Analysis of interval censored competing risk data with missing causes of failure using pseudo values approach
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초록

Competing risks often occur when subjects may fail from one of several mutually exclusive causes. For example, when a patient suffering a cancer may die from other cause, we are interested in the effect of a certain covariate on the probability of dying of cancer at a certain time. Several approaches have been suggested to analyse competing risk data in the presence of complete information of failure cause. In this paper, our interest is to consider the occurrence of missing causes as well as interval censored failure time. There exist no method to discuss this problem. We applied a Klein-Andersen's pseudo-value approach [Klein, JP Andersen PK. Regression modeling of competing risks data based on pseudovalues of the cumulative incidence function. Biometrics. 2005;61:223-229] based on the estimated cumulative incidence function and a regression coefficient is estimated through a multiple imputation. We evaluate the suggested method by comparing with a complete case analysis in several simulation settings.

키워드

Competing riskcumulative incidence functionGEEinterval censored datamissingcause of failuremultiple imputationMAXIMUM-LIKELIHOOD-ESTIMATIONCUMULATIVE INCIDENCE FUNCTIONNONPARAMETRIC-ESTIMATIONREGRESSION-COEFFICIENTSSURVIVAL-DATAMODEL
제목
Analysis of interval censored competing risk data with missing causes of failure using pseudo values approach
저자
Do, GipeumKim, Yang-Jin
DOI
10.1080/00949655.2016.1222530
발행일
2017-03
유형
Article
저널명
Journal of Statistical Computation and Simulation
87
4
페이지
631 ~ 639