2025Activity reportProject-TeamMONC
RNSR: 201521155J- Research center Inria Centre at the University of Bordeaux
- In partnership with:CNRS, Bordeaux INP
- Team name: Mathematical modeling for Oncology
- In collaboration with:Institut de Mathématiques de Bordeaux (IMB)
Creation of the Project-Team: 2016 November 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
- A6. Modeling, simulation and control
- A6.1. Methods in mathematical modeling
- A6.1.1. Continuous Modeling (PDE, ODE)
- A6.1.4. Multiscale modeling
- A6.1.5. Multiphysics modeling
- A6.2. Scientific computing, Numerical Analysis & Optimization
- A6.2.1. Numerical analysis of PDE and ODE
- A6.2.4. Statistical methods
- A6.2.6. Optimization
- A6.2.7. HPC for machine learning
- A6.3. Computation-data interaction
- A6.3.1. Inverse problems
- A6.3.2. Data assimilation
- A6.3.3. Data processing
- A6.3.4. Model reduction
- A6.5. Mathematical modeling for physical sciences
- A6.5.2. Fluid mechanics
- A9. Artificial intelligence
- A9.2. Machine learning
Other Research Topics and Application Domains
- B1.1.7. Bioinformatics
- B1.1.8. Mathematical biology
- B1.1.10. Systems and synthetic biology
- B2.2.3. Cancer
- B2.4.2. Drug resistance
- B2.6.1. Brain imaging
- B2.6.3. Biological Imaging
1 Team members, visitors, external collaborators
Research Scientists
- Nicolas Papadakis [Team leader, CNRS, Senior Researcher]
- Baudouin Denis de Senneville [CNRS, Researcher, HDR]
- Christele Etchegaray [INRIA, Researcher]
- Olivier Saut [CNRS, Senior Researcher, HDR]
Faculty Member
- Astrid Decoene [UNIV BORDEAUX, Professor Delegation]
Post-Doctoral Fellows
- Tiphaine Delaunay [UNIV BORDEAUX, Post-Doctoral Fellow, until Jun 2025]
- Van Linh Le [BERGONIE, Post-Doctoral Fellow, from Aug 2025]
- Van Linh Le [INRIA, Post-Doctoral Fellow, until Jul 2025]
- Simone Nati Poltri [UNIV COTE D'AZUR, from Feb 2025 until Aug 2025]
PhD Students
- Simon Bihoreau [INRIA]
- Khaoula Chahdi [UNIV BORDEAUX, ATER]
- Antonin Clerc [UNIV BORDEAUX, from Oct 2025]
- Paul Croizet [BERGONIE, CIFRE, from Oct 2025]
- Kylian Desier [UNIV BORDEAUX]
- Heloise Dudoignon [INRIA, from Oct 2025]
- Julien Granet [CNRS, from Oct 2025]
- Julien Granet [CNRS, until Sep 2025]
- Faiza Laanani [UNIV BORDEAUX]
- Jonathan Legrand [INRIA]
- Yannis Petitpas [UNIV BORDEAUX]
- Clementine Phung-Ngoc [INSERM]
- Florian Robert [UNIV BORDEAUX, until Sep 2025]
- Tom Roux [UNIV BORDEAUX]
- Olivier Sutter [CHU AVICIENNE AP-HP, until Oct 2025]
- Idris Tatachak [FINAPOLLINE, CIFRE, from Aug 2025]
- Valentine Tosel [UNIV BORDEAUX, from Oct 2025]
Technical Staff
- Luc Lafitte [INRIA, Engineer, from May 2025]
- Luc Lafitte [INRIA, Engineer, until Jan 2025]
Interns and Apprentices
- Clement Delmas [INRAE, Intern, from Apr 2025 until Sep 2025]
- Felicia Dossou [CNRS, Intern, from Jun 2025 until Aug 2025]
- Raphael Durand [IMB, Intern, from Apr 2025 until Aug 2025]
- Kouadio Thimote Kouame [INRIA, Intern, from Aug 2025 until Aug 2025]
- Kouadio Thimote Kouame [INRIA, Intern, from May 2025 until Jul 2025]
- Maria Larsen [BORDEAUX INP, Intern, from Sep 2025]
- Maele Lebreton-Cheminel [UNIV BORDEAUX, Intern, from Jun 2025]
- Julie Lesthelle [IMB, Intern, until Jul 2025]
- Synthia Sebastien [INRIA, Apprentice, until Sep 2025]
Administrative Assistants
- Catherine Cattaert Megrat [INRIA]
- Marie-Melissandre Roy [INRIA]
External Collaborators
- Annabelle Collin [UNIV NANTES]
- David Dean [UNIV BORDEAUX]
- Charles Mesguich [CHU BORDEAUX]
- Aguirre Mimoun [CHU BORDEAUX, from Mar 2025]
- Damien Voyer [EIGSI]
2 Overall objectives
2.1 Objectives
The MONC project-team aims at developing new mathematical models from partial differential equations and statistical methods and based on biological and medical knowledge. Our goal is ultimately to be able to help clinicians and/or biologists to better understand, predict or control the evolution of the disease and possibly evaluate the therapeutic response, in a clinical context or for pre-clinical studies. We develop patient-specific approaches (mainly based on medical images) as well as population-type approaches in order to take advantage of large databases.
In vivo modeling of tumors is limited by the amount of information available. However, recently, there have been dramatic increases in the scope and quality of patient-specific data from non-invasive imaging methods, so that several potentially valuable measurements are now available to quantitatively measure tumor evolution, assess tumor status as well as anatomical or functional details. Using different techniques from biology or imaging - such as CT scan, magnetic resonance imaging (MRI), or positron emission tomography (PET) - it is now possible to evaluate and define tumor status at different levels or scales: physiological, molecular and cellular.
In the meantime, the understanding of the biological mechanisms of tumor growth, including the influence of the micro-environment, has greatly increased. Medical doctors now have access to a wide spectrum of therapies (surgery, mini-invasive techniques, radiotherapies, chemotherapies, targeted therapies, immunotherapies...).
Our project aims at helping oncologists in their followup of patients via the development of novel quantitative methods for evaluation cancer progression. The idea is to build phenomenological mathematical models based on data obtained in the clinical imaging routine like CT scans, MRIs and PET scans. We therefore want to offer medical doctors patient-specific tumor evolution models, which are able to evaluate – on the basis of previously collected data and within the limits of phenomenological models – the time evolution of the pathology at subsequent times and the response to therapies. More precisely, our goal is to help clinicians answer the following questions thanks to our numerical tools:
- When is it necessary to start a treatment?
- What is the best time to change a treatment?
- When to stop a treatment?
We also intend to incorporate real-time model information for improving the accuracy and efficacy of non invasive or micro-invasive tumor ablation techniques like acoustic hyperthermia, electroporation, radio-frequency, cryo-ablation and of course radiotherapies.
There is therefore a dire need of integrating biological knowledge into mathematical models based on clinical or experimental data. A major purpose of our project is also to create new mathematical models and new paradigms for data assimilation that are adapted to the biological nature of the disease and to the amount of multi-modal data available.
2.2 General strategy
3D numerical simulation of a meningioma.
3D numerical simulation of a lung tumor.
