Department of Medical Statistics, University Medical Center Göttingen, Göttingen, Germany.
Stat Med. 2012 Dec 30;31(30):4309-20. doi: 10.1002/sim.5541. Epub 2012 Aug 3.
Growing interest in personalised medicine and targeted therapies is leading to an increase in the importance of subgroup analyses. If it is planned to view treatment comparisons in both a predefined subgroup and the full population as co-primary analyses, it is important that the statistical analysis controls the familywise type I error rate. Spiessens and Debois (Cont. Clin. Trials, 2010, 31, 647-656) recently proposed an approach specific for this setting, which incorporates an assumption about the correlation based on the known sizes of the different groups, and showed that this is more powerful than generic multiple comparisons procedures such as the Bonferroni correction. If recruitment is slow relative to the length of time taken to observe the outcome, it may be efficient to conduct an interim analysis. In this paper, we propose a new method for an adaptive clinical trial with co-primary analyses in a predefined subgroup and the full population based on the conditional error function principle. The methodology is generic in that we assume test statistics can be taken to be normally distributed rather than making any specific distributional assumptions about individual patient data. In a simulation study, we demonstrate that the new method is more powerful than previously suggested analysis strategies. Furthermore, we show how the method can be extended to situations when the selection is not based on the final but on an early outcome. We use a case study in a targeted therapy in oncology to illustrate the use of the proposed methodology with non-normal outcomes.
人们对个性化医学和靶向治疗的兴趣日益浓厚,这使得亚组分析的重要性逐渐增加。如果计划将治疗比较同时作为主要分析在预设亚组和总体人群中进行观察,那么控制总体Ⅰ型错误率就显得尤为重要。Spiessens 和 Debois(Cont. Clin. Trials,2010,31,647-656)最近提出了一种专门针对这种情况的方法,该方法基于已知的不同组大小的相关性假设,并表明这种方法比 Bonferroni 校正等通用多重比较程序更有效。如果相对于观察结果所需的时间,招募速度较慢,则进行中期分析可能会更有效。在本文中,我们基于条件误差函数原理,提出了一种新的用于具有预设亚组和总体人群共同主要分析的适应性临床试验的方法。该方法具有通用性,因为我们假设检验统计量可以正态分布,而不是对个体患者数据做出任何特定的分布假设。在模拟研究中,我们证明了新方法比之前提出的分析策略更有效。此外,我们展示了如何将该方法扩展到选择不是基于最终结果而是基于早期结果的情况。我们使用肿瘤学中的靶向治疗案例研究来说明所提出的方法在非正态结果下的应用。