development”,‌ started October 2024, supervisors:‌​‌ Chloé Audebert , Frédérique​​​‌ Clément and Fabien Crauste​
  • Postdoc: Geoffrey Lacour, “Mathematical​‌ modeling and the development​​ of numerical tools based​​​‌ on neural networks for​ the analysis and prediction​‌ of microbial consortia”, supervisors:​​ Béatrice Laroche and Lorenzo​​​‌ Sala
  • Postdoc: Rosario Medina-Rodríguez,​ “Deep learning models for​‌ automatic ovarian follicle detection​​ from 2D and 3D​​​‌ imaging data”, started June​ 2024, supervisor: Frédérique Clément​‌
  • Postdoc: Chiara Villa, “Coupling​​ physiologically-based kinetic models of​​​‌ endocrine axes with structured​ cell population dynamics models:​‌ An integrative approach of​​ reproductive toxicity”, February-August, supervisors:​​​‌ Frédérique Clément , Romain​ Yvinec

9.2.3 Juries

Chloé​‌ Audebert

  • PhD Jury of​​ Charlotte Dugourd-Camus, Université Claude​​​‌ Bernard Lyon 1, December​ 4

Pascale Crépieux

  • PhD​‌ jury of Tainara Michelotti​​ (referee), Université de Clermont-Ferrand,​​​‌ December 5

Stefan Haar​

  • PhD Jury of Aurélie​‌ Kong Win Chang (referee),​​ université de Grenoble, May​​​‌ 16

Frédéric Jean-Alphonse

  • PhD​ Jury of Ana Novak,​‌ Université d'Orléans, November 3​​
  • PhD Jury of Lara​​​‌ Baschieri (referee), University of​ Modena and Reggio Emilia,​‌ December 25 2024

Béatrice​​ Laroche

  • HDR Jury of​​​‌ Elie Desmond-Le Quéméner, Université​ de Montpellier, December 11​‌
  • HDR Jury od Pascal​​ Zongo (referee), Université de​​​‌ Tours, February 27
  • PhD​ Jury of Ségolène Lireux​‌ (referee), Université de Besançon,​​ April 10
  • PhD Jury​​​‌ of Julien Lombard, Université​ de Lille, January 27​‌
  • PhD Jury of Martin​​ Garic, Sorbonne Université, September​​​‌ 11

Lorenzo Sala

  • PhD​ Jury of Louis Fostier,​‌ Université de Tours, October​​ 10

Romain Yvinec

  • PhD​​​‌ Jury of Emrys Reginato​ (referee), Université Grenoble Alpes,​‌ November 24

9.3 Popularization​​

9.3.1 Participation in Live​​​‌ events

Anne Poupon has​ participated in a round​‌ table for the launching​​ of the SERENA program​​​‌ (regional mentoring program for​ female researchers and teacher-researchers),​‌ July 3, Tours.

Romain​​ Yvinec has animated a​​​‌ workshop on ovarian follicle​ detection in Fête de​‌ la science, October 11-12,​​ Tours.

Chloé Weckel has​​​‌ been involved in the​ Scientific mediation mission “Les​‌ Sciences, c'est leur chance”​​ settled in two primary​​​‌ school classes in Tours​ (32 hours) with the​‌ project entitled “From air​​ to breathing: discovering that​​​‌ they are scientists”. This​ project was awarded a​‌ “la main à la​​ pâte" prize from the​​​‌ French Science Academy.

Chloé​ Weckel has been involved​‌ in the “Chiche” action​​ from Inria: Intervention in​​​‌ five high school classes​ to introduce the world​‌ of digital and mathematical​​ research (5h)

9.3.2 Others​​​‌ science outreach relevant activities​

Chloé Audebert has participated​‌ in the organization of​​ Paris “Maths C pour​​​‌ L” one-week internship for​ undergraduate students.