Our general strategy may be described with the following sequence:
- Stage 1: Derivation of mechanistic models based on the biological knowledge and the available observations. The construction of such models relies on the up-to-date biological knowledge at the cellular level including description of the cell-cycle, interaction with the microenvironement (angiogenesis, interaction with the stroma). Such models also include a "macroscopic" description of specific molecular pathways that are known to have a critical role in carcinogenesis or that are targeted by new drugs. We emphasize that for this purpose, close interactions with biologists are crucial. Lots of works devoted to modeling at the cellular level are available in the literature. However, in order to be able to use these models in a clinical context, the tumor is also to be described at the tissue level. The in vitro mechanical characterization of tumor tissues has been widely studied. Yet no description that could be patient specific or even tumor specific is available. It is therefore necessary to build adapted phenomenological models, according to the biological and clinical reality.
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Stage 2: Data collection. In the clinical context, data may come from medical imaging (MRI, CT-Scan, PET scan) at different time points. We need longitudinal data in time in order to be able to understand or describe the evolution of the disease. Data may also be obtained from analyses of blood samples, biopsies or other quantitative biomarkers. A close collaboration with clinicians is required for selecting the specific cases to focus on, the understanding of the key points and data, the classification of the grades of the tumors, the understanding of the treatment,...In the preclinical context, data may for instance be macroscopic measurements of the tumor volume for subcutaneous cases, green fluorescence protein (GFP) quantifications for total number of living cells, non-invasive bioluminescence signals or even imaging obtained with devices adapted to small animals.
- Data processing: Besides selection of representative cases by our collaborators, most of the time, data has to be processed before being used in our models. We develop novel methods for semi-automatic (implemented in SegmentIt) as well as supervized approaches (machine learning or deep learning) for segmentation, non-rigid registration and extraction of image texture information (radiomics, deep learning).
- Stage 3: Adaptation of the model to data. The model has to be adapted to data: it is useless to have a model considering many biological features of the disease if it cannot be reliably parameterized with available data. For example, very detailed descriptions of the angiogenesis process found in the literature cannot be used, as they have too much parameters to determine for the information available. A pragmatic approach has to be developed for this purpose. On the other hand, one has to try to model any element that can be useful to exploit the image. Parameterizing must be performed carefully in order to achieve an optimal trade-off between the accuracy of the model, its complexity, identifiability and predictive power. Parameter estimation is a critical issue in mathematical biology: if there are too many parameters, it will be impossible to estimate them but if the model is too simple, it will be too far from reality.
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Stage 4: Data assimilation. Because of data complexity and scarcity - for example multimodal, longitudinal medical imaging - data assimilation is a major challenge. Such a process is a combination of methods for solving inverse problems and statistical methods including machine learning strategies.
- Personalized models: Currently, most of the inverse problems developed in the team are solved using a gradient method coupled with some MCMC type algorithm. We are now trying to use more efficient methods as Kalman type filters or so-called Luenberger filter (nudging). Using sequential methods could also simplify Stage 3 because they can be used even with complex models. Of course, the strategy used by the team depends on the quantity and the quality of data. It is not the same if we have an homogeneous population of cases or if it is a very specific isolated case.
- Statistical learning: In some clinical cases, there is no longitudinal data available to build a mathematical model describing the evolution of the disease. In these cases (e.g. in our collaboration with Humanitas Research Hospital on low grade gliomas or Institut Bergonié on soft-tissue sarcoma), we use machine learning techniques to correlate clinical and imaging features with clinical outcome of patients (radiomics). When longitudinal data and a sufficient number of patients are available, we combine this approach and mathematical modeling by adding the personalized model parameters for each patient as features in the statistical algorithm. Our goal is then to have a better description of the evolution of the disease over time (as compared to only taking temporal variations of features into account as in delta-radiomics approaches). We also plan to use statistical algorithms to build reduced-order models, more efficient to run or calibrate than the original models.
- Data assimilation of gene expression. "Omics" data become more and more important in oncology and we aim at developing our models using this information as well. For example, in our work on GIST, we have taken the effect of a Ckit mutation on resistance to treatment into account. However, it is still not clear how to use in general gene expression data in our macroscopic models, and particularly how to connect the genotype to the phenotype and the macroscopic growth. We expect to use statistical learning techniques on populations of patients in order to move towards this direction, but we emphasize that this task is very prospective and is a scientific challenge in itself.
- Stage 5: Patient-specific Simulation and prediction, Stratification. Once the mechanistic models have been parametrized, they can be used to run patient-specific simulations and predictions. The statistical models offer new stratifications of patients (i.t. an algorithm that tells from images and clinical information wheter a patient with soft-tissue sarcoma is more likely to be a good or bad responder to neoadjuvant chemotherapy). Building robust algorithms (e.g. that can be deployed over multiple clinical centers) also requires working on quantifying uncertainties.
General strategy of the team to build meaningful models in oncology.
3 Research program
3.1 Introduction
We are working in the context of data-driven medicine against cancer. We aim at coupling mathematical models with data to address relevant challenges for biologists and clinicians in order for instance to improve our understanding in cancer biology and pharmacology, assist the development of novel therapeutic approaches or develop personalized decision-helping tools for monitoring the disease and evaluating therapies.
More precisely, our research on mathematical oncology is three-fold:
- Axis 1: Tumor modeling for patient-specific simulations: Clinical monitoring. Numerical markers from imaging data. Radiomics.
- Axis 2: Bio-physical modeling for personalized therapies: Electroporation from cells to tissue. Radiotherapy.
- Axis 3: Quantitative cancer modeling for biological studies: Biological mechanisms. Metastatic dissemination. Physical properties of microtumors.
In the first axis, we aim at producing patient-specific simulations of the growth of a tumor or its response to treatment starting from a series of images. We hope to be able to offer a valuable insight on the disease to the clinicians in order to improve the decision process. This would be particularly useful in the cases of relapses or for metastatic diseases.
The second axis aims at modeling biophysical therapies like irreversible electroporation, but also radiotherapy, thermo-ablations, radio-frequency ablations or electrochemotherapies that play a crucial role for a local treatment of the disease.
The third axis is essential since it is a way to better understand and model the biological reality of cancer growth and the (possibly complex) effects of therapeutic intervention. Modeling in this case also helps to interpret the experimental results and improve the accuracy of the models used in Axis 1. Technically speaking, some of the computing tools are similar to those of Axis 1.
Since our models are higly data driven, a transverse axis dedicated to data assimilation has been recently added to our research program.
Research program organisation into 3 axes and 1 transverse axis.
3.2 Axis 1: Tumor modeling for patient-specific simulations
The gold standard treatment for most cancers is surgery. In the case where total resection of the tumor is possible, the patient often benefits from an adjuvant therapy (radiotherapy, chemotherapy, targeted therapy or a combination of them) in order to eliminate the potentially remaining cells that may not be visible. In this case personalized modeling of tumor growth is useless and statistical modeling will be able to quantify the risk of relapse, the mean progression-free survival time...However if total resection is not possible or if metastases emerge from distant sites, clinicians will try to control the disease for as long as possible. A wide set of tools are available. Clinicians may treat the disease by physical interventions (radiofrequency ablation, cryoablation, radiotherapy, electroporation, focalized ultrasound,...) or chemical agents (chemotherapies, targeted therapies, antiangiogenic drugs, immunotherapies, hormonotherapies). One can also decide to monitor the patient without any treatment (this is the case for slowly growing tumors like some metastases to the lung, some lymphomas or for some low grade glioma). A reliable patient-specific model of tumor evolution with or without therapy may have different uses:
- Case without treatment: the evaluation of the growth of the tumor would offer a useful indication for the time at which the tumor may reach a critical size. For example, radiofrequency ablation of pulmonary lesion is very efficient as long as the diameter of the lesion is smaller than 3 cm. Thus, the prediction can help the clinician plan the intervention. For slowly growing tumors, quantitative modeling can also help to decide at what time interval the patient has to undergo a CT-scan. CT-scans are irradiative exams and there is a challenge for decreasing their occurrence for each patient. It has also an economical impact. And if the disease evolution starts to differ from the prediction, this might mean that some events have occurred at the biological level. For instance, it could be the rise of an aggressive phenotype or cells that leave a dormancy state. This kind of events cannot be predicted, but some mismatch with respect to the prediction can be an indirect proof of their existence. It could be an indication for the clinician to start a treatment.
