Frailty models are often used to study the individual heterogeneity in multivariate survival analysis. Whereas the shared frailty model is widely applied, the correlated frailty model has gained attention because it elevates the restriction of unobserved factors to act similar within clusters. Estimating frailty models is not straightforward due to various types of censoring. In this paper, we study the behavior of the bivariate-correlated gamma frailty model for type I interval-censored data, better known as current status data. We show that applying a shared rather than a correlated frailty model to cross-sectionally collected serological data on hepatitis A and B leads to biased estimates for the baseline hazard and variance parameters.s...
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
Shared Gamma and Inverse-Gaussian Frailty models are used to analyze the survival times of patients ...
Goals and Objectives: A typical analysis of survival data involves the modeling of time-to-event dat...
Frailty models have a prominent place in survival analysis to model univariate and multivariate time...
Frailty models have a prominent place in survival analysis to model univariate and multivariate time...
The analysis of multivariate time-to-event (TTE) data can become complicated due to the presence of ...
We propose a new parametric time-varying shared frailty model to represent changes over time in popu...
The relative frailty variance among survivors provides a readily interpretable measure of how the he...
Frailty models are often used in survival analysis to model multivariate time-to-event data. In infe...
In this paper, a new measure for assessing the temporal variation in the strength of association in ...
Frailty models are the survival data analog to regression models, which account for heterogeneity an...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
The term frailty was introduced by Vaupel et al. to indicate that dierentindividuals are at risks ev...
Frequently in the analysis of survival data, survival times within the same group are correlated due...
A Poisson-gamma model is introduced to account for between-subjects heterogeneity and within-subject...
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
Shared Gamma and Inverse-Gaussian Frailty models are used to analyze the survival times of patients ...
Goals and Objectives: A typical analysis of survival data involves the modeling of time-to-event dat...
Frailty models have a prominent place in survival analysis to model univariate and multivariate time...
Frailty models have a prominent place in survival analysis to model univariate and multivariate time...
The analysis of multivariate time-to-event (TTE) data can become complicated due to the presence of ...
We propose a new parametric time-varying shared frailty model to represent changes over time in popu...
The relative frailty variance among survivors provides a readily interpretable measure of how the he...
Frailty models are often used in survival analysis to model multivariate time-to-event data. In infe...
In this paper, a new measure for assessing the temporal variation in the strength of association in ...
Frailty models are the survival data analog to regression models, which account for heterogeneity an...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
The term frailty was introduced by Vaupel et al. to indicate that dierentindividuals are at risks ev...
Frequently in the analysis of survival data, survival times within the same group are correlated due...
A Poisson-gamma model is introduced to account for between-subjects heterogeneity and within-subject...
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
Shared Gamma and Inverse-Gaussian Frailty models are used to analyze the survival times of patients ...
Goals and Objectives: A typical analysis of survival data involves the modeling of time-to-event dat...