Dai James Y, Zhang Xinyi Cindy, Wang Ching-Yun, Kooperberg Charles
Fred Hutchinson Cancer Research Center and University of Washington, Seattle, Washington.
Biometrics. 2016 Mar;72(1):30-8. doi: 10.1111/biom.12392. Epub 2015 Sep 8.
Under suitable assumptions and by exploiting the independence between inherited genetic susceptibility and treatment assignment, the case-only design yields efficient estimates for subgroup treatment effects and gene-treatment interaction in a Cox model. However it cannot provide estimates of the genetic main effect and baseline hazards, that are necessary to compute the absolute disease risk. For two-arm, placebo-controlled trials with rare failure time endpoints, we consider augmenting the case-only design with random samples of controls from both arms, as in the classical case-cohort sampling scheme, or with a random sample of controls from the active treatment arm only. The latter design is motivated by vaccine trials for cost-effective use of resources and specimens so that host genetics and vaccine-induced immune responses can be studied simultaneously in a bigger set of participants. We show that these designs can identify all parameters in a Cox model and that the efficient case-only estimator can be incorporated in a two-step plug-in procedure. Results in simulations and a data example suggest that incorporating case-only estimators in the classical case-cohort design improves the precision of all estimated parameters; sampling controls only in the active treatment arm attains a similar level of efficiency.
在适当的假设下,通过利用遗传易感性与治疗分配之间的独立性,病例对照设计可在Cox模型中对亚组治疗效果和基因 - 治疗相互作用产生有效的估计。然而,它无法提供计算绝对疾病风险所需的遗传主效应和基线风险估计。对于双臂、安慰剂对照且具有罕见失败时间终点的试验,我们考虑采用经典病例队列抽样方案那样,用来自双臂的对照随机样本,或仅用来自活性治疗臂的对照随机样本,来扩充病例对照设计。后一种设计的动机来自疫苗试验,目的是为了经济高效地利用资源和样本,以便能在更多参与者中同时研究宿主遗传学和疫苗诱导的免疫反应。我们表明,这些设计能够识别Cox模型中的所有参数,并且有效的病例对照估计量可以纳入两步代入法程序中。模拟结果和一个数据示例表明,在经典病例队列设计中纳入病例对照估计量可提高所有估计参数的精度;仅在活性治疗臂中抽样对照可达到类似的效率水平。