A shared-parameter approach for jointly modeling longitudinal and survival data is proposed. With respect to available approaches, it allows for time-varying random effects that affect both the longitudinal and the survival processes. The distribution of these random effects is modeled according to a continuous-time hidden Markov chain so that transitions may occur at any time point. For maximum likelihood estimation, we propose an algorithm based on a discretization of time until censoring in an arbitrary number of time windows. The observed information matrix is used to obtain standard errors. We illustrate the approach by simulation, even with respect to the effect of the number of time windows on the precision of the estimates, and by a...
This thesis analyzes censored data in recurrent event, longitudinal, and survival settings. In Chapt...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
Both dropout and death can truncate observation of a longitudinal outcome. Since extrapolation beyon...
A shared-parameter approach for jointly modeling longitudinal and survival data is proposed. With re...
We propose a joint model for a time-to-event outcome and a quantile of a continuous response repeate...
Latent Markov (LM) models represent an important tool of analysis of longitudinal data when response...
Mixed latent Markov (MLM) models represent an important tool of analysis of longitudinal data when r...
We propose a joint modeling likelihood-based approach for studies with repeated measures and informa...
Description Functions for fitting general continuous-time Markov and hidden Markov multi-state model...
We develop and study an innovative method for jointly modeling longitudinal response and time-to-eve...
The applicability of the theory of partially observed finite-state Markov processes to the study of ...
We adopt a hidden state approach for the analysis of longitudinal data subject to dropout. Motivated...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
Summary. The maximum likelihood approach to jointly model the survival time and its longitudinal cov...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
This thesis analyzes censored data in recurrent event, longitudinal, and survival settings. In Chapt...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
Both dropout and death can truncate observation of a longitudinal outcome. Since extrapolation beyon...
A shared-parameter approach for jointly modeling longitudinal and survival data is proposed. With re...
We propose a joint model for a time-to-event outcome and a quantile of a continuous response repeate...
Latent Markov (LM) models represent an important tool of analysis of longitudinal data when response...
Mixed latent Markov (MLM) models represent an important tool of analysis of longitudinal data when r...
We propose a joint modeling likelihood-based approach for studies with repeated measures and informa...
Description Functions for fitting general continuous-time Markov and hidden Markov multi-state model...
We develop and study an innovative method for jointly modeling longitudinal response and time-to-eve...
The applicability of the theory of partially observed finite-state Markov processes to the study of ...
We adopt a hidden state approach for the analysis of longitudinal data subject to dropout. Motivated...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
Summary. The maximum likelihood approach to jointly model the survival time and its longitudinal cov...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
This thesis analyzes censored data in recurrent event, longitudinal, and survival settings. In Chapt...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
Both dropout and death can truncate observation of a longitudinal outcome. Since extrapolation beyon...