10 Scientific​‌ production

10.1 Major publications​​

  • 1 articleB.Benjamin​​​‌ Aymard, F.Frédérique​ Clément, F.Frédéric​‌ Coquel and M.Marie​​ Postel. A numerical​​​‌ method for kinetic equations​ with discontinuous equations :​‌ application to mathematical modeling​​ of cell dynamics.​​​‌SIAM Journal on Scientific​ Computing3562013​‌, 27 pagesHAL​​DOIback to text​​​‌
  • 2 articleB.Benjamin​ Aymard, F.Frédérique​‌ Clément, D.Danielle​​ Monniaux and M.Marie​​​‌ Postel. Cell-Kinetics Based​ Calibration of a Multiscale​‌ Model of Structured Cell​​ Populations in Ovarian Follicles​​.SIAM Journal on​​​‌ Applied Mathematics764‌2016, 1471--1491HAL‌​‌DOIback to text​​back to text
  • 3​​​‌ articleB.Benjamin Aymard‌, F.Frédérique Clément‌​‌ and M.Marie Postel​​. Adaptive mesh refinement​​​‌ strategy for a nonconservative‌ transport problem.ESAIM:‌​‌ Mathematical Modelling and Numerical​​ AnalysisAugust 2014,​​​‌ 1381 - 1412HAL‌DOIback to text‌​‌
  • 4 articleC.Celine​​ Bonnet, K.Keltoum​​​‌ Chahour, F.Frédérique‌ Clément, M.Marie‌​‌ Postel and R.Romain​​ Yvinec. Multiscale population​​​‌ dynamics in reproductive biology:‌ singular perturbation reduction in‌​‌ deterministic and stochastic models​​.ESAIM: Proceedings and​​​‌ Surveys672020,‌ 72-99HALDOIback‌​‌ to text
  • 5 inproceedings​​T.Thomas Chatain,​​​‌ S.Stefan Haar,‌ L.Loïg Jezequel,‌​‌ L.Loïc Paulevé and​​ S.Stefan Schwoon.​​​‌ Characterization of Reachable Attractors‌ Using Petri Net Unfoldings‌​‌.CMSB 20148859​​LNCS/LNBIManchester, United Kingdom​​​‌Springer International PublishingNovember‌ 2014, 14HAL‌​‌DOIback to text​​
  • 6 articleT.Thomas​​​‌ Chatain, S.Stefan‌ Haar, J.Juraj‌​‌ Kolčák, L.Loïc​​ Paulevé and A.Aalok​​​‌ Thakkar. Concurrency in‌ Boolean networks.Natural‌​‌ Computing1912020​​, 91--109HALDOI​​​‌back to text
  • 7‌ inproceedingsT.Thomas Chatain‌​‌, S.Stefan Haar​​ and L.Loïc Paulevé​​​‌. Boolean Networks: Beyond‌ Generalized Asynchronicity.AUTOMATA‌​‌ 2018 - 24th IFIP​​ WG 1.5 International Workshop​​​‌ on Cellular Automata and‌ Discrete Complex Systems10875‌​‌Lecture Notes in Computer​​ ScienceGhent, BelgiumSpringer​​​‌June 2018, 29-42‌HALDOIback to‌​‌ text
  • 8 articleF.​​Frédérique Clément, B.​​​‌Béatrice Laroche and F.‌Frédérique Robin. Analysis‌​‌ and numerical simulation of​​ an inverse problem for​​​‌ a structured cell population‌ dynamics model.Mathematical‌​‌ Biosciences and Engineering16​​4Le DOI n'est​​​‌ pas actif, voir http://www.aimspress.com/article/10.3934/mbe.2019150‌2019, 3018-3046HAL‌​‌DOIback to text​​
  • 9 articleF.Frédérique​​​‌ Clément and D.Danielle‌ Monniaux. Multiscale modelling‌​‌ of ovarian follicular selection.​​.Progress in Biophysics​​​‌ and Molecular Biology113‌3December 2013,‌​‌ 398-408HALDOIback​​ to text