- Case with treatment: a model can help to understand and to quantify the final outcome of a treatment using the early response. It can help for a redefinition of the treatment planning. Modeling can also help to anticipate the relapse by analyzing some functional aspects of the tumor. Again, a deviation with respect to reference curves can mean a lack of efficiency of the therapy or a relapse. Moreover, for a long time, the response to a treatment has been quantified by the RECIST criteria which consists in (roughly speaking) measuring the diameters of the largest tumor of the patient, as it is seen on a CT-scan. This criteria is still widely used and was quite efficient for chemotherapies and radiotherapies that induce a decrease of the size of the lesion. However, with the systematic use of targeted therapies and anti-angiogenic drugs that modify the physiology of the tumor, the size may remain unchanged even if the drug is efficient and deeply modifies the tumor behavior. One better way to estimate this effect could be to use functional imaging (Pet-scan, perfusion or diffusion MRI, ...), a model can then be used to exploit the data and to understand in what extent the therapy is efficient.
- Optimization: currently, we do not believe that we can optimize a particular treatment in terms of distribution of doses, number, planning with the model that we will develop in a medium term perspective.
The scientific challenge is therefore as follows: given the history of the patient, the nature of the primitive tumor, its histopathology, knowing the treatments that patients have undergone, some biological facts on the tumor and having a sequence of images (CT-scan, MRI, PET or a mix of them), are we able to provide a numerical simulation of the extension of the tumor and of its metabolism that fits as best as possible with the data (CT-scans or functional data) and that is predictive in order to address the clinical cases described above?
Our approach relies on the elaboration of PDE models and their parametrization with images by coupling deterministic and stochastic methods. The PDE models rely on the description of the dynamics of cell populations. The number of populations depends on the pathology. For example, for glioblastoma, one needs to use proliferative cells, invasive cells, quiescent cells as well as necrotic tissues to be able to reproduce realistic behaviors of the disease. In order to describe the relapse for hepatic metastases of gastro-intestinal stromal tumor (gist), one needs three cell populations: proliferative cells, healthy tissue and necrotic tissue.
The law of proliferation is often coupled with a model for the angiogenesis. However such models of angiogenesis involve too many non measurable parameters to be used with real clinical data and therefore one has to use simplified or even simplistic versions. The law of proliferation often mimics the existence of an hypoxia threshold, it consists of an ODE. or a PDE that describes the evolution of the growth rate as a combination of sigmoid functions of nutrients or roughly speaking oxygen concentration. Usually, several laws are available for a given pathology since at this level, there are no quantitative argument to choose a particular one.
The velocity of the tumor growth differs depending on the nature of the tumor. For metastases, we will derive the velocity thanks to Darcy's law in order to express that the extension of the tumor is basically due to the increase of volume. This gives a sharp interface between the metastasis and the surrounding healthy tissues, as observed by anatomopathologists. For primitive tumors like glioma or lung cancer, we use reaction-diffusion equations in order to describe the invasive aspects of such primitive tumors.
The modeling of the drugs depends on the nature of the drug: for chemotherapies, a death term can be added into the equations of the population of cells, while antiangiogenic drugs have to be introduced in a angiogenic model. Resistance to treatment can be described either by several populations of cells or with non-constant growth or death rates. As said before, it is still currently difficult to model the changes of phenotype or mutations, we therefore propose to investigate this kind of phenomena by looking at deviations of the numerical simulations compared to the medical observations.
The calibration of the model is achieved by using a series (at least 2) of images of the same patient and by minimizing a cost function. The cost function contains at least the difference between the volume of the tumor that is measured on the images with the computed one. It also contains elements on the geometry, on the necrosis and any information that can be obtained through the medical images. We will pay special attention to functional imaging (PET, perfusion and diffusion MRI). The inverse problem is solved using a gradient method coupled with some Monte-Carlo type algorithm. If a large number of similar cases is available, one can imagine to use statistical algorithms like random forests to use some non quantitative data like the gender, the age, the origin of the primitive tumor...for example for choosing the model for the growth rate for a patient using this population knowledge (and then to fully adapt the model to the patient by calibrating this particular model on patient data) or for having a better initial estimation of the modeling parameters. We have obtained several preliminary results concerning lung metastases including treatments and for metastases to the liver.
Plot showing the accuracy of our prediction on meningioma volume. Each point corresponds to a patient whose two first exams were used to calibrate our model. A patient-specific prediction was made with this calibrated model and compared with the actual volume as measured on a third time by clinicians. A perfect prediction would be on the black dashed line. Medical data was obtained from Prof. Loiseau, CHU Pellegrin.
3.3 Axis 2: Bio-physical modeling for personalized therapies
In this axis, we investigate locoregional therapies such as radiotherapy, irreversible electroporation. Electroporation consists in increasing the membrane permeability of cells by the delivery of high voltage pulses. This non-thermal phenomenon can be transient (reversible) or irreversible (IRE). IRE or electro-chemotherapy – which is a combination of reversible electroporation with a cytotoxic drug – are essential tools for the treatment of a metastatic disease. Numerical modeling of these therapies is a clear scientific challenge. Clinical applications of the modeling are the main target, which thus drives the scientific approach, even though theoretical studies in order to improve the knowledge of the biological phenomena, in particular for electroporation, should also be addressed. However, this subject is quite wide and we focus on two particular approaches: some aspects of radiotherapies and electro-chemotherapy. This choice is motivated partly by pragmatic reasons: we already have collaborations with physicians on these therapies. Other treatments could be probably treated with the same approach, but we do not plan to work on this subject on a medium term.
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Radiotherapy (RT) is a common therapy for cancer. Typically, using a CT scan of the patient with the structures of interest (tumor, organs at risk) delineated, the clinicians optimize the dose delivery to treat the tumor while preserving healthy tissues. The RT is then delivered every day using low resolution scans (CBCT) to position the beams. Under treatment the patient may lose weight and the tumor shrinks. These changes may affect the propagation of the beams and subsequently change the dose that is effectively delivered. It could be harmful for the patient especially if sensitive organs are concerned. In such cases, a replanification of the RT could be done to adjust the therapeutical protocol. Unfortunately, this process takes too much time to be performed routinely. The challenges faced by clinicians are numerous, we focus on two of them:
- Detecting the need of replanification: we are using the positioning scans to evaluate the movement and deformation of the various structures of interest. Thus we can detect whether or not a structure has moved out of the safe margins (fixed by clinicians) and thus if a replanification may be necessary. In a retrospective study, our work can also be used to determine RT margins when there are no standard ones. A collaboration with the RT department of Institut Bergonié is underway on the treatment of retroperitoneal sarcoma and ENT tumors (head and neck cancers). A retrospective study was performed on 11 patients with retro-peritoneal sarcoma. The results have shown that the safety margins (on the RT) that clinicians are currently using are probably not large enough. The tool used in this study was developed by an engineer funded by INRIA (Cynthia Périer, ADT Sesar). We used well validated methods from a level-set approach and segmentation / registration methods. The originality and difficulty lie in the fact that we are dealing with real data in a clinical setup. Clinicians have currently no way to perform complex measurements with their clinical tools. This prevents them from investigating the replanification. Our work and the tools developed pave the way for easier studies on evaluation of RT plans in collaboration with Institut Bergonié. There was no modeling involved in this work that arose during discussions with our collaborators. The main purpose of the team is to have meaningful outcomes of our research for clinicians, sometimes it implies leaving a bit our area of expertise.
