International audienceTreatment evaluation in advanced cancer mainly relies on overall survival and tumor size dynamics. Both markers and their association can be simultaneously analyzed by using joint models, and these approaches are supported by many softwares or packages. However, these approaches are essentially limited to linear models for the longitudinal part, which limit their biological interpretation.More biological models of tumor dynamics can be obtained by using nonlinear models, but they are limited by the fact that parameter identifiability require rich dataset. In that context Bayesian approaches are particularly suited to incorporate the biological knowledge and increase the information available, but they are limited by th...
Tumorigenesis is a complex process that is heterogeneous and affected by numerous sources of variabi...
Due to the concern for possible carcinogenic effects of potentially hazardous substances such as che...
Bayesian reasoning and multi-state models are used to assess the progression of stage IV non-small c...
International audienceTreatment evaluation in advanced cancer mainly relies on overall survival and ...
International audienceAbstractBackgroundJoint models of longitudinal and time-to-event data are incr...
International audienceRecent work on brain tumor growth modeling for glioblas-toma using reaction-di...
We describe a Bayesian approach to incorporate between-individual heterogeneity associated with para...
In advanced cancer patients, tumor burden assessment relies on the Sum of the Longest Diameters (SLD...
The recent growth in the availability of biomedical data promises to reshape healthcare by ushering ...
In chapter 1, the field of statistics is discussed in general terms. Then, Bayes’ theorem is p...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
International audienceJoint modelling is increasingly popular for investigating the relationship bet...
Missing values exist in nearly all clinical studies because data for a variable orquestion are not c...
Parameter inference is a fundamental problem in data-driven modeling. Indeed, for making reliable pr...
Tumorigenesis is a complex process that is heterogeneous and affected by numerous sources of variabi...
Due to the concern for possible carcinogenic effects of potentially hazardous substances such as che...
Bayesian reasoning and multi-state models are used to assess the progression of stage IV non-small c...
International audienceTreatment evaluation in advanced cancer mainly relies on overall survival and ...
International audienceAbstractBackgroundJoint models of longitudinal and time-to-event data are incr...
International audienceRecent work on brain tumor growth modeling for glioblas-toma using reaction-di...
We describe a Bayesian approach to incorporate between-individual heterogeneity associated with para...
In advanced cancer patients, tumor burden assessment relies on the Sum of the Longest Diameters (SLD...
The recent growth in the availability of biomedical data promises to reshape healthcare by ushering ...
In chapter 1, the field of statistics is discussed in general terms. Then, Bayes’ theorem is p...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
International audienceJoint modelling is increasingly popular for investigating the relationship bet...
Missing values exist in nearly all clinical studies because data for a variable orquestion are not c...
Parameter inference is a fundamental problem in data-driven modeling. Indeed, for making reliable pr...
Tumorigenesis is a complex process that is heterogeneous and affected by numerous sources of variabi...
Due to the concern for possible carcinogenic effects of potentially hazardous substances such as che...
Bayesian reasoning and multi-state models are used to assess the progression of stage IV non-small c...