University of Wisconsin-Madison, Madison, WI, U.S.A.
Stat Med. 2012 Aug 15;31(18):1961-71. doi: 10.1002/sim.5363. Epub 2012 Apr 25.
Covariate adaptive allocation is often adopted in sequential clinical trials to maintain the balance of baseline covariates that could potentially confound the outcome of a trial. Several allocation methods exist in the literature that can handle both continuous and categorical covariates. We propose a minimization approach to maintaining the balance of multiple continuous and categorical covariates in sequential clinical trials, which uses the area between the empirical cumulative distribution functions of the observed covariate values as the imbalance metric. Numerical results based on extensive simulation studies and a real dataset show that the proposed approach produces more accurate estimates of the treatment effect and leads to more powerful trials than the existing approaches for trials with binary, continuous, and time-to-event outcomes.
协变量自适应分配通常用于序贯临床试验中,以保持潜在混杂试验结果的基线协变量的平衡。文献中存在几种可以处理连续和分类协变量的分配方法。我们提出了一种最小化方法,用于维持序贯临床试验中多个连续和分类协变量的平衡,该方法使用观测协变量值的经验累积分布函数之间的区域作为不平衡度量。基于广泛的模拟研究和真实数据集的数值结果表明,与现有的用于二项式、连续和事件时间结局试验的方法相比,该方法对处理效果的估计更准确,并且导致更强大的试验。