The shared-parameter model and its so-called hierarchical or random-effects extension are widely used joint modeling approaches for a combination of longitudinal continuous, binary, count, missing, and survival outcomes that naturally occurs in many clinical and other studies.A random effect is introduced and shared or allowed to differ between two or more repeated measures or longitudinal outcomes, thereby acting as a vehicle to capture association between the outcomes in these joint models. It is generally known that parameter estimates in a linear mixed model (LMM) for continuous repeated measures or longitudinal outcomes allow for a marginal interpretation, even though a hierarchical formulation is employed. This is not the case for the...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
Joint modeling has become a topic of great interest in recent years. The models are simultaneously ...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
The current work deals with modelling longitudinal or repeated non-Gaussian measurements for a respi...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Longitudinal data arise when subjects are followed over time. This type of data is typically depende...
Survival data often arise in longitudinal studies, and the survival process and the longitudinal pro...
Survival data often arise in longitudinal studies, and the survival process and the longitudinal pro...
When using linear models for cluster-correlated or longitudinal data, a common modeling practice is ...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
Joint modeling has become a topic of great interest in recent years. The models are simultaneously ...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
The current work deals with modelling longitudinal or repeated non-Gaussian measurements for a respi...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Longitudinal data arise when subjects are followed over time. This type of data is typically depende...
Survival data often arise in longitudinal studies, and the survival process and the longitudinal pro...
Survival data often arise in longitudinal studies, and the survival process and the longitudinal pro...
When using linear models for cluster-correlated or longitudinal data, a common modeling practice is ...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...