BIOSTAT
Details
Université de Bordeaux – ISPED
146 rue Léo-Saignat
33076 BORDEAUX cedex
Objectives
The main objective of the team is the development of statistical methods for time-dependent data coming from either observational cohort studies, clinical trials or case-control studies with the aim to answer clinical and public health questions regarding chronic diseases: future burden, risk factors, individual prediction, underlying pathological mechanisms, and treatment effects.
Research area
In the past five years the team worked on two main topics: multivariate models for time-dependent data and model-based estimation of public health indicators. Our main domain of research focus on the development of multivariate dynamic models for the analysis of censored time-to-events and/or repeated measures of longitudinal data accounting for complex observation schemes.
These works are motivated by the study of the natural history of chronic diseases such as the Alzheimer disease or the Multi-System Atrophy, the investigation of the impact of time-dependent exposures, or the validation of surrogate markers for clinical trials in cancer research.
Parametric and semiparametric estimation procedures for frailty models for correlated time-to-events, clustered data and/or recurrent events as well as joint models for event times and longitudinal markers were implemented in the R-package Frailtypack. Another field of research regards the extension of mixed models using latent classes and/or latent processes for the analysis of multiple longitudinal outcomes with non-standard distributions in heterogeneous populations.
=> Consult past Biostat team seminars

Software
Find here all our files

R package for Shared, Joint (Generalized) Frailty Models; Surrogate Endpoints
https://cran.r-project.org/web/packages/frailtypack/index.html

Estimation of various models for longitudinal and time-to-event data based on latent classes and latent processes

