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Event-weighted proportional hazards modelling for recurrent gap time data

机译:针对事件间隔时间数据的事件加权比例风险建模

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The analysis of gap times in recurrent events requires an adjustment to standard marginal models. One can perform this adjustment with a modified within-cluster resampling technique; however, this method is computationally intensive. In this paper, we describe a simple adjustment to the standard Cox proportional hazards model analysis that mimics the intent of within-cluster resampling and results in similar parameter estimates. This method essentially weights the partial likelihood contributions by the inverse of the number of gap times observed within the individual while assuming a working independence correlation matrix. We provide an example involving recurrent mammary tumours in female rats to illustrate the methods considered in this paper.
机译:分析重复事件中的间隔时间需要对标准边际模型进行调整。可以使用一种改进的集群内重采样技术来执行此调整;但是,此方法需要大量计算。在本文中,我们描述了对标准Cox比例风险模型分析的简单调整,该模型模拟了集群内重新采样的意图,并得出了相似的参数估计值。该方法实质上是通过假设在工作独立性相关矩阵下,在个体中观察到的间隔时间的数量的倒数来加权部分似然贡献的。我们提供了一个涉及雌性大鼠复发性乳腺肿瘤的例子,以说明本文考虑的方法。

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