Bayesian approaches have been used in the literature to estimate the parameters for joint models of longitudinal and time-to-event data. The main aim of this paper is to analyze the impact of prior distributions on estimating parameters in a proposed fully Bayesian analysis setting for the penalized spline joint models. To achieve this aim, the joint posterior distribution of parameters in survival and longitudinal submodels is presented. The Markov chain Monte Carlo (MCMC) algorithm is then proposed, which consists of the Gibbs sampler (GS) and Metropolis Hastings (MH) algorithms to sample for the target conditional posterior distributions. The prior sensitivity analysis for the baseline hazard rate and association parameters is performed ...
Extensions of the traditional Cox proportional hazard model, concerning the following features are o...
In this thesis, we investigate joint models of longitudinal and time-to-event data. We extend the c...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...
Acknowledgements: Danilo Alvares was supported by the Chilean National Fund for Scientific and Techn...
This paper presents a novel semiparametric joint model for multivariate longitudinal and survival da...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
<p>Joint models for longitudinal and survival data are routinely used in clinical trials or other st...
Many clinical trials and other medical studies generate both longitudinal (repeated measurements) an...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
This paper deals with the analysis of multivariate survival data from a Bayesian perspective using M...
In longitudinal studies, a popular model is the linear mixed model that includes fixed effec...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
The main aim of this paper is to perform sensitivity analysis to the specification of prior distribu...
Joint modeling of longitudinal data and survival data has been used widely for analyzing AIDS clinic...
Extensions of the traditional Cox proportional hazard model, concerning the following features are o...
In this thesis, we investigate joint models of longitudinal and time-to-event data. We extend the c...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...
Acknowledgements: Danilo Alvares was supported by the Chilean National Fund for Scientific and Techn...
This paper presents a novel semiparametric joint model for multivariate longitudinal and survival da...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
<p>Joint models for longitudinal and survival data are routinely used in clinical trials or other st...
Many clinical trials and other medical studies generate both longitudinal (repeated measurements) an...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
This paper deals with the analysis of multivariate survival data from a Bayesian perspective using M...
In longitudinal studies, a popular model is the linear mixed model that includes fixed effec...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
The main aim of this paper is to perform sensitivity analysis to the specification of prior distribu...
Joint modeling of longitudinal data and survival data has been used widely for analyzing AIDS clinic...
Extensions of the traditional Cox proportional hazard model, concerning the following features are o...
In this thesis, we investigate joint models of longitudinal and time-to-event data. We extend the c...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...