  • 10 article​​​‌F.Frédérique Clément,‌ F.Frédérique Robin and‌​‌ R.Romain Yvinec.​​ Analysis and calibration of​​​‌ a linear model for‌ structured cell populations with‌​‌ unidirectional motion : Application​​ to the morphogenesis of​​​‌ ovarian follicles.SIAM‌ Journal on Applied Mathematics‌​‌791February 2019​​, 207-229HALDOI​​​‌back to text
  • 11‌ articleF.Frédérique Clément‌​‌, F.Frédérique Robin​​ and R.Romain Yvinec​​​‌. Stochastic nonlinear model‌ for somatic cell population‌​‌ dynamics during ovarian follicle​​ activation.Journal of​​​‌ Mathematical Biology823‌2021, 1-52HAL‌​‌DOIback to text​​
  • 12 articleJ.Julien​​​‌ Deschamps, E.Erwan‌ Hingant and R.Romain‌​‌ Yvinec. Quasi steady​​ state approximation of the​​​‌ small clusters in Becker--Döring‌ equations leads to boundary‌​‌ conditions in the Lifshitz--Slyozov​​ limit.Communications in​​​‌ Mathematical Sciences155‌2017, 1353-1384HAL‌​‌DOIback to text​​​‌back to text
  • 13​ articleT.Tamara El​‌ Bouti, T.Thierry​​ Goudon, S.Simon​​​‌ Labarthe, B.Béatrice​ Laroche, B.Bastien​‌ Polizzi, A.Amira​​ Rachah, M.Magali​​​‌ Ribot and R.Rémi​ Tesson. A mixture​‌ model for the dynamic​​ of the gut mucus​​​‌ layer.ESAIM: Proceedings​55décembre2016,​‌ 111-130HALDOIback​​ to text
  • 14 article​​​‌P. A.Patrick A​ Fletcher, F.Frédérique​‌ Clément, A.Alexandre​​ Vidal, J.Joel​​​‌ Tabak and R.Richard​ Bertram. Interpreting frequency​‌ responses to dose-conserved pulsatile​​ input signals in simple​​​‌ cell signaling motifs..​PLoS ONE94​‌2014, e95613HAL​​DOIback to text​​​‌
  • 15 inproceedingsS.Stefan​ Haar, L.Loïc​‌ Paulevé and S.Stefan​​ Schwoon. Drawing the​​​‌ Line: Basin Boundaries in​ Safe Petri Nets.​‌CMSB 2020 - 18th​​ International Conference on Computational​​​‌ Methods in Systems Biology​Konstanz / Online, Germany​‌2020HALDOIback​​ to text
  • 16 article​​​‌D.Domitille Heitzler,​ G.Guillaume Durand,​‌ N.Nathalie Gallay,​​ A.Aurélien Rizk,​​​‌ S.Seungkirl Ahn,​ J.Jihee Kim,​‌ J. D.Jonathan D​​ Violin, L.Laurence​​​‌ Dupuy, C.Christophe​ Gauthier, V.Vincent​‌ Piketty, P.Pascale​​ Crépieux, A.Anne​​​‌ Poupon, F.Frédérique​ Clément, F.François​‌ Fages, R. J.​​Robert J Lefkowitz and​​​‌ E.Eric Reiter.​ Competing G protein-coupled receptor​‌ kinases balance G protein​​ and -arrestin signaling..​​​‌Molecular Systems Biology8​June 2012, 1-17​‌HALDOIback to​​ textback to text​​​‌
  • 17 articleT.Thomas​ Hélie and B.Béatrice​‌ Laroche. Computable convergence​​ bounds of series expansions​​​‌ for infinite dimensional linear-analytic​ systems and application.​‌Automatica5092014​​, 2334-2340HALDOI​​​‌back to text
  • 18​ articleT.Thomas Hélie​‌ and B.Béatrice Laroche​​. Computation of Convergence​​​‌ Bounds for Volterra Series​ of Linear-Analytic Single-Input Systems​‌.IEEE Transactions on​​ Automatic Control569​​​‌September 2011, 2062-2072​HALDOIback to​‌ text
  • 19 articleE.​​Erwan Hingant and R.​​​‌Romain Yvinec. The​ Becker-Doring Process: Pathwise Convergence​‌ and Phase Transition Phenomena​​.Journal of Statistical​​​‌ Physics17752018​, 506-527HALDOI​‌back to text
