Association measure of doubly interval censored data using a Kendall's tau estimator
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초록

In this article, our interest is to estimate the association between consecutive gap times which are subject to interval censoring. Such data are referred as doubly interval censored data (Sun, 2006). In a context of serial event, an induced dependent censoring frequently occurs, resulting in biased estimates. In this study, our goal is to propose a Kendall's tau based association measure for doubly interval censored data. For adjusting the impact of induced dependent censoring, the inverse probability censoring weighting (IPCW) technique is implemented. Furthermore, a multiple imputation technique is applied to recover unknown failure times owing to interval censoring. Simulation studies demonstrate that the suggested association estimator performs well with moderate sample sizes. The proposed method is applied to a dataset of children's dental records.

키워드

doubly interval censored dataKendall's tauinduced dependent censoringIPCWmultiple imputation
제목
Association measure of doubly interval censored data using a Kendall's tau estimator
저자
Kang, Seo-HyunKim, Yang-Jin
DOI
10.29220/CSAM.2021.28.2.151
발행일
2021-03
유형
Article
저널명
Communications for Statistical Applications and Methods
28
2
페이지
151 ~ 159