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Quantile Regression Models for Current Status Data

机译:当前状态数据的分位数回归模型

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摘要

Current status data arise frequently in demography, epidemiology, and econometrics where the exact failure time cannot be determined but is only known to have occurred before or after a known observation time. We propose a quantile regression model to analyze current status data, because it does not require distributional assumptions and the coefficients can be interpreted as direct regression effects on the distribution of failure time in the original time scale. Our model assumes that the conditional quantile of failure time is a linear function of covariates. We assume conditional independence between the failure time and observation time. An M-estimator is developed for parameter estimation which is computed using the concave-convex procedure and its confidence intervals are constructed using a subsampling method. Asymptotic properties for the estimator are derived and proven using modern empirical process theory. The small sample performance of the proposed method is demonstrated via simulation studies. Finally, we apply the proposed method to analyze data from the Mayo Clinic Study of Aging.
机译:当前状态数据经常出现在人口统计学,流行病学和计量经济学中,其中无法确定确切的故障时间,而仅知道发生在已知观察时间之前或之后。我们提出了分位数回归模型来分析当前状态数据,因为它不需要分布假设,并且系数可以解释为原始时间范围内对故障时间分布的直接回归影响。我们的模型假设失效时间的条件分位数是协变量的线性函数。我们假设故障时间和观察时间之间是条件独立的。开发了一种M估计器用于参数估计,该估计器使用凹凸过程计算,并且其置信区间使用子采样方法构造。利用现代经验过程理论推导并证明了估计器的渐近性质。通过仿真研究证明了该方法的小样本性能。最后,我们使用提出的方法来分析来自Mayo衰老临床研究的数据。

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