Nonparametric quantile inference with competing risks data |
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Authors: | Peng, L. Fine, J. P. |
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Affiliation: | Department of Biostatistics, Emory University, Atlanta, Georgia 30322, U.S.A. |
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Abstract: | A conceptually simple quantile inference procedure is proposedfor cause-specific failure probabilities with competing risksdata. The quantiles are defined using the cumulative incidencefunction, which is intuitively meaningful in the competing–risksset–up. We establish the uniform consistency and weakconvergence of a nonparametric estimator of this quantile function.These results form the theoretical basis for extensions of standardone–sample and two–sample quantile inference forindependently censored data. This includes the constructionof confidence intervals and bands for the quantile function,and two–sample tests. Simulation studies and a real dataexample illustrate the practical utility of the methodology. |
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Keywords: | Asymptotic theory Crude risk function Dependent censoring Improper distribution Nonparametric estimation Percentile function Resampling |
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