- Evaluating RT efficacy and finding correlation between the radiological responses and the clinical outcome: our goal is to help doctors to identify correlation between the response to RT (as seen on images) and the longer term clinical outcome of the patient. Typically, we aim at helping them to decide when to plan the next exam after the RT. For patients whose response has been linked to worse prognosis, this exam would have to be planned earlier. This is the subject of collaborations with Institut Bergonié and CHU Bordeaux on different cancers (head and neck, pancreas). The response is evaluated from image markers (e.g. using texture information) or with a mathematical model developed in Axis 1. The other challenges are either out of reach or not in the domain of expertise of the team. Yet our works may tackle some important issues for adaptive radiotherapy.
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Both IRE and electrochemotherapy are anticancerous treatments based on the same phenomenon: the electroporation of cell membranes. This phenomenon is known for a few decades but it is still not well understood, therefore our interest is two fold:
- We want to use mathematical models in order to better understand the biological behavior and the effect of the treatment. We work in tight collaboration with biologists and bioeletromagneticians to derive precise models of cell and tissue electroporation, in the continuity of the research program of the Inria team-project MC2. These studies lead to complex non-linear mathematical models involving some parameters (as less as possible). Numerical methods to compute precisely such models and the calibration of the parameters with the experimental data are then addressed. Tight collaborations with the Vectorology and Anticancerous Therapies (VAT) of IGR at Villejuif, Laboratoire Ampère of Ecole Centrale Lyon and the Karlsruhe Institute of technology will continue, and we aim at developing new collaborations with Institute of Pharmacology and Structural Biology (IPBS) of Toulouse and the Laboratory of Molecular Pathology and Experimental Oncology (LMPEO) at CNR Rome, in order to understand differences of the electroporation of healthy cells and cancer cells in spheroids and tissues.
- This basic research aims at providing new understanding of electroporation, however it is necessary to address, particular questions raised by radio-oncologists that apply such treatments. One crucial question is "What pulse or what train of pulses should I apply to electroporate the tumor if the electrodes are located as given by the medical images"? Even if the real-time optimization of the placement of the electrodes for deep tumors may seem quite utopian since the clinicians face too many medical constraints that cannot be taken into account (like the position of some organs, arteries, nerves...), one can expect to produce real-time information of the validity of the placement done by the clinician. Indeed, once the placement is performed by the radiologists, medical images are usually used to visualize the localization of the electrodes. Using these medical data, a crucial goal is to provide a tool in order to compute in real-time and visualize the electric field and the electroporated region directly on theses medical images, to give the doctors a precise knowledge of the region affected by the electric field. In the long run, this research will benefit from the knowledge of the theoretical electroporation modeling, but it seems important to use the current knowledge of tissue electroporation – even quite rough –, in order to rapidly address the specific difficulty of such a goal (real-time computing of non-linear model, image segmentation and visualization). Tight collaborations with CHU Pellegrin at Bordeaux, and CHU J. Verdier at Bondy are crucial.
- Radiofrequency ablation. In a collaboration with Hopital Haut Leveque, CHU Bordeaux we are trying to determine the efficacy and risk of relapse of hepatocellular carcinoma treated by radiofrequency ablation. For this matter we are using geometrical measurements on images (margins of the RFA, distance to the boundary of the organ) as well as texture information to statistically evaluate the clinical outcome of patients.
- Intensity focused ultrasound. In collaboration with Utrecht Medical center, we aim at tackling several challenges in clinical applications of IFU: target tracking, dose delivery...
3.4 Axis 3: Quantitative cancer modeling for biological studies
With the emergence and improvement of a plethora of experimental techniques, the molecular, cellular and tissue biology has operated a shift toward a more quantitative science, in particular in the domain of cancer biology. These quantitative assays generate a large amount of data that call for theoretical formalism in order to better understand and predict the complex phenomena involved. Indeed, due to the huge complexity underlying the development of a cancer disease that involves multiple scales (from the genetic, intra-cellular scale to the scale of the whole organism), and a large number of interacting physiological processes (see the so-called "hallmarks of cancer"), several questions are not fully understood. Among these, we want to focus on the most clinically relevant ones, such as the general laws governing tumor growth and the development of metastases (secondary tumors, responsible of 90% of the deaths from a solid cancer), and the physics of tumors which is crucial to quantify drug uptake for instance.
In this context, it is thus challenging to exploit the diversity of the data available in experimental settings (such as in vitro tumor spheroids or in vivo mice experiments) in order to improve our understanding of the disease and its dynamics, which in turn lead to validation, refinement and better tuning of the macroscopic models used in the axes 1 and 2 for clinical applications.
In recent years, several new findings challenged the classical vision of the metastatic development biology, in particular by the discovery of organism-scale phenomena that are amenable to a dynamical description in terms of mathematical models based on differential equations. These include the angiogenesis-mediated distant inhibition of secondary tumors by a primary tumor the pre-metastatic niche or the self-seeding phenomenon Building a general, cancer type specific, comprehensive theory that would integrate these dynamical processes remains an open challenge.
Starting from the available multi-modal data and relevant biological or therapeutic questions, our purpose is to develop adapted mathematical models (i.e. identifiable from the data) that recapitulate the existing knowledge and reduce it to its more fundamental components, with two main purposes:
- to generate quantitative and empirically testable predictions that allow to assess biological hypotheses or
- to investigate the therapeutic management of the disease and profile optimal experimental strategies for anti-cancerous therapies (drug uptakes or electric field parameters for instance).
We believe that the feedback loop between theoretical modeling and experimental studies can help to generate new knowledge and improve our predictive abilities for clinical diagnosis, prognosis, and therapeutic decision. Let us note that the first point is in direct link with the axes 1 and 2 of the team since it allows us to experimentally validate the models at the biological scale (in vitro and in vivo experiments) for further clinical applications.
More precisely, we first base ourselves on a thorough exploration of the biological literature of the biological phenomena we want to model: growth of tumor spheroids, in vivo tumor growth in mice, initiation and development of the metastases, distribution of anti-cancerous drugs. Then we investigate, using basic statistical tools, the data we dispose, which can range from: spatial distribution of heterogeneous cell population within tumor spheroids, expression of cell markers (such as green fluorescent protein for cancer cells or specific antibodies for other cell types), bioluminescence, direct volume measurement or even intra-vital images obtained with specific imaging devices. According to the data type, we further build dedicated mathematical models that are based either on PDEs (when spatial data is available, or when time evolution of a structured density can be inferred from the data, for instance for a population of tumors) or ODEs (for scalar longitudinal data). These models are confronted to the data by two principal means:
- when possible, experimental assays can give a direct measurement of some parameters (such as the proliferation rate or the migration speed) or
- statistical tools to infer the parameters from observables of the model.
This last point is of particular relevance to tackle the problem of the large inter-animal variability and we use adapted statistical tools such as the mixed-effects modeling framework.
