Response adaptive randomization (RAR) is appealing from methodological, ethical, and pragmatic perspectives in the sense that subjects are more likely to be randomized to better performing treatment groups based on accumulating data. However, applications of RAR in confirmatory drug clinical trials with multiple active arms are limited largely due to its complexity, and lack of control of randomization ratios to different treatment groups. To address the aforementioned issues, we propose a Response Adaptive Block Randomization (RABR) design allowing arbitrarily pre-specified randomization ratios for the control and high-performing groups to meet clinical trial objectives. We show the validity of the conventional unweighted test in RABR with a controlled type I error rate based on the weighted combination test for sample size adaptive design invoking no large sample approximation. The advantages of the proposed RABR in terms of robustly reaching target final sample size to meet regulatory requirements and increasing statistical power as compared with the popular Doubly Adaptive Biased Coin Design (DBCD) are demonstrated by statistical simulations and a practical clinical trial design example.
翻译:适应性随机化(RAR)从方法、道德和务实的角度,从研究对象更有可能随机化到根据积累的数据更好地表现治疗群体的角度,具有适应性随机化的适应性随机化(RAR)具有吸引力,然而,在确认性药物临床试验中,运用多种活跃武器的应用有限,这主要是由于其复杂性,而且缺乏对不同治疗群体随机化比率的控制。为解决上述问题,我们提议采用反应性适应性区块随机化(RABR)设计,允许对控制和高性能群体任意指定随机化比率以实现临床试验目标。我们通过统计模拟和实用临床试验设计实例,展示了在RABR常规非加权测试的有效性,根据抽样规模适应性设计加权组合测试得出的受控型I错误率。拟议RABR的优势是,能够强有力地达到最终目标样本规模,以满足监管要求,并且与流行的Dubbly适应性Biased Coin设计(DBCD)相比,增加统计能力。