This paper reviews some of the main approaches to the analysis of multivariate censored survival data. Such data typically have correlated failure times. The correlation can be a consequence of the observational design, for example with clustered sampling and matching, or it can be a focus of interest as in genetic studies, longitudinal studies of recurrent events and other studies involving multiple measurements. We assume that the correlation between the failure or survival times can be accounted for by fixed or random frailty effects. We then compare the performance of conditional and mixture likelihood approaches to estimating models with these frailty effects in censored bivariate survival data. We find that the mixture methods are sur...
In survival studies with right censored failure times, it is common that censoring is correlated wit...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
One of the most popular models for survival analysis is the Cox proportional hazard model. In this m...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
The emphasis of this thesis lies on complex survival data and on the modelling of this kind of data....
Multivariate survival data typically have correlated failure times. The correlation is often the con...
Multivariate survival data arise when each study subject may experience multiple events or when the ...
In the study of multiple failure time data with recurrent clinical endpoints, the classical independ...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
[[abstract]]This paper discusses regression analysis of multivariate current status failure time dat...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
Abstract: Frailty models have become popular in survival analysis for deal-ing with situations where...
[[abstract]]Owing to the fact that general semiparametric inference procedures are still underdevelo...
This book presents the basic concepts of survival analysis and frailty models, covering both fundame...
In survival studies with right censored failure times, it is common that censoring is correlated wit...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
One of the most popular models for survival analysis is the Cox proportional hazard model. In this m...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
The emphasis of this thesis lies on complex survival data and on the modelling of this kind of data....
Multivariate survival data typically have correlated failure times. The correlation is often the con...
Multivariate survival data arise when each study subject may experience multiple events or when the ...
In the study of multiple failure time data with recurrent clinical endpoints, the classical independ...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
[[abstract]]This paper discusses regression analysis of multivariate current status failure time dat...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
Abstract: Frailty models have become popular in survival analysis for deal-ing with situations where...
[[abstract]]Owing to the fact that general semiparametric inference procedures are still underdevelo...
This book presents the basic concepts of survival analysis and frailty models, covering both fundame...
In survival studies with right censored failure times, it is common that censoring is correlated wit...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
One of the most popular models for survival analysis is the Cox proportional hazard model. In this m...