A Parallelized General-Purpose Optimization Based on Marquardt-Levenberg Algorithm
https://cran.r-project.org/web/packages/marqLevAlg/index.html
https://github.com/VivianePhilipps/marqLevAlgParallel/
Random Forest with Multivariate Longitudinal Predictors.
R package
https://github.com/anthonydevaux/DynForest
https://cran.r-project.org/web/packages/DynForest/index.html
2025 Key Publications
Bagkavos D, Isakson A, Mammen E, Nielsen JP, Proust-Lima C. Super-efficient estimation of future conditional hazards based on time-homogeneous high-quality marker information. Biometrika. 2025;112(2). https://doi.org/10.1093/biomet/asaf008
Courcoul L, Tzourio C, Woodward M, Barbieri A, Jacqmin-Gadda H. A Location-Scale Joint Model for Studying the Link Between the Time-Dependent Subject-Specific Variability of Blood Pressure and Competing Events. Stat Med. 2025;44(20-22):e70244. https://doi.org/10.1002/sim.70244
Devaux A, Proust-Lima C, Genuer R. Random Forests for Time-Fixed and Time-Dependent Predictors: The DynForest R Package. R Journal. 2025.10.32614/RJ-2025-002
Dinart D, Bellera C, Rondeau V. Sample size estimation for recurrent event data using multifrailty and multilevel survival models. J Biopharm Stat. 2025;35(2):241-56. https://doi.org/10.1080/10543406.2024.2310306
Gall LL, Alencar de Pinho N, Harambat J, Combe C, Drueke TB, Choukroun G, Fouque D, Barbieri A, Frimat L, Jacquelinet C, Laville M, Liabeuf S, Pecoits-Filho R, Philipps V, Massy ZA, Stengel B, Prezelin-Reydit M, Leffondre K. A longitudinal analysis of haemoglobin levels and major cardiovascular events. Nephrol Dial Transplant. 2025. https://doi.org/10.1093/ndt/gfaf221
Hashemi R, Baghfalaki T, Philipps V, Jacqmin-Gadda H. Dynamic Prediction of an Event Using Multiple Longitudinal Markers: AModel Averaging Approach. Stat Med. 2025;44(13-14):e70122. https://doi.org/10.1002/sim.70122
Le Bourdonnec K, Valeri L, Proust-Lima C. Continuous-time mediation analysis for repeatedly measured mediators and outcomes. Biometrics. 2025;81(2). -2015601969 https://doi.org/10.1093/biomtc/ujaf062
Le Coent Q, Legrand C, Dignam JJ, Rondeau V. Validation of a Longitudinal Marker as a Surrogate Using Mediation Analysis and Joint Modeling: Evolution of the PSA as a Surrogate of the Disease-Free Survival. Biom J. 2025;67(4):e70064. https://doi.org/10.1002/bimj.70064
Rakez, J. Guillaumin, A. Chick, G. Coureau, F. Chamming’s, P. Fillard, B. Amadeo,and V. Rondeau. The deepjoint algorithm : An innovative approach for studying thelongitudinal evolution of quantitative mammographic density and its association withscreen-detected breast cancer risk. Biometrical Journal, 2025. in press.
Last News
THESIS DEFENCE : AURIANE GABAUT
Events
THESIS DEFENCE : THOMAS FERTE
Events
SOUTENANCE DE THESE : MANEL RAKEZ
Events
THESIS DEFENCE : LISA LE GALL
Events
CRCN Inserm 2025 – Congratulations to Denis Rustand on his success
Awards
Emmanuelle Orsini and Marius Robert win the Jean-Walter Zellidja 2025 scholarship
Nominations
Impact of Smoking Reduction Scenarios on the Burden of Myocardial Infarction in the French Population Until 2035
Major publication
A lifelong approach to studying the association between exposure to air pollution and the risk of developing breast cancer
Major publication
14th meeting of the Club SMAC
Events
Young researchers'day of the Société Française de Biométrie (SFB)
Events
Cécile Proust-Lima becomes co-editor of Biometrics
Nominations
BIOSTATISTICS SEMINAR : Optimal control for parameter estimation in partially observed hypoelliptic stochastic differential equations used in neuronal modeling
- Quentin CLAIRON
Seminars
BIOSTATISTICS SEMINAR: Complex Heterogeneity in the Utility of a Surrogate Marker
- Rebecca KNOWLTON
Seminars
A publication on the association between Sex/Gender and Cognitive Decline won the 2023 Publication of the Year Award
PressMembers
AbedMouna
Doctorante en BiostatistiqueAlioumAmadou
Professeur des Universités en BiostatistiqueBarbieriAntoine
Maître de conférencesBercuAriane
Ingénieure en BiostatistiquesBifenziAyoub
Ingénieur d'étudesCatoirePierre
Cazade Louis
Doctorant en BiostatistiqueDarmignySandrine
Assistante administrativede CoursonHugues
ChercheurFaureLéa
Doctorante en ÉpidémiologieGABAUTAuriane
Étudiante en thèseJACQMIN GADDAHélène
Directrice de Recherche InsermJolyPierre
ProfesseurKAZANTZIDISGeorgios
PhD student and BiostatisticianLe GallLisa
PhD student EpidemiologyLe ProvostBlandine
Ingénieur en BiostatistiquesLeffondréKaren
ProfessorLouveauErwan
Doctorant en BiostatistiquesOruéAdrien
PH StudentPhilippsViviane
Ingénieure d'étudeProust-LimaCécile
Director of research in BiostatisticsRakezManel
Ph.D. StudentREMIATJustine
Doctorante en Santé Publique - BiostatistiqueROBERTMarius
Doctorant en Biostatistiquerondeauvirginie
Directrice de recherche en BiostatistiqueRouanetAnaïs
Maître de conférences en BiostatistiqueRustandDenis
Chargé de rechercheScollardPhoebe
Ingénieur de rechercheSegalasCorentin
Research Fellow in statisticsSirnaFederico
BiostatisticienCarreer
If you are interested by research in Biostatistics and more generally Statistics applied to health, send a motivated application to sandrine.darmigny@u-bordeaux.fr. Our biostatistics team welcomes interns, PhD students and postdoctoral researchers each year.

