International audienceExtensions in the field of joint modeling of correlated data and dynamic predictions improve the development of prognosis research. The R package frailtypack provides estimations of various joint models for longitudinal data and survival events. In particular, it fits models for recurrent events and a terminal event (frailtyPenal), models for two survival outcomes for clustered data (frailtyPenal), models for two types of recurrent events and a terminal event (multivPenal), models for a longitudinal biomarker and a terminal event (longiPenal) and models for a longitudinal biomarker, recurrent events and a terminal event (trivPenal). The estimators are obtained using a standard and penalized maximum likelihood approach,...
International audienceThe observation of repeated events for subjects in cohort studies could be ter...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...
International audienceExtensions in the field of joint modeling of correlated data and dynamic predi...
Correlated survival outcomes occur quite frequently in the biomedical research. Available software i...
Mots clefs: Statistic, Frailty models, clustered data, recurrent events Frailty models are extension...
Frailty models are very useful for analysing correlated survival data, when observations are cluster...
The aim of this presentation is to introduce joint modelling techniques for the simultaneous analysi...
Background and Objectives: In many medical situations, people can experience recurrent events with a...
Joint models for longitudinal and time-to-event data constitute an attractive modeling framework tha...
Survival data analysis is a very broad field of statistics, encompassing a large variety of methods ...
Often the motivation behind building a statistical model is to provide prediction for an outcome of ...
When analyzing correlated time to event data, shared frailty (random effect) models are particularly...
This thesis explores several methodological aspects of joint modelling of longitudinal outcomes and ...
Evaluating the prognosis of patients according to their demographic, biological, or disease characte...
International audienceThe observation of repeated events for subjects in cohort studies could be ter...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...
International audienceExtensions in the field of joint modeling of correlated data and dynamic predi...
Correlated survival outcomes occur quite frequently in the biomedical research. Available software i...
Mots clefs: Statistic, Frailty models, clustered data, recurrent events Frailty models are extension...
Frailty models are very useful for analysing correlated survival data, when observations are cluster...
The aim of this presentation is to introduce joint modelling techniques for the simultaneous analysi...
Background and Objectives: In many medical situations, people can experience recurrent events with a...
Joint models for longitudinal and time-to-event data constitute an attractive modeling framework tha...
Survival data analysis is a very broad field of statistics, encompassing a large variety of methods ...
Often the motivation behind building a statistical model is to provide prediction for an outcome of ...
When analyzing correlated time to event data, shared frailty (random effect) models are particularly...
This thesis explores several methodological aspects of joint modelling of longitudinal outcomes and ...
Evaluating the prognosis of patients according to their demographic, biological, or disease characte...
International audienceThe observation of repeated events for subjects in cohort studies could be ter...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...