A population-averaged additive subdistribution hazard model is proposed to assess the marginal effects of covariates on the cumulative incidence function to analyze correlated failure time data subject to competing risks. This approach extends the population-averaged additive hazard model by accommodating potentially dependent censoring due to competing events other than the event of interest. Assuming an independent working correlation structure, an estimating equations approach is considered to estimate the regression coefficients and a sandwich variance estimator is proposed. The sandwich variance estimator accounts for both the correlations between failure times as well as the those between the censoring times, and is robust to misspecification of the unknown dependency structure within each cluster. We further develop goodness-of-fit tests to assess the adequacy of the additive structure of the subdistribution hazard for each covariate, as well as for the overall model. Simulation studies are carried out to investigate the performance of the proposed methods in finite samples; and we illustrate our methods by analyzing the STrategies to Reduce Injuries and Develop confidence in Elders (STRIDE) study.
翻译:提议了一个人口平均添加剂子分配危害模型,以评估共变数对累积发生率功能的边际效应,以分析相关故障时间数据受到相互竞争的风险。这一方法扩大了人口平均添加危害模型的范围,考虑到因相互竞争的事件而不是因感兴趣的事件而可能产生的依赖性审查。假设一个独立的工作相关性结构,则考虑一种估算方程方法来估计回归系数和三明治差异估计器。三明治差异估计器既考虑到故障时间之间的相互关系,又考虑到审查时间之间的相互关系,而且考虑到每个组群中未知依赖性结构的错误特征。我们进一步开发了适合的测试,以评估每个共变数以及整个模型子分配危险添加结构是否充分。进行了模拟研究,以调查在有限样本中拟议方法的性能;我们通过分析减少伤害和培养对老年人信心的研究(STRIDE),来说明我们的方法。