Klinglmueller Florian, Posch Martin, Koenig Franz
Center for Medical Statistics, Informatics, and Intelligent Systems, Medical University of Vienna, Spitalgasse 23, 1090 Vienna, Austria.
Pharm Stat. 2014 Nov-Dec;13(6):345-56. doi: 10.1002/pst.1640. Epub 2014 Oct 16.
Multiple testing procedures defined by directed, weighted graphs have recently been proposed as an intuitive visual tool for constructing multiple testing strategies that reflect the often complex contextual relations between hypotheses in clinical trials. Many well-known sequentially rejective tests, such as (parallel) gatekeeping tests or hierarchical testing procedures are special cases of the graph based tests. We generalize these graph-based multiple testing procedures to adaptive trial designs with an interim analysis. These designs permit mid-trial design modifications based on unblinded interim data as well as external information, while providing strong family wise error rate control. To maintain the familywise error rate, it is not required to prespecify the adaption rule in detail. Because the adaptive test does not require knowledge of the multivariate distribution of test statistics, it is applicable in a wide range of scenarios including trials with multiple treatment comparisons, endpoints or subgroups, or combinations thereof. Examples of adaptations are dropping of treatment arms, selection of subpopulations, and sample size reassessment. If, in the interim analysis, it is decided to continue the trial as planned, the adaptive test reduces to the originally planned multiple testing procedure. Only if adaptations are actually implemented, an adjusted test needs to be applied. The procedure is illustrated with a case study and its operating characteristics are investigated by simulations.
最近,由有向加权图定义的多重检验程序被提议作为一种直观的可视化工具,用于构建多重检验策略,以反映临床试验中假设之间通常复杂的上下文关系。许多著名的顺序拒绝检验,如(并行)把关检验或分层检验程序,都是基于图的检验的特殊情况。我们将这些基于图的多重检验程序推广到具有期中分析的适应性试验设计中。这些设计允许根据未盲法的期中数据以及外部信息在试验中期修改设计,同时提供强大的家族式错误率控制。为了保持家族式错误率,不需要详细预先指定适应规则。由于适应性检验不需要了解检验统计量的多元分布,因此它适用于广泛的场景,包括具有多个治疗比较、终点或亚组或其组合的试验。适应的例子包括放弃治疗组、选择亚人群和重新评估样本量。在期中分析中,如果决定按计划继续试验,适应性检验就简化为最初计划的多重检验程序。只有在实际实施了适应措施时,才需要应用调整后的检验。通过一个案例研究说明了该程序,并通过模拟研究了其操作特性。