Latent class models have been recently developed for the joint analysis of a longitudinal quantitative outcome and a time to event. These models assume that the population is divided in G latent classes characterized by different risk functions for the event, and different profiles of evolution for the markers that are described by a mixed model for each class. However, the key assumption of conditional independence between the marker and the event given the latent classes is difficult to evaluate because the latent classes are not observed. Using a joint model with latent classes and shared random effects, we propose a score test for the null hypothesis of independence between the marker and the outcome given the latent classes versus th...
Recurrent events data are frequently encountered and could be stopped by a terminal event in clinica...
Latent class analysis is a popular statistical technique for estimating disease prevalence and test ...
[[abstract]]Longitudinal covariates in survival models are generally analyzed using random effects m...
International audienceA joint model based on a latent class approach is proposed to explore the asso...
The paper compares separate, conditional, and joint score tests of duration dependence and unobserve...
test for conditional independence between longitudinal outcome and time-to-event in the joint latent...
Histologic tumor grade is a strong predictor of risk of recurrence in breast cancer. Nevertheless, t...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
This is the peer reviewed version of the following article: Shu Jiang and Richard J. Cook, Score tes...
In health cohort studies, repeated measures of markers are often used to describe the natural histor...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
In the last decade, joint modeling research has expanded very rapidly in bio- statistics and medical...
Latent class methods can be used to identify unobserved subgroups which differ in their observed dat...
Although many modeling approaches have been developed to jointly analyze longitudinal biomarkers and...
In clinical research, patient care decisions are often easier to make if patients are classified int...
Recurrent events data are frequently encountered and could be stopped by a terminal event in clinica...
Latent class analysis is a popular statistical technique for estimating disease prevalence and test ...
[[abstract]]Longitudinal covariates in survival models are generally analyzed using random effects m...
International audienceA joint model based on a latent class approach is proposed to explore the asso...
The paper compares separate, conditional, and joint score tests of duration dependence and unobserve...
test for conditional independence between longitudinal outcome and time-to-event in the joint latent...
Histologic tumor grade is a strong predictor of risk of recurrence in breast cancer. Nevertheless, t...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
This is the peer reviewed version of the following article: Shu Jiang and Richard J. Cook, Score tes...
In health cohort studies, repeated measures of markers are often used to describe the natural histor...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
In the last decade, joint modeling research has expanded very rapidly in bio- statistics and medical...
Latent class methods can be used to identify unobserved subgroups which differ in their observed dat...
Although many modeling approaches have been developed to jointly analyze longitudinal biomarkers and...
In clinical research, patient care decisions are often easier to make if patients are classified int...
Recurrent events data are frequently encountered and could be stopped by a terminal event in clinica...
Latent class analysis is a popular statistical technique for estimating disease prevalence and test ...
[[abstract]]Longitudinal covariates in survival models are generally analyzed using random effects m...