Department of Biostatistics and Data Science, The University of Texas Health Science Center at Houston, Houston, Texas.
Department of Biostatistics, The University of Texas MD Anderson Cancer Center, Houston, Texas.
Stat Med. 2019 Aug 30;38(19):3656-3668. doi: 10.1002/sim.8202. Epub 2019 May 9.
When analyzing bivariate outcome data, it is often of scientific interest to measure and estimate the association between the bivariate outcomes. In the presence of influential covariates for one or both of the outcomes, conditional association measures can quantify the strength of association without the disturbance of the marginal covariate effects, to provide cleaner and less-confounded insights into the bivariate association. In this work, we propose estimation and inferential procedures for assessing the conditional Kendall's tau coefficient given the covariates, by adopting the quantile regression and quantile copula framework to handle marginal covariate effects. The proposed method can flexibly accommodate right censoring and be readily applied to bivariate survival data. It also facilitates an estimator of the conditional concordance measure, namely, a conditional index, where the unconditional index is commonly used to assess the predictive capacity for survival outcomes. The proposed method is flexible and robust and can be easily implemented using standard software. The method performed satisfactorily in extensive simulation studies with and without censoring. Application of our methods to two real-life data examples demonstrates their desirable practical utility.
当分析双变量结果数据时,通常需要测量和估计双变量结果之间的关联。在存在一个或两个结果的有影响的协变量的情况下,条件关联度量可以量化关联的强度,而不受边际协变量效应的干扰,从而提供更清晰、干扰更小的双变量关联见解。在这项工作中,我们通过采用分位数回归和分位数 Copula 框架来处理边际协变量效应,提出了在给定协变量的情况下评估条件 Kendall's tau 系数的估计和推断程序。所提出的方法可以灵活地适应右删失,并易于应用于双变量生存数据。它还促进了条件一致性度量的估计器,即条件 C 指数,无条件 C 指数通常用于评估生存结果的预测能力。所提出的方法具有灵活性和稳健性,可以使用标准软件轻松实现。该方法在有无删失的广泛模拟研究中表现良好。我们的方法在两个实际数据示例中的应用证明了它们具有良好的实用价值。