Comparison of two survival curves is a fundamental problem in survival analysis. Although abundant frequentist methods have been developed for comparing survival functions, inference procedures from the Bayesian perspective are rather limited. In this article, we extract the quantity of interest from the classic log-rank test and propose its Bayesian counterpart. Monte Carlo methods, including a Gibbs sampler and a sequential importance sampling procedure, are developed to draw posterior samples of survival functions and a decision rule of hypothesis testing is constructed for making inference. Via simulations and real data analysis, the proposed Bayesian log-rank test is shown to be asymptotically equivalent to the classic one when noninfo...
A Gamma Hierarchical Model is used for the Bayesian Analysis of Survival Data with covariates. We ce...
Objectives. 1. Identify the most appropriate test to be used when the equality of survival curves is...
In clinical studies, the period before an event occurs is frequently considered as an outcome. The g...
We describe a class of statistical tests for the comparison of two or more survival curves, typicall...
We describe a class of statistical tests for the comparison of two or more survival curves, typicall...
International audienceIn population-based cancer studies, it is often of interest to compare cancer ...
For survival data with nonproportional hazards, the weighted log-rank tests with a proper weighting ...
Survival analysis concerns the characterization or comparison of one or more distributions of the ti...
In doubly interval-censored data, the survival time of interest is defined as the elapsed time betwe...
Background and objective: In survival analysis, estimating the survival probability of a population ...
We propose logrank-type tests for comparing several survival functions from interval-censored data. ...
International audienceComparing survival functions with the log-rank test in the presence of depende...
A common problem that is encountered in medical applications is the overall homogeneity of survival ...
<div><p>A common problem that is encountered in medical applications is the overall homogeneity of s...
The objective of this research is to develop optimal (efficient) test methods for analysis of surviv...
A Gamma Hierarchical Model is used for the Bayesian Analysis of Survival Data with covariates. We ce...
Objectives. 1. Identify the most appropriate test to be used when the equality of survival curves is...
In clinical studies, the period before an event occurs is frequently considered as an outcome. The g...
We describe a class of statistical tests for the comparison of two or more survival curves, typicall...
We describe a class of statistical tests for the comparison of two or more survival curves, typicall...
International audienceIn population-based cancer studies, it is often of interest to compare cancer ...
For survival data with nonproportional hazards, the weighted log-rank tests with a proper weighting ...
Survival analysis concerns the characterization or comparison of one or more distributions of the ti...
In doubly interval-censored data, the survival time of interest is defined as the elapsed time betwe...
Background and objective: In survival analysis, estimating the survival probability of a population ...
We propose logrank-type tests for comparing several survival functions from interval-censored data. ...
International audienceComparing survival functions with the log-rank test in the presence of depende...
A common problem that is encountered in medical applications is the overall homogeneity of survival ...
<div><p>A common problem that is encountered in medical applications is the overall homogeneity of s...
The objective of this research is to develop optimal (efficient) test methods for analysis of surviv...
A Gamma Hierarchical Model is used for the Bayesian Analysis of Survival Data with covariates. We ce...
Objectives. 1. Identify the most appropriate test to be used when the equality of survival curves is...
In clinical studies, the period before an event occurs is frequently considered as an outcome. The g...