Two-part joint model for a longitudinal semicontinuous biomarker and a terminal event has been recently introduced based on frequentist computation. The biomarker distribution is decomposed into a probability of positive value and the expected value among positive values. Shared random effects can represent the association structure between the biomarker and the terminal event. The computational burden increases compared to standard joint models with a single regression model for the biomarker. In this context, the frequentist estimation implemented in the R package frailtypack can be challenging for complex models (i.e., large number of parameters and dimension of the random effects). As an alternative, we propose a Bayesian estimation of ...
In medical studies we are often confronted with complex longitudinal data. During the follow-up peri...
Joint models of longitudinal and survival data have become an important tool for modeling associatio...
The joint modeling of longitudinal and survival data is a new approach to many applications such as ...
Joint modeling longitudinal and survival data offers many advantages such as addressing measurement ...
Acknowledgements: Danilo Alvares was supported by the Chilean National Fund for Scientific and Techn...
Thesis title: Development and Application of Joint Modelling of Longitudinal and Event-Time Data in ...
In epidemiologic and clinical studies, a relatively large number of biomarkers are repeatedly measur...
<p>Joint models for longitudinal and survival data are routinely used in clinical trials or other st...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
This tutorial shows how various Bayesian survival models can be fitted using the integrated nested L...
Evaluer l’efficacité des traitements dans les essais cliniques en oncologie soulève de multiples pro...
Extensions in the field of joint modeling of correlated data and dynamic predictions improve the dev...
We propose a joint model to analyze the structure and intensity of the association between longitudi...
In studying the progression of a disease and to better predict time to death (survival data), invest...
The joint modeling of longitudinal and time-to-event data is an important tool of growing popularity...
In medical studies we are often confronted with complex longitudinal data. During the follow-up peri...
Joint models of longitudinal and survival data have become an important tool for modeling associatio...
The joint modeling of longitudinal and survival data is a new approach to many applications such as ...
Joint modeling longitudinal and survival data offers many advantages such as addressing measurement ...
Acknowledgements: Danilo Alvares was supported by the Chilean National Fund for Scientific and Techn...
Thesis title: Development and Application of Joint Modelling of Longitudinal and Event-Time Data in ...
In epidemiologic and clinical studies, a relatively large number of biomarkers are repeatedly measur...
<p>Joint models for longitudinal and survival data are routinely used in clinical trials or other st...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
This tutorial shows how various Bayesian survival models can be fitted using the integrated nested L...
Evaluer l’efficacité des traitements dans les essais cliniques en oncologie soulève de multiples pro...
Extensions in the field of joint modeling of correlated data and dynamic predictions improve the dev...
We propose a joint model to analyze the structure and intensity of the association between longitudi...
In studying the progression of a disease and to better predict time to death (survival data), invest...
The joint modeling of longitudinal and time-to-event data is an important tool of growing popularity...
In medical studies we are often confronted with complex longitudinal data. During the follow-up peri...
Joint models of longitudinal and survival data have become an important tool for modeling associatio...
The joint modeling of longitudinal and survival data is a new approach to many applications such as ...