Once the models are shown able to describe the data and are properly calibrated, we use them to test or simulate biological hypotheses. Based on our simulations, we then aim at proposing to our biological collaborators new experiments to confirm or infirm newly generated hypotheses, or to test different administration protocols of the drugs for in vivo and in vitro protocols.
Another motivation of this axis deals with the interaction with conceptual approaches, and aims at addressing more fundamental questions in biology, combined with experiments on yeast cells. It is led by two projects. The EvoMulti project (CNRS 80Prime) is a collaboration with biologist B. Daignan-Fornier at IBGC, and deals with experimental evolution combined with mathematical modeling. The long-term goal is to question the link between cancer evolution and multicellularity. The TISSAGE project (CNRS MITI) is a collaboration with IBGC and F. Gross (philosopher of science) at ImmunoConcept. The goal is to develop and exploit the analogy between a metabolic network and a tissue, in terms of their regulation. This relies on conceptual and modeling approaches combined with experiments.
4 Application domains
4.1 Tumor growth monitoring and therapeutic evaluation
Each type of cancer is different and requires an adequate model. More specifically, we are currently working on the following diseases:
- Glioma (brain tumors) of various grades,
- Metastases to the lung, liver and brain from various organs,
- Soft-tissue sarcoma and angiosarcoma,
- Kidney cancer and its metastases,
- Non small cell lung carcinoma,
- Acute Myeloid Leukemia.
In this context our application domains are:
- Image-driven patient-specific simulations of tumor growth and treatments,
- Parameter estimation and data assimilation of medical images,
- Machine and deep learning methods for delineating the lesions and stratifying patients according to their responses to treatment or risks of relapse.
4.2 Biophysical therapies
- Modeling of irreversible electroporation adn electrochemotherapy on biological and clinical scales.
- Evaluation of radiotherapy and radiofrequency ablation.
4.3 In-vitro and animals experimentations in oncology
- Theoretical biology of the rheology of microtumors: dynamics of a population of tumors in mutual interactions, uptake of drugs, effect of electric field on the growth of microtumors, growth under mechanical or chemical (hypoxia) constraints.
- Mathematical models of population dynamics of yeast organisms, aiming the investigation of fundamental hallmarks of cancer (multicellularity disease, escape from regulation).
5 Social and environmental responsibility
5.1 Footprint of research activities
Numerical computations on (GPU) clusters like Plafrim. The permanent members of the team reduced drastically their travels to scientifically relevant journey (for instance small conferences where we can really meet scientists, stay of at least 1 week for efficient collaboration etc).
Nicolas Papadakis is deputy director of IMB, in charge of the sustainable development and social responsability.
Olivier Saut is in charge of sustainable development at CNRS Mathématiques and member of the National Sustainable Development Council at CNRS.
5.2 Impact of research results
In the long run, our research could yield interesting outcomes for cancer patients. Yet we are mostly building proofs of concept that would have to be taken over by an industrial partner for any transfer towards clinics (like we did with Sophia Genetics in the past).
The softwares EVolution and IRENA are combined into PrimetimeIRE and into 3D Slicer extensions for clinical purpose. PrimetimeIRE is in its test phase at Avicenne hospital, AP-HP.
5.3 Gender equity
Until 2025, Christèle Etchegaray was in charge of the gender equity committee for IMB, and correspondent on this topic for IMB and MARGAUx Federation for CNRS (Insmi). She still is a member of the Parity, Diversity Equity group of IMB, and of the local Inria parity-equality committee. She takes part in several diffusion initiatives to promote gender equity in science.
Christèle Etchegaray and Nicolas Papadakis also co-supervised the M2 internship of Julie Lesthelle in sociology, in collaboration with Sophie Duchesne (Centre Émile Durkheim): "Undergraduate Mathematics Studies Through the Lens of Gender: The Construction of a Masculine Environment and the Experiences of Women Students in a Minority Situation". The study focused on female undergraduate students in Mathematics at Bordeaux University. This led to a conference given for IMB, Labri and Inria centre of Bordeaux University, and drew the attention fo the national mathematics community. The aim is now to recruit Julie Lesthelle as an engineer to pursue the project.
6 Highlights of the year
- Astrid Decoene and Christèle Etchegaray have been a part of the organization of the "25th Forum des Jeunes Mathématiciennes et Mathématiciens" in Bordeaux
- Sociology Internship of J. Lesthelle on "Undergraduate Mathematics Studies Through the Lens of Gender: The Construction of a Masculine Environment and the Experiences of Women Students in a Minority Situation", led by Christèle Etchegaray , Nicolas Papadakis and Sophie Duchesne (Centre Émile Durkheim)
- Beginning of the Cone BEAM AI project (funded by BPI) on dental CBCT recontruction
- Incubation of a start-up project on irreversible electroporation with Inria Startup Studio
- Thanks to our collaborators at Institut Bergonié, we started establishing of an extensive network of clinical centers (Stanford, IGR, Lisbon,...) specializing in rare uterine tumors to validate our models on a large scale.
- Main publications:
- New method for sampling and unecrtainty quantification in inverse problems (NeurIPS'25)
- Correlation between computed electric dose maps and early post-operative MRI for the evaluation of irreversible electroporation (Physics in Medicine & Biology) Olivier Sutter and Baudouin Denis de Senneville.
- Enhancing Cell Instance Segmentation in Scanning Electron Microscopy Images via a Deep Contour Closing Operator (Computers in Biology and Medicine - Florian Robert and Baudouin Denis de Senneville
- Prognostic prediction in soft-tissue sarcomas using deep learning and digital pathology of tumor and margin areas, (Scientific Reports) Van Linh Le and Olivier Saut .
- A strategy for multimodal integration of transcriptomics, proteomics, and radiomics data for the prediction of recurrence in patients with IDH-mutant gliomas (International Journal of Cancer) - Christèle Etchegaray and Olivier Saut (Transcan consortium)
7 Latest software developments, platforms, open data
7.1 Latest software developments
7.1.1 Clinical_IRE
-
Keyword:
Health
-
Functional Description:
3D slicer plugin for calculating the electric field during an irreversible electroporation (IRE) ablation procedure. The operator enters the positions of the needles on the image (by clicking), as well as the different regions based on pre-established segmentations. The selected amplitude dose map is then superimposed on the image.
-
Contact:
Clair Poignard
7.1.2 Evo_Estimator
-
Keyword:
Biomedical imaging
-
Functional Description:
3D slicer plugin for non-rigid multimodal registration.
-
Contact:
Clair Poignard
8 New results
8.1 AI for medical imaging
Participants: Baudouin Denis de Senneville, Nicolas Papadakis.
This first axis of research highlights advances in medical imaging and computational modeling for clinical applications. At CBMS’25, Hadj Bouzid et al. and Petitpas et al. presented innovative approaches for airway abnormality segmentation on UTE-MRI and automated detection of pleural plaques in asbestos-exposed individuals, respectively—both leveraging deep learning and reinforcement learning to improve diagnostic accuracy. Robert et al. further contributed to this domain with frameworks for 3D semantic cell segmentation, unsupervised tissue analysis, and segmentation improvements in electron microscopy, demonstrating the integration of intercellular priors and synthetic data to refine biomedical imaging workflows. Finally, Turcotte et al.’s large-scale morphological analysis of 55,213 stones in the World Journal of Urology underscores the potential of AI integration in endoscopic stone recognition, bridging computational innovation with clinical practice.