  • 20​​ articleS.Simon Labarthe​​​‌, B.Bastien Polizzi​, T.Thuy Phan​‌, T.Thierry Goudon​​, M.Magali Ribot​​​‌ and B.Béatrice Laroche​. A mathematical model​‌ to investigate the key​​ drivers of the biogeography​​​‌ of the colon microbiota.​.Journal of Theoretical​‌ Biology46272019​​, 552-581HALDOI​​​‌back to text
  • 21​ articleD.Danielle Monniaux​‌, P.Philippe Michel​​, M.Marie Postel​​​‌ and F.Frédérique Clément​. Multiscale modeling of​‌ ovarian follicular development: From​​ follicular morphogenesis to selection​​​‌ for ovulation.Biology​ of the Cell108​‌6June 2016,​​ 1-12HALDOIback​​​‌ to text
  • 22 article​L.Loïc Paulevé,​‌ J.Juraj Kolčák,​​ T.Thomas Chatain and​​ S.Stefan Haar.​​​‌ Reconciling Qualitative, Abstract, and‌ Scalable Modeling of Biological‌​‌ Networks.Nature Communications​​112020, 4256​​​‌HALDOIback to‌ text
  • 23 articleM.‌​‌Marie Postel, A.​​Alice Karam, G.​​​‌Guillaume Pézeron, S.‌Sylvie Schneider-Maunoury and F.‌​‌Frédérique Clément. A​​ multiscale mathematical model of​​​‌ cell dynamics during neurogenesis‌ in the mouse cerebral‌​‌ cortex.BMC Bioinformatics​​201December 2019​​​‌HALDOI
  • 24 misc‌G. K.Giann Karlo‌​‌ Aguirre Samboni, S.​​Stefan Haar, L.​​​‌Loic Paulevé, S.‌Stefan Schwoon and N.‌​‌Nick Würdemann. Attractor​​ Basins in Concurrent Systems​​​‌.2024HALDOI‌back to text
  • 25‌​‌ articleP.Peipei Shang​​. Cauchy problem for​​​‌ multiscale conservation laws: Application‌ to structured cell populations‌​‌.Journal of Mathematical​​ Analysis and Applications401​​​‌22013, 896‌ - 920HALDOI‌​‌back to textback​​ to text
  • 26 article​​​‌S.Stefanie Widder,‌ R. J.Rosalind J‌​‌ Allen, T.Thomas​​ Pfeiffer, T. P.​​​‌Thomas P Curtis,‌ C.Carsten Wiuf,‌​‌ W. T.William T​​ Sloan, O. X.​​​‌Otto X Cordero,‌ S. P.Sam P‌​‌ Brown, B.Babak​​ Momeni, W.Wenying​​​‌ Shou, H.Helen‌ Kettle, H. J.‌​‌Harry J Flint,​​ A. F.Andreas F​​​‌ Haas, B.Béatrice‌ Laroche, J.-U.Jan-Ulrich‌​‌ Kreft, P. B.​​Paul B Rainey,​​​‌ S.Shiri Freilich,‌ S.Stefan Schuster,‌​‌ K.Kim Milferstedt,​​ J. R.Jan R​​​‌ van der Meer,‌ T.Tobias Groszkopf,‌​‌ J.Jef Huisman,​​ A.Andrew Free,​​​‌ C.Cristian Picioreanu,‌ C.Christopher Quince,‌​‌ I.Isaac Klapper,​​ S.Simon Labarthe,​​​‌ B. F.Barth F‌ Smets, H.Harris‌​‌ Wang, J.Jérôme​​ Hamelin, J.Jérôme​​​‌ Harmand, J.-P.Jean-Philippe‌ Steyer, E.Eric‌​‌ Trably, I. N.​​Isaac Newton Institute Fellows​​​‌ and O. S.Orkun‌ S Soyer. Challenges‌​‌ in microbial ecology: building​​ predictive understanding of community​​​‌ function and dynamics..‌ISME Journal10Marco‌​‌ Cosentino Lagomarsino (LCQB) is​​ a member of Isaac​​​‌ Newton Institute Fellows consortium.‌2016, 1-12HAL‌​‌DOIback to text​​
  • 27 articleR.Romain​​​‌ Yvinec, P.Pascale‌ Crépieux, E.Eric‌​‌ Reiter, A.Anne​​ Poupon and F.Frédérique​​​‌ Clément. Advances in‌ computational modeling approaches of‌​‌ pituitary gonadotropin signaling.​​Expert Opinion on Drug​​​‌ Discovery1392018‌, 799-813HALDOI‌​‌back to text

