Cure rate model with bivariate interval censored data
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초록

A mixture model is proposed to analyze a bivariate interval censored data with cure rates. There exist two types of association related with bivariate failure times and bivariate cure rates, respectively. A correlation coefficient is adopted for the association of bivariate cure rates and a copula function is applied for bivariate survival times. The conditional expectation of unknown quantities attributable to interval censored data and cure rates are calculated in the E-step in ES (Expectation-Solving algorithm) and the marginal estimates and the association measures are estimated in the S-step through a two-stage procedure. A simulation study is performed to evaluate the suggested method and a real data from HIV patients is analyzed as a real data example.

키워드

AssociationBivariate interval censored dataCopulaCure rate modelES algorithmPseudo-likelihoodFAILURE TIME DATAREGRESSION-ANALYSISSURVIVAL-DATABINARY DATAASSOCIATIONALGORITHMFRACTIONDISEASESFRAILTY
제목
Cure rate model with bivariate interval censored data
저자
Kim, Yang-Jin
DOI
10.1080/03610918.2016.1228959
발행일
2017-04
유형
Article
저널명
Communications in Statistics Part B: Simulation and Computation
46
9
페이지
7116 ~ 7124