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Rank Regression Analysis of Multivariate Failure Time Data Based on Marginal Linear Models

机译:基于边际线性模型的多元失效时间数据的秩回归分析

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Multivariate failure time data arises when each study subject can potentially experience several types of failures or recurrences of a certain phenomenon, or when failure times are sampled in clusters. We formulate the marginal distributions of such multivariate data with semi-parametric accelerated failure time models (i.e. linear regression models for log-transformed failure times with arbitrary error distributions) while leaving the dependence structures for related failure times completely unspecified. We develop rank-based monotone estimating functions for the regression parameters of these marginal models based on right-censored observations. The estimating equations can be easily solved via linear programming. The resultant estimators are consistent and asymptotically normal. The limiting covariance matrices can be readily estimated by a novel resampling approach, which does not involve non-parametric density estimation or evaluation of numerical derivatives. The proposed estimators represent consistent roots to the potentially non-monotone estimating equations based on weighted log-rank statistics. Simulation studies show that the new inference procedures perform well in small samples. Illustrations with real medical data are provided.
机译:当每个研究对象可能会经历几种类型的故障或某种现象的复发时,或者在群集中对故障时间进行采样时,就会出现多元故障时间数据。我们使用半参数加速故障时间模型(即具有任意误差分布的对数转换故障时间的线性回归模型)来公式化此类多元数据的边际分布,而完全不指定相关故障时间的依存结构。我们为这些边际模型基于右删失观测值的回归参数开发基于等级的单调估计函数。估计方程可通过线性编程轻松求解。结果估计量是一致的并且渐近正态。极限协方差矩阵可以通过新颖的重采样方法轻松估算,该方法不涉及非参数密度估算或数值导数评估。所提出的估计量代表基于加权对数秩统计量的潜在非单调估计方程的一致根。仿真研究表明,新的推理过程在小样本中表现良好。提供带有真实医学数据的插图。

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