10.2​​ Publications of the year​​​‌

International journals

Invited​​​‌ conferences

  • 47 inproceedingsS.​Stefan Haar. Searching​‌ for Attractors : To​​ infinity and beyond.​​​‌AUTOMATA 2025 - 31st​ International Workshop on Cellular​‌ Automata and Discrete Complex​​ SystemsLille, FranceJune​​​‌ 2025HALback to​ text

International peer-reviewed conferences​‌

  • 48 inproceedingsS.Stefan​​ Haar and J.Juri​​​‌ Kolčák. Continuous Petri​ Nets Faithfully Fluidify Most​‌ Permissive Boolean Networks.​​LNBICMSB 2025 -​​​‌ 23rd International Conference on​ Computational Methods in Systems​‌ BiologyLyon, FranceSpringer​​September 2025HALback​​​‌ to text
  • 49 inproceedings​P.Pamela Romero,​‌ J.Juliette Gourdon,​​ R.Romain Yvinec,​​​‌ F.Frederic Jean-Alphonse and​ M.Misbah Razzaq.​‌ Computational Prediction of Intracellular​​ Signaling Behavior via Machine​​​‌ Learning.Springer Communications​ in Computer and Information​‌ Science - CCIS Series​​SIMBig 2025 - 12th​​​‌ International Conference on Information​ Management and Big Data​‌Lima, PeruOctober 2025​​HALback to text​​​‌

Conferences without proceedings

  • 50​ inproceedingsL.Lorenzo Sala​‌. Hybrid Inference for​​ Microbial Community Models: Physics-Informed​​​‌ Neural Networks for Parameter​ Estimation in Generalized Lotka-Volterra​‌ System.2025 Workshop​​ on Modeling, Optimization, and​​​‌ Control in BiomedicineFrankfurt,​ GermanyAugust 2025HAL​‌
  • 51 inproceedingsL.Lorenzo​​ Sala. Physics-Informed Neural​​​‌ Networks for Generalized Lotka-Volterra​ models: towards parameter estimation​‌ in microbial communities.​​SMAI 2025 - 12ème​​​‌ Biennale Française des Mathématiques​ Appliquées et IndustriellesCarcans-Maubuisson​‌ (Gironde), FranceJune 2025​​HAL
  • 52 inproceedingsL.​​​‌Lorenzo Sala. Physics-informed​ neural networks for data-integrated​‌ modeling of microbial interactions​​.DSABNS 2025 -​​​‌ 16th Dynamical Systems applied​ on Biology and Natural​‌ SciencesNapoli, ItalyJanuary​​ 2025HAL
  • 53 inproceedings​​​‌R.Romain Yvinec.​ Ovarian follicle population dynamics​‌ along lifetime.Journées​​ Math Bio Santé 2025​​​‌Montpellier, FranceNovember 2025​HAL
  • 54 inproceedingsR.​‌Romain Yvinec. Stochastic​​ Becker-Döring model: large population​​ and large time results​​​‌ for phase transition phenomena‌.MOME2 : Journée‌​‌ de modélisation mathématique pour​​ l'écologieAmiens, FranceNovember​​​‌ 2025HAL

