Analysis of Interval Censored Competing Risk Data via Nonparametric Multiple Imputation
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초록

In many clinical studies, the time to event of interest may involve several causes of failure. Furthermore, when the failure times are not completely observed, and instead are only known to lie somewhere between two observation times, interval censored competing risk data occur. For estimating regression coefficient with right censored competing risk data, Fine and Gray introduced the concept of censoring complete data and derived an estimating equation using an inverse probability censoring weight technique to reflect the probability being censored. As an alternative to achieve censoring complete data, Ruan and Gray considered to directly impute a potential censoring time for the subject who experienced the competing event. In this work, we extend Ruan and Gray's approach to interval censored competing risk data by applying a multiple imputation technique. The suggested method has an advantage to be easily implemented by using several R functions developed for analyzing interval censored failure time data without competing risks. Simulation studies are conducted under diverse schemes to evaluate sizes and powers and to estimate regression coefficients. A dataset from an AIDS cohort study is analyzed as a real data example.

키워드

AIDSCensoring complete dataCompeting riskInterval censored dataMultiple imputationPROPORTIONAL HAZARDS MODELSEMIPARAMETRIC REGRESSION-ANALYSISFAILURE TIME DATACUMULATIVE INCIDENCE2-SAMPLE TESTSURVIVAL-DATAALGORITHMTESTSINFERENCE
제목
Analysis of Interval Censored Competing Risk Data via Nonparametric Multiple Imputation
저자
Lee, Hyung EunKim, Yang-Jin
DOI
10.1080/19466315.2020.1741445
발행일
2021-07
유형
Article
저널명
Statistics in Biopharmaceutical Research
13
3
페이지
367 ~ 374