For certain life cycle events a non-susceptible fraction of subjects will never undergo the event. In demographic applications, examples are provided by marriage and age at first maternity. A model for survival data allowing a permanent survival fraction, non-monotonic failure rates and unobserved frailty is considered here. Regressions are used to explain both the failure time and permanent survival mechanisms and additive correlated errors are included in the general linear models defining these regressions. AÂ hierarchical Bayesian approach is adopted with likelihood conditional on the random frailty effects and a second stage prior defining the bivariate density of those effects. The gain in model fit, and potential effects on inference...
Random effect models are extremely useful for multivariate times to events analysis (Hougaard, 2000)...
A Bivariate survival model is constructed.This model is based on a frailty model that acts multiplic...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
Multivariate survival data arise when each study subject may experience multiple events or when the ...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
The hazard function plays a central role in survival analysis. In a homogeneous population, the dist...
Correlated survival times can be modelled by introducing a random effect, or frailty component, into...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
BACKGROUND In survival analysis a large literature using frailty models, or models with unobserved h...
In this paper we introduce a Bayesian semiparametric model for bivariate and multivariate survival d...
This article describes inference for dependent multivariate times-to-events using a bivariate positi...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
peer-reviewedIn the survival analysis literature, the standard model for data analysis is the semi-...
Synopsis. In this paper we discuss the notion of individual frailty and its interpretation. In addit...
1 SUMMARY. In survival data analysis, the proportional hazard model was introduced by Cox (1972) in ...
Random effect models are extremely useful for multivariate times to events analysis (Hougaard, 2000)...
A Bivariate survival model is constructed.This model is based on a frailty model that acts multiplic...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
Multivariate survival data arise when each study subject may experience multiple events or when the ...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
The hazard function plays a central role in survival analysis. In a homogeneous population, the dist...
Correlated survival times can be modelled by introducing a random effect, or frailty component, into...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
BACKGROUND In survival analysis a large literature using frailty models, or models with unobserved h...
In this paper we introduce a Bayesian semiparametric model for bivariate and multivariate survival d...
This article describes inference for dependent multivariate times-to-events using a bivariate positi...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
peer-reviewedIn the survival analysis literature, the standard model for data analysis is the semi-...
Synopsis. In this paper we discuss the notion of individual frailty and its interpretation. In addit...
1 SUMMARY. In survival data analysis, the proportional hazard model was introduced by Cox (1972) in ...
Random effect models are extremely useful for multivariate times to events analysis (Hougaard, 2000)...
A Bivariate survival model is constructed.This model is based on a frailty model that acts multiplic...
A key assumption of the popular Cox model is that the observations in the study are statistically in...