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Applying competing risks regression models: an overview

机译:应用竞争风险回归模型:概述

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In many clinical research applications the time to occurrence of one event of interest, that may be obscured by another—so called competing—event, is investigated. Specific interventions can only have an effect on the endpoint they address or research questions might focus on risk factors for a certain outcome. Different approaches for the analysis of time-to-event data in the presence of competing risks were introduced in the last decades including some new methodologies, which are not yet frequently used in the analysis of competing risks data. Cause-specific hazard regression, subdistribution hazard regression, mixture models, vertical modelling and the analysis of time-to-event data based on pseudo-observations are described in this article and are applied to a dataset of a cohort study intended to establish risk stratification for cardiac death after myocardial infarction. Data analysts are encouraged to use the appropriate methods for their specific research questions by comparing different regression approaches in the competing risks setting regarding assumptions, methodology and interpretation of the results. Notes on application of the mentioned methods using the statistical software R are presented and extensions to the presented standard methods proposed in statistical literature are mentioned.
机译:在许多临床研究应用中,研究了一个感兴趣事件发生的时间,该事件可能被另一事件(所谓的竞争事件)所掩盖。特定的干预措施只会对其所解决的终点产生影响,或者研究问题可能会针对特定结果的风险因素。在过去几十年中,引入了在存在竞争风险的情况下分析事件时间数据的不同方法,其中包括一些新方法,这些方法在竞争风险数据的分析中尚不常用。本文介绍了特定原因的危害回归,子分布危害回归,混合模型,垂直建模以及基于伪观测的事件发生时间数据分析,并将其应用于旨在建立风险分层的同类研究的数据集用于心肌梗死后的心源性死亡。通过在假设,方法和结果解释的竞争风险设置中比较不同的回归方法,鼓励数据分析人员针对特定的研究问题使用适当的方法。介绍了使用统计软件R进行上述方法应用的注意事项,并提及了对统计文献中提出的标准方法的扩展。

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