Bandeen-Roche and Liang (2002, Modelling multivariate failure time associations in the presence of a competing risk. Biometrika 89, 299–314.) tailored Oakes (1989, Bivariate survival models induced by frailties. Journal of the American Statistical Association 84, 487–493.)'s conditional hazard ratio to evaluate cause-specific associations in bivariate competing risks data. In many population-based family studies, one observes complex multivariate competing risks data, where the family sizes may be > 2, certain marginals may be exchangeable, and there may be multiple correlated relative pairs having a given pairwise association. Methods for bivariate competing risks data are inadequate in these settings. We show that the rank correlation est...
AbstractA new class of bivariate survival distributions is constructed from a given family of surviv...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
Competing risk of death and time-varying covariates, often overlooked during statistical analyses of...
Bandeen-Roche and Liang (2002, Modelling multivariate failure time associations in the presence of a...
There has been much research on the study of associations among paired failure times. Most has eithe...
Association models, like frailty and copula models, are frequently used to analyze clustered surviva...
Association analyses are performed for two types of multivariate time-to-event data: multivariate cl...
In many biomedical studies, it is of interest to assess dependence between bivariate failure time da...
Traditional research on survival analysis often centered on univariate data where the observations a...
A population average regression model is proposed to assess the marginal effects of covariates on th...
Survival analysis often encounters the situations of correlated multiple events including the same t...
In this work we deal with correlated failure time (age at onset) data arising from population-based...
In assessing time to event endpoints, data are said to exhibit competing risks if subjects can fail ...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
AbstractA new class of bivariate survival distributions is constructed from a given family of surviv...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
Competing risk of death and time-varying covariates, often overlooked during statistical analyses of...
Bandeen-Roche and Liang (2002, Modelling multivariate failure time associations in the presence of a...
There has been much research on the study of associations among paired failure times. Most has eithe...
Association models, like frailty and copula models, are frequently used to analyze clustered surviva...
Association analyses are performed for two types of multivariate time-to-event data: multivariate cl...
In many biomedical studies, it is of interest to assess dependence between bivariate failure time da...
Traditional research on survival analysis often centered on univariate data where the observations a...
A population average regression model is proposed to assess the marginal effects of covariates on th...
Survival analysis often encounters the situations of correlated multiple events including the same t...
In this work we deal with correlated failure time (age at onset) data arising from population-based...
In assessing time to event endpoints, data are said to exhibit competing risks if subjects can fail ...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
AbstractA new class of bivariate survival distributions is constructed from a given family of surviv...
The aim of this paper is to explore multivariate survival techniques for the analysis of bivariate r...
Competing risk of death and time-varying covariates, often overlooked during statistical analyses of...