Doctoral dissertations‌ and habilitation theses

Reports &‌ preprints

10.3 Cited publications

  • 63​​​‌ articleG.G. Allaire‌. Homogenization and two-scale‌​‌ convergence.SIAM J.​​ Math. Anal.236​​​‌1992, 1482--1518back‌ to text
  • 64 article‌​‌V.V. Andasari,​​ R.R.T. Roper,​​​‌ M.M.H. Swat and‌ M.M.A.J. Chaplain.‌​‌ Integrating intracellular dynamics using​​​‌ CompuCell3D and Bionetsolver: Applications​ to multiscale modelling of​‌ cancer cell growth and​​ invasion.PLoS One​​​‌732012back​ to text
  • 65 article​‌K.K. Ball,​​ T.T.G. Kurtz,​​​‌ L.L. Popovic and​ G.G. Rempala.​‌ Asymptotic analysis of multiscale​​ approximations to reaction networks​​​‌.Ann. Appl. Probab.​1642006,​‌ 1925--1961back to text​​
  • 66 articleJ.J.A.​​​‌ Cañizo, J.J.A.​ Carrillo and S.S.​‌ Cuadrado. Measure solutions​​ for some models in​​​‌ population dynamics.Acta​ Appl. Math.1231​‌2013, 141--156back​​ to text
  • 67 article​​​‌N.N. Champagnat,​ R.R. Ferrière and​‌ S.S. Méléard.​​ Individual-based probabilistic models of​​​‌ adaptive evolution and various​ scaling approximations.Progr.​‌ Probab.592005,​​ 75--113back to text​​​‌
  • 68 articleF.F.​ Clément, A.A.​‌ Fohr and H.H.​​ Leman. Bifurcation analysis​​​‌ for gene regulatory networks​ embedding a toggle-switch model​‌ : Application to X​​ chromosome inactivation.SIAM​​​‌ J. Appl. Dyn. Syst.​Accepted2026back to​‌ text
  • 69 articleT.​​T. Crestaux, O.​​​‌O. Le Mâitre and​ J.-M.J.-M. Martinez.​‌ Polynomial chaos expansion for​​ sensitivity analysis.Reliab.​​​‌ Eng. Syst. Safe94​72009, 1161--1172​‌back to text
  • 70​​ articleT.T. Dębiec​​​‌, P.P. Gwiazda​, K.K. Lyczek​‌ and A.A. Świerczewska-Gwiazda​​. Relative entropy method​​​‌ for measure-valued solutions in​ natural sciences.Topol.​‌ Methods Nonlinear Anal.52​​12018, 311--335​​​‌back to text
  • 71​ bookP.P. Érdi​‌ and J.J. Tóth​​. Mathematical Models of​​​‌ Chemical Reactions: Theory and​ Applications of Deterministic and​‌ Stochastic Models.Princeton​​ University Press; 1st edition​​​‌1989back to text​
  • 72 articleK.K.​‌ Faust, F.F.​​ Bauchinger, B.B.​​​‌ Laroche, S.S.​ De Buyl, L.​‌L. Lahti, A.​​A.D Washburne, D.​​​‌D. Gonze and S.​S. Widder. Signatures​‌ of ecological processes in​​ microbial community time series​​​‌.Microbiome61​2018, 120back​‌ to text
  • 73 article​​A.A. Gábor and​​​‌ J.J.R. Banga.​ Robust and efficient parameter​‌ estimation in dynamic models​​ of biological systems.​​​‌BMC Syst. Biol.9​12015, 74​‌back to text
  • 74​​ articleP.P. Gabriel​​​‌. Measure solutions to​ the conservative renewal equation​‌.arXiv:1704.005822017back​​ to text
  • 75 article​​​‌A.A. Gelig and​ A.A. Churilov.​‌ Frequency methods in the​​ theory of pulse-modulated control​​​‌ systems.Autom. Remote​ Control672006,​‌ 1752-1767back to text​​
  • 76 articleA.A.N.​​​‌ Gorban. Model reduction​ in chemical dynamics: slow​‌ invariant manifolds, singular perturbations,​​ thermodynamic estimates, and analysis​​​‌ of reaction graph.​Curr. Opin. Chem. Eng.​‌212018, 48-59​​back to text
