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Quantile regression of right-censored length-biased data using the Buckley-James-type method

机译:使用Buckley-James型方法对右删失的长度有偏的数据进行分位数回归

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摘要

Length-biased data are encountered frequently due to prevalent cohort sampling in follow-up studies. Quantile regression provides great flexibility for assessing covariate effects on survival time, and is a useful alternative to Cox's proportional hazards model and the accelerated failure time (AFT) model for survival analysis. In this paper, we develop a Buckley-James-type estimator for right-censored length-biased data under a quantile regression model. The problem of informative right-censoring of length-biased data induced by prevalent cohort sampling must be handled. Following on from the generalization of the Buckley-James-type estimator under the AFT model proposed by Ning et al. (Biometrics 67:1369-1378, 2011), we propose a Buckley-James-type estimating equation for regression coefficients in the quantile regression model and develop an iterative algorithm to obtain the estimates. The resulting estimator is consistent and asymptotically normal. We evaluate the performance of the proposed estimator on finite samples using extensive simulation studies. Analysis of real data is presented to illustrate our proposed methodology.
机译:由于在后续研究中人群队列抽样,经常会遇到长度偏倚的数据。分位数回归为评估协变量对生存时间的影响提供了极大的灵活性,并且是Cox比例风险模型和加速失败时间(AFT)模型进行生存分析的有用替代方法。在本文中,我们为分位数回归模型下的右删失长度有偏数据开发了一种Buckley-James型估计器。必须解决由流行的队列抽样引起的长度偏倚数据的信息性右删失问题。紧接着Ning等人提出的AFT模型下的Buckley-James型估计量的推广。 (Biometrics 67:1369-1378,2011),我们为分位数回归模型中的回归系数提出了Buckley-James型估计方程,并开发了一种迭代算法来获得估计。所得的估计量是一致的并且渐近正态。我们使用广泛的仿真研究评估了有限样本上建议的估计器的性能。实际数据分析旨在说明我们提出的方法。

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