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Proportional Subdistribution Hazards Model for Competing Risks in Case-Cohort Studies

机译:案例 - 队列研究中竞争风险的比例分布危险模型

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Competing risks refer to the situation where there are multiple causes of failure and the occurrence of one type of event prohibits the occurrence of the other types of event or alters the chance to observe them. In large cohort studies with long-term follow-up, there are often competing risks. When the failure events are rare, or the information on certain risk factors is difficult or costly to measure for the full cohort, a case-cohort study design can be a desirable approach. In this paper, we consider a semiparametric proportional subdistribution hazards model in the presence of competing risks in case-cohort studies. The subdistribution hazards function, unlike the cause-specific hazards function, gives the advantage of outlining the marginal probability of a particular type of event. We propose estimating equations based on inverse probability weighting techniques for the estimation of the model parameters. In the estimation methods, we considered a weighted availability indicator to properly account for the case-cohort sampling scheme. We also proposed a Breslow-type estimator for the cumulative baseline subdistribution hazard function. The resulting estimators are shown, using empirical processes and martingale properties, to be consistent and asymptotically normally distributed. The performance of the proposed methods in finite samples are examined through simulation studies by considering different levels of censoring and event of interest percentages. The simulation results from the different scenarios suggest that the parameter estimates are reasonably close to the true values of the respective parameters in the model. Finally, the proposed estimation methods are applied to a case-cohort sample from the Sister Study, in which we illustrated the proposed methods by studying the association between selected CpGs and invasive breast cancer in the presence of ductal carcinoma in situ as competing risk.
机译:竞争风险指的是有多种失败原因的情况,并且一种类型的事件发生的情况禁止发生其他类型的事件或改变观察它们的机会。在大型队列研究中具有长期随访,通常存在竞争风险。当失败事件罕见时,或者有关某些风险因素的信息难以衡量全面的群组,案例 - 队列研究设计可以是一种理想的方法。在本文中,我们考虑了在案例 - 队列研究中存在竞争风险的情况下的半占比例分布危险模型。与原因特定的危险功能不同,分布危险函数具有概述特定类型事件的边际概率的优点。我们提出了基于逆概率加权技术的估计估计模型参数的方程。在估计方法中,我们考虑了加权可用性指标,以适当地占用案例 - 队列采样方案。我们还提出了一种用于累积基线分区危险功能的Brieslow型估计。使用经验过程和Martingale属性显示所得到的估计器,符合和渐近地分布。通过考虑不同水平的审查和感兴趣百分比,通过模拟研究来检查所提出的方法在有限样本中的性能。来自不同场景的仿真结果表明,参数估计合理地接近模型中各个参数的真实值。最后,所提出的估计方法应用于来自姐妹研究的案例 - 群组样本,其中我们通过研究所选择的CPG和侵袭性乳腺癌在导管癌存在下,以竞争风险来研究所提出的方法。

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