  • 77​​​‌ articleM.M. Haghebaert​, B.B. Laroche​‌, L.L. Sala​​, S.S. Mondot​​​‌ and J.J. Doré​. A mechanistic modelling​‌ approach of the host--microbiota​​ interactions to investigate beneficial​​ symbiotic resilience in the​​​‌ human gut.J.‌ R. Soc. Interface21‌​‌2152024, 20230756​​back to text
  • 78​​​‌ bookB.B. Ingalls‌. Mathematical Modeling in‌​‌ Systems Biology. An Introduction​​.The MIT Press;​​​‌ 1st edition2013back‌ to textback to‌​‌ text
  • 79 incollectionB.​​B. Iooss and P.​​​‌P. Lemâitre. A‌ review on global sensitivity‌​‌ analysis methods.Uncertainty​​ management in simulation-optimization of​​​‌ complex systemsSpringer2015‌, 101--122back to‌​‌ text
  • 80 articleJ.​​J. Jacques and C.​​​‌C. Preda. Functional‌ data clustering: a survey‌​‌.Adv. Data Ana.​​ Classif.832014​​​‌, 231--255back to‌ text
  • 81 articleG.‌​‌G. Jamróz. Measure-transmission​​ metric and stability of​​​‌ structured population models.‌Nonlinear Anal. Real World‌​‌ Appl.252015,​​ 9--30back to text​​​‌
  • 82 articleH.-W.H.-W.‌ Kang, T.T.G.‌​‌ Kurtz and L.L.​​ Popovic. Central limit​​​‌ theorems and diffusion approximations‌ for multiscale Markov chain‌​‌ models.Ann. Appl.​​ Probab.2422014​​​‌, 721--759back to‌ text
  • 83 articleT.‌​‌T.G. Kurtz. Strong​​ approximation theorems for density​​​‌ dependent Markov chains.‌Stochastic Process. Appl.6‌​‌1978, 223-240back​​ to text
  • 84 article​​​‌C.C.H. Lee and‌ H.H.G. Othmer.‌​‌ A multi-time-scale analysis of​​ chemical reaction networks: I.​​​‌ Deterministic systems.J.‌ Math. Biol.603‌​‌2009, 387–450back​​ to text
  • 85 book​​​‌R.R.J. Leveque.‌ Finite Volume Methods for‌​‌ Hyperbolic Problems.Cambridge​​ ; New YorkCambridge​​​‌ University Pressaug 2002‌back to text
  • 86‌​‌ articleH. A.H.​​ AND Steiert Maiwald.​​​‌ Driving the model to‌ its limit: Profile likelihood‌​‌ based model reduction.​​PLoS One119​​​‌2016, 1-18back‌ to text
  • 87 article‌​‌C.C. Marr,​​ M.M. Strasser,​​​‌ M.M. Schwarzfischer,‌ T.T. Schroeder and‌​‌ F.F.J. Theis.​​ Multi-scale modeling of GMP​​​‌ differentiation based on single-cell‌ genealogies: Multi-scale modeling of‌​‌ GMP differentiation.FEBS​​ J.279182012​​​‌, 3488--3500back to‌ text
  • 88 bookS.‌​‌S. Méleard and V.​​V. Bansaye. Stochastic​​​‌ Models for Structured Populations‌.ChamSpringer International‌​‌ Publishing2015back to​​ text
  • 89 articleP.​​​‌P. Michel, S.‌S. and B.B.‌​‌ Perthame. General relative​​ entropy inequality: an illustration​​​‌ on growth models.‌J. Math. Pures Appl.‌​‌8492005,​​ 1235--1260back to text​​​‌
  • 90 articleK.K.‌ Morohaku. A way‌​‌ for in vitro/ex vivo​​ egg production in mammals​​​‌.J. Reprod. Dev.‌6542019,‌​‌ 281-287back to text​​
  • 91 articleO.O.​​​‌ Ovaskainen, D.D.‌ Finkelshtein, O.O.‌​‌ Kutoviy, S.S.​​ Cornell, B.B.​​​‌ Bolker and Y.Y.‌ Kondratiev. A general‌​‌ mathematical framework for the​​ analysis of spatiotemporal point​​​‌ processes.Theor. Ecol.‌712014,‌​‌ 101--113back to text​​