The second theme centers on theoretical and algorithmic advancements in computational methods. Renaud et al. made significant strides in stochastic optimization and sampling, presenting analyses of Langevin diffusion stability and proximal MCMC convergence at NeurIPS’25 and SSVM’25, alongside work on equivariant denoisers for image restoration. Spagnoletti et al. introduced LATINO-PRO, a latent consistency solver with prompt optimization, at ICCV’25, pushing boundaries in inverse problem-solving.
- A. I. Hadj Bouzid et al. 3D semantic segmentation of airway abnormalities on UTE-MRI with reinforcement learning on deep supervision. nternational Symposium on Biomedical Imaging (ISBI'25), United States, 2025
- Y. Petitpas et al. Automatic detection of pleural plaques presence in asbestos-exposed individuals. International Symposium on Computer-Based Medical Systems (CBMS'25), Spain, 2025
- M. Renaud et al. From stability of Langevin diffusion to convergence of proximal MCMC for non-log-concave sampling. 39th Annual Conference on Neural Information Processing Systems (NeurIPS'25), United States, 2025
- M. Renaud et al. Convergence Analysis of a Proximal Stochastic Denoising Regularization Algorithm. International Conference on Scale Space and Variational Methods in Computer Vision (SSVM'25), United Kingdom, 2025
- M. Renaud et al. Equivariant Denoisers for Image Restoration.International Conference on Scale Space and Variational Methods in Computer Vision (SSVM'25), United Kingdom, 2025
- F. Robert et al. 3D Semantic Cell Segmentation via Propagation of 2D results and Integration of Intercellular Priors.International Symposium on Computer-Based Medical Systems (CBMS'25), Spain, 2025
- F. Robert et al. A Comprehensive Framework for Unsupervised Deep Analysis of Tissue Bioarchitecture.International Symposium on Computer-Based Medical Systems (CBMS'25), Spain, 2025
- F. Robert et al. Improving cell instance segmentation in scanning electron microscopy via semantic image synthesis, International Symposium on Biomedical Imaging (ISBI'25), United States, 2025
- F. Robert et al. Enhancing cell instance segmentation in scanning electron microscopy images via a deep contour closing operator.Computers in Biology and Medicine, 2025
- A. Spagnoletti et al. LATINO-PRO: LAtent consisTency INverse sOlver with PRompt Optimization. IEEE International Conference on Computer Vision (ICCV'25), United States, 2025
- B. Turcotte et al. Comprehensive analysis of 55,213 stones: understanding common morphological associations advances endoscopic stone recognition and AI integration. World Journal of Urology, 2025.
8.2 Modeling, Data assimilation and AI for cancer biology and pulmonary diseases
Participants: Annabelle Collin, Christèle Etchegaray, Olivier Saut.
A significant body of this research focuses on applying deep learning and multimodal data integration to improve cancer prognosis and treatment evaluation. Michot et al. demonstrated the use of deep learning on digital pathology images to predict metastatic relapse-free survival in soft-tissue sarcomas, and highlighted the smaller importance of tumor margin compared with tumor center and periphery in the risk assessment. Similarly, Beltzung et al. leveraged deep learning to quantify immune cells and assess prognosis in radiotherapy-treated oropharyngeal squamous cell carcinomas, offering new insights for personalized treatment strategies. Meanwhile, Costa et al. used deep learning in a multicenter pilot study to accurately predict the prognosis of gynecologic smooth muscle tumors of uncertain malignant potential, reinforcing the role of AI in addressing complex diagnostic challenges. Chouleur et al. further advanced this field by integrating transcriptomics, proteomics, and radiomics data to predict recurrence in IDH-mutant gliomas, showcasing the power of multimodal approaches in oncology.
Another key area of innovation lies in mathematical modeling and data assimilation to integrate and interpret longitudinal biological data. Ciavolella et al. developed a parameterized mathematical model to decipher the binding dynamics of circulating tumor cells in microfluidic systems, providing a framework for understanding metastasis and help the identification of new therapeutic targets. Finally, Decoene et al proposed a multiscale model that links cilia, mucus, and airflow in airway clearance, showing stable mucus patterns without ventilation and nonlinear feedbacks during breathing—key for respiratory health and disease.
- A. Michot et al. Prognostic prediction in soft-tissue sarcomas using deep learning and digital pathology of tumor and margin areas.Scientific Reports, 2025
- F. Beltzung et al. Leveraging Deep Learning for Immune Cell Quantification and Prognostic Evaluation in Radiotherapy-Treated Oropharyngeal Squamous Cell Carcinomas.Laboratory Investigation, 2025
- T. Chouleur et al. A strategy for multimodal integration of transcriptomics, proteomics, and radiomics data for the prediction of recurrence in patients with IDH-mutant gliomas.International Journal of Cancer, 2025
- G. Ciavolella et al. Deciphering circulating tumor cells binding in a microfluidic system thanks to a parameterized mathematical model, Journal of Theoretical Biology, 2025.
- J. Costa et al. Deep learning can accurately predict the prognosis of gynecologic smooth muscle tumors of uncertain malignant potential: a multicenter pilot study. Laboratory Investigation, 2025
- A. Decoene et al. Mathematical Modeling of Mucus Transport in the Bronchial Tree with Ventilation Effects, 2026
8.3 Modeling and analysis for cardiac and electroporation ablation therapies
Participants: Annabelle Collin, Clair Poignard.
The final set of studies explores mathematical and physical modeling in cardiac and ablation therapies. Collin et al. conducted an asymptotic analysis of the static bidomain model, specifically for pulsed field cardiac ablation, providing theoretical insights into the behavior of electric fields during such procedures. Complementing this, Sutter et al. investigated the correlation between computed electric dose maps and early post-operative MRI findings to evaluate the effectiveness of irreversible electroporation. Together, these works highlight the importance of integrating advanced mathematical models and imaging techniques to optimize and assess ablation therapies in clinical settings. Finally, at ISBI’25 and CBMS’25, Désier et al. introduced deep learning models to optimize electric field distribution and dosimetry in electroporation therapies, enhancing precision in ablation treatments.
- A. Collin et al. Asymptotic Analysis of the Static Bidomain Model for Pulsed Field Cardiac Ablation. Mathematical Methods in the Applied Sciences, 2025
- K. Désier et al. Deep modelling of electric field distribution for clinical electroporation ablation therapies. International Symposium on Biomedical Imaging (ISBI'25), United States, 2025
- K. Désier et al. A deep learning-assisted hybrid model for electric dosimetry in electroporation therapies. International Symposium on Computer-Based Medical Systems (CBMS'25), Spain, 2025
- O. Sutter et al. Correlation between computed electric dose maps and early post-operative MRI for the evaluation of irreversible electroporation. Physics in Medicine and Biology, 2025
9 Bilateral contracts and grants with industry
9.1 Bilateral contracts with industry
Participants: Olivier Saut.
- Contract with Dassault Systems (at Inria level, through the Meditwin consortium).
- Contract with Institut Bergonié.
Participants: Astrid Decoene.
- Cifre contract with Siemens (with Université Paris-Saclay).
- Cifre contract with EDF (with Inria team MEMPHIS)
Participants: Nicolas Papadakis.
- Cifre contract with Acteon (with CREATIS, Lyon)
10 Partnerships and cooperations
10.1 International research visitors
10.1.1 Visits of international scientists
Other international visits to the team
Noémie Moreau
-
Status
post-Doc
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Institution of origin:
Center for Molecular Medicine Cologne
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Country:
Germany
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Dates:
January 8-10
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Context of the visit:
Seminar
10.1.2 Visits to international teams
Research stays abroad
Van Linh Le
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Visited institution:
Kather Lab, EFKZ, TU Dresden
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Country:
Germany
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Dates:
October 2025
-
Context of the visit:
Collaboration on deep learning applications for sarcoma
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Mobility program/type of mobility:
Research stay
10.2 European initiatives
10.2.1 Other european programs/initiatives
Participants: Astrid Decoene.
