A semiparametric random effects model for multivariate competing risks data

Thomas H. Scheike, Yanqing Sun, Mei-Jie Zhang, Tina Kold Jensen

21 Citations (Scopus)

Abstract

We propose a semiparametric random effects model for multivariate competing risks data when the failures of a particular type are of interest. Under this model, the marginal cumulative incidence functions follow a generalized semiparametric additive model. The associations between the cause-specific failure times can be studied through dependence parameters of copula functions that are allowed to depend on cluster-level covariates. A cross-odds ratio-type measure is proposed to describe the associations between cause-specific failure times, and its relationship to the dependence parameters is explored. We develop a two-stage estimation procedure where the marginal models are estimated in the first stage and the dependence parameters are estimated in the second stage. The large sample properties of the proposed estimators are derived. The proposed procedures are applied to Danish twin data to model the cumulative incidence for the age of natural menopause and to investigate the association in the onset of natural menopause between monozygotic and dizygotic twins.

Original languageEnglish
JournalBiometrika
Volume97
Issue number1
Pages (from-to)133-145
ISSN0006-3444
Publication statusPublished - Mar 2010

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