A two-component parametric mixture is proposed to model survival after an invasive treatment, when patients may experience different hazards regimes: a risk of early mortality directly related to the treatment and/or the treated condition, and a risk of late death influenced by several exogenous factors. The parametric mixture is based on Weibull distributions for both components. Different sets of covariates can affect the Weibull scale parameters and the probability of belonging to one of the two latent classes. A logarithmic function is used to link explanatory variables to scale parameters while a logistic link is assumed for the probability of the latent classes. Inference about unknown parameters is developed in a Bayesian fra...
Mixture modeling is commonly used to model categorical latent variables that represent subpopulation...
In studying the progression of a disease and to better predict time to death (survival data), invest...
Recent studies of (cost-) effectiveness in cardiothoracic transplantation have required estimation o...
A two-component parametric mixture is proposed to model survival after an invasive treatment, when ...
A two-component parametric mixture is proposed to model survival after an invasive treatment, when p...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
In this article we use Bayesian methods to fit a Weibull mixture model with an unknown number of com...
The mixture model postulates a mixed population with two types of individuals, the susceptible and l...
In survival analysis, individuals may fail due to multiple causes of failure called competing risks ...
Probability models for survival times of patients treated for a disease are often interpreted as tho...
In this paper, we introduce a Bayesian approach for segmented Weibull distributions which could be a...
Abstract This paper develops the Weibull distribution by adding a new parameter to the classical di...
The impact of censored survival data on Bayesian inference is assessed when estimating Bayesian Weib...
A general joint modeling framework is proposed that includes a parametric stratified survival compon...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
Mixture modeling is commonly used to model categorical latent variables that represent subpopulation...
In studying the progression of a disease and to better predict time to death (survival data), invest...
Recent studies of (cost-) effectiveness in cardiothoracic transplantation have required estimation o...
A two-component parametric mixture is proposed to model survival after an invasive treatment, when ...
A two-component parametric mixture is proposed to model survival after an invasive treatment, when p...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
In this article we use Bayesian methods to fit a Weibull mixture model with an unknown number of com...
The mixture model postulates a mixed population with two types of individuals, the susceptible and l...
In survival analysis, individuals may fail due to multiple causes of failure called competing risks ...
Probability models for survival times of patients treated for a disease are often interpreted as tho...
In this paper, we introduce a Bayesian approach for segmented Weibull distributions which could be a...
Abstract This paper develops the Weibull distribution by adding a new parameter to the classical di...
The impact of censored survival data on Bayesian inference is assessed when estimating Bayesian Weib...
A general joint modeling framework is proposed that includes a parametric stratified survival compon...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
Mixture modeling is commonly used to model categorical latent variables that represent subpopulation...
In studying the progression of a disease and to better predict time to death (survival data), invest...
Recent studies of (cost-) effectiveness in cardiothoracic transplantation have required estimation o...