- Title: I3WaterS (MSCA Doctoral network )
- Partners: IMB and I2M (Université de Bordeaux), Regie de l'eau Bordeaux, and international partners in Barcelona, Dublin, Delft, Napoli...
- Total fund for Université de Bordeaux : 600k€
10.3 National initiatives
10.3.1 BPI Project ConeBeam AI
Participants: Baudouin Denis de Senneville, Nicolas Papadakis .
- Title: ConeBeam AI
- Partners: Acteon (company, leader), CREATIS, Inria MONC
- Total funds: 1.89M€ (MONC 444K€).
10.3.2 EvoMulti project
Participants: Christèle Etchegaray.
- Title: Identification of conditions favoring evolutive transition towards multicellularity: combining experiments and mathematical modeling
- Inria MONC (leader), IBGC
- Total funds : 50k€.
- Funded by Institute of Mathematics for the Planet Earth ; previously funded by 80Prime CNRS.
10.3.3 ANR Project HOLIBRAIN
Participants: Baudouin Denis de Senneville, Nicolas Papadakis (co-PI).
- Title: Holistic Brain Analysis
- Partners: LaBRI (leader), Inria MONC
- Total funds: 543k€ (MonC 160k€).
10.3.4 Meditwin project
Participants: Olivier Saut.
- Title: Digital twins for hepatic metastases
- Inria Mimesis, IHU Strasbourg, Institut Gustave Roussy, Dassault Systems
- Total funds : 275k€.
10.3.5 PLBIO
Participants: Baudouin Denis de Senneville.
- Title: Internal biological architecture of hepatoblastoma tissues as a marker of response to Irinotecan
- Inserm MIRCADE (leader), Inria MONC, BIC
- Total funds : 592k€.
10.3.6 ANR Project OPLA
Participants: Baudouin Denis de Senneville, Nicolas papadakis.
- Title: Optimal MRI Protocol for monitoring small vessel disease at Low mAgnetic field
- Laboratoire CRMSB (leader), Inria MONC,
- Total funds : 700k€.
10.3.7 RIE Project Metamap
Participants: Baudouin Denis de Senneville.
- Title: Studying metabolic dysfunctions in tissues by multimodal imaging
- Laboratoire CBMN (leader), Inria MONC,
- Total funds : 127k€.
10.3.8 LIS Project Investment
Participants: Baudouin Denis de Senneville.
- Title: Morphological and Functional Lung Imaging Software
- Inserm CRCTB (leader), Inria MONC,
- Total funds : 200k€.
10.3.9 PEPR PDE-AI
Participants: Nicolas Papadakis.
- Title: Partial Differential Equations for Artificial Intelligence: numerical analysis, optimal control and optimal transport
- ENSAE, Sorbonne U., U. Bordeaux, U. Lyon, U. Nancy, U. Nice Côte-d’Azur, U. Paris-Cité, U. Paris-Dauphine-PSL, U. Paris Saclay, U. Starsbourg, U. Toulouse
10.3.10 TISSAGE project - CNRS MITI call
Participants: Christèle Etchegaray (PI).
- Title: Role of tissue in cell differenciation regulation: conceptual approach, mathematical modeling and biological validation.
- Partners: INRIA MONC, IBGC, ImmunoConcept
- Total funds: 12k€.
10.4 Regional initiatives
10.4.1 CytoFLAM project
Participants: Christèle Etchegaray, Baudouin Denis de Senneville.
- Title: Flow cytometry data analysis for early characterization of Acute Myeloid Leukemia
- Inria MONC (leader), Bordeaux University Hospital
- Total funds : 120k€.
10.4.2 Mod4AS - RRI project Newmoon
Participants: Christèle Etchegaray.
- Title: Deciphering tumor response to propranolol in angiosarcoma: mathematical modeling and data assimilation
- Inria MONC (leader)
- Total funds : 20k€.
11 Dissemination
11.1 Promoting scientific activities
11.1.1 Scientific events: organisation
General chair, scientific chair
-
Participants: Nicolas Papadakis.
Mathematics and Image Analysis, IHP Paris, January 13-15, link
Member of the organizing committees
-
Participants: Olivier Saut.
Biennale Française des Mathématiques Appliquées et Industrielles (SMAI'25), Carcans, June 2-6, link
-
Participants: Astrid Decoene.
Forum Mathématiques et Entreprises (FEM), Paris, October 7, link
-
Participants: Astrid Decoene, Christèle Etchegaray.
25e Forum des jeunes mathématiciennes et mathématiciens, Bordeaux, November 26-28, link
11.1.2 Scientific events: selection
Member of the conference program committees
-
Participants: Nicolas Papadakis .
Scale Space and Variational Methods in Computer Vision (SSVM'25), UK, May 18-22, link
Reviewer
-
Participants: Nicolas Papadakis .
Scale Space and Variational Methods in Computer Vision (SSVM'25), colloque GRETSI'25
-
Participants: Olivier Saut.
International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI'25), Medical Imaging with Deep Learning (MIDL'25)
11.1.3 Journal
Reviewer - reviewing activities
-
Participants: Nicolas Papadakis .
Journal of Mathematical Imaging and Vision, SIAM on Imaging SCiences, IEEE Transactions on Image Processing
-
Participants: Christèle Etchegaray.
Mathematical Modeling of Natural Phenomena
-
Participants: Olivier Saut.
Scientific Reports, European Radiology
-
Participants: Astrid Decoene.
Journal of Numerical Analysis
11.1.4 Invited talks
Participants: Nicolas Papadakis .
- Oberwolfach workshop on Mathematical Imaging and Surface Processing, Germany, May 10-16, link
- (Blind) inverse problems in imaging: from foundations to applications, CIRM, September 29-October 3, link
Participants: Christèle Etchegaray.
- MACS seminar (Modeling, Analysis and Scientific computing), Camille Jordan Institute, Lyon.
Participants: Baudouin Denis de Senneville.
- Workshop Mathematic modelling in living organism, Institut Pasteur de Lille, Université de Lille, Lille.
Participants: Astrid Decoene.
- Workshop Modélisation mathématique et contrôle optimal pour le Poumon, Université de Haute Alsace, Mulhouse.
- Séminaire de mécanique d’Orsay, Université Paris Saclay.
11.1.5 Leadership within the scientific community
Participants: Nicolas Papadakis.
- Co-direction of the national GDR/RT CNRS 2179 MAIAGES, Mathématiques de l’Imagerie, Apprentissage et Géométrie Stochastique
11.1.6 Scientific expertise
Participants: Astrid Decoene.
- Member of 2 Maitre de Conférence recruitment committees at Univ. Nantes and Univ. Brest
Participants: Christèle Etchegaray.
- Member of INRAE's MISTI Specialized Scientific Committee (Mathematics, Computer Science, Numerical sciences, AI and Robotics).
Participants: Nicolas Papadakis.
- Member of Inria Bordeaux CR/ISFP recruitment committee
Participants: Olivier Saut.
- Expertise for the Ministry of Research on international projects (PHG, MOPGA).
- Member of the CNRS committee for international theses (DGDS).
11.1.7 Research administration
Participants: Nicolas Papadakis .