  • 92 bookB.B.​​​‌ Perthame. Transport equations‌ in biology.Frontiers‌​‌ in MathematicsBaselBirkhäuser​​​‌ Basel2007back to​ text
  • 93 articleL.​‌L. Popovic. Large​​ deviations of Markov chains​​​‌ with multiple time-scales.​Stoch. Process. Appl.2018​‌back to text
  • 94​​ articleA.A. Pratap​​​‌, K.K.L. Garner​, M.M. Voliotis​‌, K.K. Tsaneva-Atanasova​​ and C.C.A. McArdle​​​‌. Mathematical modeling of​ gonadotropin-releasing hormone signaling.​‌Mol. Cell. Endocrinol.449​​2017, 42 -​​​‌ 55back to text​
  • 95 articleS.S.​‌ Prokopiou, L.L.​​ Barbarroux, S.S.​​​‌ Bernard, J.J.​ Mafille, Y.Y.​‌ Leverrier, J.J.​​ Arpin, O.O.​​​‌ Gandrillon and F.F.​ Crauste. Multiscale modeling​‌ of the early CD8​​ T-cell immune response in​​​‌ lymph nodes: An integrative​ study.Computation2​‌42014, 159--181​​back to text
  • 96​​​‌ articleJ.J.O. Ramsay​, G.G. Hooker​‌, D.D. Campbell​​ and J.J. Cao​​​‌. Parameter estimation for​ differential equations: a generalized​‌ smoothing approach.J.​​ Roy. Statist. Soc. Ser.​​​‌ B6952007​, 741--796back to​‌ text
  • 97 articleS.​​S. Rao, A.​​​‌A. Van der Schaft​, K.K. Van​‌ Eunen, B.B.M.​​ Bakker and B.B.​​​‌ Jayawardhana. A model​ reduction method for biochemical​‌ reaction networks.BMC​​ Syst. Biol.81​​​‌2014, 52back​ to text
  • 98 article​‌A.A. Raue,​​ B.B. Steiert,​​​‌ M.M. Schelker,​ C.C. Kreutz,​‌ T.T. Maiwald,​​ H.H. Hass,​​​‌ J.J. Vanlier,​ C.C. Tönsing,​‌ L.L. Adlung,​​ R.R. Engesser,​​​‌ W.W. Mader,​ T.T. Heinemann,​‌ J.J. Hasenauer,​​ M.M. Schilling,​​​‌ T.T. Höfer,​ E.E. Klipp,​‌ F.F. Theis,​​ U.U. Klingmüller,​​​‌ B.B. Schöberl and​ J.J. Timmer.​‌ Data2Dynamics: A modeling environment​​ tailored to parameter estimation​​​‌ in dynamical systems.​Bioinformatics31212015​‌, 3558--3560back to​​ text
  • 99 articleJ.​​​‌J. Starruß, W.​W. de Back,​‌ L.L. Brusch and​​ A.A. Deutsch.​​​‌ Morpheus: A user-friendly modeling​ environment for multiscale and​‌ multicellular systems biology.​​Bioinformatics3092014​​​‌, 1331--1332back to​ text
  • 100 articleR.​‌R.R Stein, V.​​V. Bucci, N.​​​‌N.C. Toussaint, C.​C.G. Buffie, G.​‌G. Rätsch, E.​​E.G. Pamer, C.​​​‌C. Sander and J.​J.B. Xavier. Ecological​‌ modeling from time-series inference:​​ insight into dynamics and​​​‌ stability of intestinal microbiota​.PLoS Comput. Biol.​‌9122013,​​ e1003388back to text​​​‌
  • 101 articleS.S.​ Xiao, J.J.R.​‌ Coppeta, H.H.B.​​ Rogers, B.B.C.​​​‌ Isenberg, J.J.​ Zhu, S.S.A.​‌ Olalekan, K.K.E.​​ McKinnon, D.D.​​​‌ Dokic, A.A.S.​ Rashedi, D.D.J.​‌ Haisenleder, S.S.S.​​ Malpani, C.C.A.​​​‌ Arnold-Murray, K.K.​ Chen, M.M.​‌ Jiang, L.L.​​ Bai, C.C.T.​​ Nguyen, J.J.​​​‌ Zhang, M.M.M.‌ Laronda, T.T.J.‌​‌ Hope, K.K.P.​​ Maniar, M.M.E.​​​‌ Pavone, M.M.J.‌ Avram, E.E.C.‌​‌ Sefton, S.S.​​ Getsios, J.J.E.​​​‌ Burdette, J.J.J.‌ Kim, J.J.T.‌​‌ Borenstein and T.T.K.​​ Woodruff. A microfluidic​​​‌ culture model of the‌ human reproductive tract and‌​‌ 28-day menstrual cycle.​​Nat. Commun.82017​​​‌, 14584back to‌ text