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A kernel nonparametric quantile estimator for right-censored competing risks data

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journal contribution
posted on 2019-06-19, 12:37 authored by Caiyun Fan, Gang Ding, Feipeng Zhang

In medical and epidemiological studies, it is often interest to study time-to-event distributions under competing risks that involve two or more failure types. Nonparametric analysis of competing risks is typically focused on the cumulative incidence function or nonparametric quantile function. However, the existing estimators may be very unstable due to their unsmoothness. In this paper, we propose a kernel nonparametric quantile estimator for right-censored competing risks data, which is a smoothed version of Peng and Fine's nonparametric quantile estimator. We establish the Bahadur representation of the proposed estimator. The convergence rate of the remainder term for the proposed estimator is substantially faster than Peng and Fine's quantile estimator. The pointwise confidence intervals and simultaneous confidence bands of the quantile functions are also derived. Simulation studies illustrate the good performance of the proposed estimator. The methodology is demonstrated with two applications of the Supreme Court Judge data and AIDSSI data.

Funding

Fan's work is partially supported by the National Natural Science Foundation of China [11801360], the Key Program in the National Statistical Science Research of China [2018LZ02]. Zhang's work is supported in part by the National Natural Science Foundation of China [11771133, 71331006].

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