Whitehead John, Desai Yasin, Jaki Thomas
Medical and Pharmaceutical Statistics Research Unit, Department of Mathematics and Statistics, Lancaster University, Lancaster, UK.
Stat Med. 2020 May 20;39(11):1593-1609. doi: 10.1002/sim.8497. Epub 2020 Mar 23.
When a clinical trial is subject to a series of interim analyses as a result of which the study may be terminated or modified, final frequentist analyses need to take account of the design used. Failure to do so may result in overstated levels of significance, biased effect estimates and confidence intervals with inadequate coverage probabilities. A wide variety of valid methods of frequentist analysis have been devised for sequential designs comparing a single experimental treatment with a single control treatment. It is less clear how to perform the final analysis of a sequential or adaptive design applied in a more complex setting, for example, to determine which treatment or set of treatments amongst several candidates should be recommended. This article has been motivated by consideration of a trial in which four treatments for sepsis are to be compared, with interim analyses allowing the dropping of treatments or termination of the trial to declare a single winner or to conclude that there is little difference between the treatments that remain. The approach taken is based on the method of Rao-Blackwellization which enhances the accuracy of unbiased estimates available from the first interim analysis by taking their conditional expectations given final sufficient statistics. Analytic approaches to determine such expectations are difficult and specific to the details of the design: instead "reverse simulations" are conducted to construct replicate realizations of the first interim analysis from the final test statistics. The method also provides approximate confidence intervals for the differences between treatments.
当一项临床试验需要进行一系列期中分析,可能导致研究终止或修改时,最终的频率学派分析需要考虑所使用的设计。否则可能会导致显著性水平夸大、效应估计有偏差以及置信区间的覆盖概率不足。已经设计出了各种各样有效的频率学派分析方法用于将单一实验治疗与单一对照治疗进行比较的序贯设计。对于在更复杂的情况下应用的序贯或适应性设计,例如确定在几个候选治疗中应推荐哪一种治疗或哪一组治疗,如何进行最终分析则不太明确。本文的灵感来源于一项试验,该试验要比较四种脓毒症治疗方法,期中分析允许剔除治疗方法或终止试验,以宣布单一获胜者或得出剩余治疗方法之间差异不大的结论。所采用的方法基于Rao - Blackwell化方法,该方法通过在给定最终充分统计量的条件下求期望,提高了首次期中分析中无偏估计的准确性。确定此类期望的解析方法既困难又依赖于设计细节:相反,进行“反向模拟”以根据最终检验统计量构建首次期中分析的重复实现。该方法还提供了治疗方法之间差异的近似置信区间。