- Deputy director of Institut de Mathématiques de Bordeaux
Participants: Christèle Etchegaray.
- IMB's lab Council
- Local Inria Bordeaux "Commission des Emplois de Recherche"
- Local Inria Bordeaux "Bureau du Comité des Projets"
- Local correspondent for Math Bio Santé Thematic Network
Participants: Olivier Saut.
- Scientific delegate (sustainable development, research networks, health), CNRS Mathématiques,
- Member of the Ethics Committee of the University of Bordeaux.
Participants: Astrid Decoene.
- IMB's lab Council
- IMB's advisory committee of Section 26.
- Until september 2025 : Member of the executive board of AMIES (Agence pour les mathématiques en interaction avec les entreprises et la société).
11.2 Teaching - Supervision - Juries - Educational and pedagogical outreach
11.2.1 Teaching responsabilities
Astrid Decoene is in charge of the "Modeling and Numerical Simulation" track in the Master Applied Mathematics and Statstics master at the University of Bordeaux and a member of the UFMI (Mathematics and Computer Sciences Teachning Structure) bureau
11.2.2 Teaching
- Engineering School Enseirb-Matmeca of Bordeaux INP: Nicolas Papadakis (12h), Baudouin Denis de Senneville (30h)
- University of Bordeaux (master): Baudouin Denis de Senneville (15h), Astrid Decoene (66h)
- University of Bordeaux (undergraduate) : Astrid Decoene (30h)
11.2.3 Supervision
Participants: Astrid Decoene.
- Master 1 internships: Kouadio Thimote Kouame and William Ratajczak.
Participants: Baudouin Denis de Senneville.
- Apprentice: Synthia Sébastien
- Master 2 internships: Antonin Clerc (co-supervised with Nicolas Papadakis ), Maria Larsen
- Master 1 internships: Raphaël Durand
Participants: Christèle Etchegaray.
- Master 2 internship and projects : Julie Lesthelle (Sociology, co-supervised with Nicolas Papadakis and Sophie Duchesne) ; Interdisciplinary project (Cancer Biology, co-supervised with François Moisan)
- Master 1 internships: Félicia Dossou (CMI ISI), Maële Lebreton-Cheminel (ENSTBB)
Participants: Nicolas Papadakis.
- Master 2 internships: Antonin Clerc (co-supervised with Baudouin Denis de Senneville ), Clément Delmas (co-supervised with Laure Vilatte, BIOGECO), Julie Lesthelle (Sociology, co-supervised with Christèle Etchegaray and Sophie Duchesne)
11.2.4 Juries
- President of PhD juries: Baudouin Denis de Senneville (1), Nicolas Papadakis (2), Astrid Decoene (2)
- Member of PhD juries: Baudouin Denis de Senneville (3), Christèle Etchegaray (2), Nicolas Papadakis (2), Astrid Decoene (4)
- Member of Medical Theses juries: Olivier Saut (2)
- President of HdR juries: Astrid Decoene (1)
- Member of HdR juries: Olivier Saut (1), Astrid Decoene (1)
11.3 Popularization
11.3.1 Productions (articles, videos, podcasts, serious games, ...)
Participants: Christèle Etchegaray.
- Co-creation of a 1h-long "Egalitarian Communication" session for high school scholars, with Clémence Frioux, in the context of the "Moi Mathématicienne, Moi Infomaticienne" (MIMM) program. Link
11.3.2 Participation in Live events
Participants: Christèle Etchegaray.
- Organisation and animation of the "Mathematics and Biology" round table at "Forum Entreprises et Mathématiques", CNAM
- Speed-meeting for "Filles, Maths et Informatique, une équation lumineuse", Agen.
- Co-animation of 4 "Egalitarian Communication" sessions for the MIMM program, and of 2 sessions for high school interns.
11.3.3 Others science outreach relevant activities
Participants: Baudouin Denis de Senneville, Christèle Etchegaray, Nicolas Papadakis, Olivier Saut.
- Numerics week: Practical Applications of Digital Technology, Computing, and Mathematics
- Public: Master’s students, engineering students, and doctoral candidates in mathematics, computer science, and data science
12 Scientific production
12.1 Major publications
- 1 articleA strategy for multimodal integration of transcriptomics, proteomics, and radiomics data for the prediction of recurrence in patients with IDH-mutant gliomas.International Journal of Cancer1573August 2025, 573-587HALDOI
- 2 articleDeciphering circulating tumor cells binding in a microfluidic system thanks to a parameterized mathematical model.Journal of Theoretical Biology600March 2025, 112029HALDOI
- 3 articleSpatial mechanistic modeling for prediction of the growth of asymptomatic meningioma.Computer Methods and Programs in Biomedicine2020HAL
- 4 articleJoint state-parameter estimation for tumor growth model.SIAM Journal on Applied Mathematics812March 2021HALDOI
- 5 articleT2-based MRI Delta-Radiomics Improve Response Prediction in Soft-Tissue Sarcomas Treated by Neoadjuvant Chemotherapy.Journal of Magnetic Resonance Imaging502August 2019, 497-510HALDOI
- 6 articleViscoelastic modeling of the fusion of multicellular tumor spheroids in growth phase.Journal of Theoretical Biology454October 2018, 102-109HALDOI
- 7 articleLiver contrast-enhanced sonography: Computer-assisted differentiation between focal nodular hyperplasia and inflammatory hepatocellular adenoma by reference to microbubble transport patterns.European Radiology2020HALDOI
- 8 articleDeciphering tumour tissue organization by 3D electron microscopy and machine learning.Communications Biology412021, 1390HALDOI
- 9 articleNumerical Workflow of Irreversible Electroporation for Deep-Seated Tumor.Physics in Medicine and Biology645March 2019, 055016HALDOI
- 10 articleSuperconvergent second order Cartesian method for solving free boundary problem for invadopodia formation.Journal of Computational Physics339June 2017, 412 - 431HALDOI
- 11 articleConvergent plug-and-play with proximal denoiser and unconstrained regularization parameter.Journal of Mathematical Imaging and Vision2024. In press. HAL
- 12 inproceedingsConvergent Bregman Plug-and-Play Image Restoration for Poisson Inverse Problems.Neural Information Processing Systems (NeurIPS'23)New Orleans, United StatesDecember 2023HAL
- 13 articleRevisiting bevacizumab + cytotoxics scheduling using mathematical modeling: proof of concept study in experimental non-small cell lung carcinoma.CPT: Pharmacometrics and Systems Pharmacology2018, 1-9HALDOI
- 14 articleSpatial modelling of tumour drug resistance: the case of GIST liver metastases Mathematical Medicine and Biology Advance.Mathematical Medicine and Biology002016, 1 - 26HALDOI
- 15 articleImproved 18-FDG PET/CT diagnosis of multiple myeloma diffuse disease by radiomics analysis.Nuclear Medicine Communications4210October 2021, 1135-1143HALDOI
- 16 articleComputational Trials: Unraveling Motility Phenotypes, Progression Patterns, and Treatment Options for Glioblastoma Multiforme.PLoS ONE111January 2016HALDOI
- 17 inproceedingsFrom stability of Langevin diffusion to convergence of proximal MCMC for non-log-concave sampling.NeurIPS 2025 - 39th Annual Conference on Neural Information Processing SystemsSan Diego (California), United StatesDecember 2025HAL
12.2 Publications of the year
International journals
International peer-reviewed conferences
Conferences without proceedings
Doctoral dissertations and habilitation theses
Reports & preprints
Other scientific publications