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Joint Scale-Change Models for Recurrent Events and Failure Time

Authors :
Gongjun Xu
Sy Han Chiou
Chiung-Yu Huang
Mei-Cheng Wang
Jun Yan
Source :
Grantee Submission. 2017.
Publication Year :
2017

Abstract

Recurrent event data arise frequently in various fields such as biomedical sciences, public health, engineering, and social sciences. In many instances, the observation of the recurrent event process can be stopped by the occurrence of a correlated failure event, such as treatment failure and death. In this article, we propose a joint scale-change model for the recurrent event process and the failure time, where a shared frailty variable is used to model the association between the two types of outcomes. In contrast to the popular Cox-type joint modeling approaches, the regression parameters in the proposed joint scale-change model have marginal interpretations. The proposed approach is robust in the sense that no parametric assumption is imposed on the distribution of the unobserved frailty and that we do not need the strong Poisson-type assumption for the recurrent event process. We establish consistency and asymptotic normality of the proposed semiparametric estimators under suitable regularity conditions. To estimate the corresponding variances of the estimators, we develop a computationally efficient resampling-based procedure. Simulation studies and an analysis of hospitalization data from the Danish Psychiatric Central Register illustrate the performance of the proposed method. [This is the author manuscript for an article published in "Journal of the American Statistical Association" v112 n518 p794-805 2017.]

Details

Language :
English
Database :
ERIC
Journal :
Grantee Submission
Publication Type :
Report
Accession number :
ED652932
Document Type :
Reports - Evaluative
Full Text :
https://doi.org/10.1080/01621459.2016.1173557