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终点延迟对多臂多阶段试验效率的影响

Impact of Endpoint Delay on the Efficiency of Multi Arm Multi Stage Trials.

作者信息

Mukherjee Aritra, Wason James M S

机构信息

Population Health Sciences Institute, Newcastle University, Newcastle Upon Tyne, UK.

出版信息

Stat Med. 2025 Sep;44(20-22):e70245. doi: 10.1002/sim.70245.

Abstract

Multi-arm multi-stage (MAMS) is an efficient class of trial designs that helps to assess multiple treatment strategies at the same time using an adaptive design. These designs can substantially reduce the average number of samples required compared to an equivalent single stage multi-arm trial. However, if patient recruitment is continued while we await treatment outcomes, a long-term primary outcome leads to a number of 'pipeline' patients getting recruited in the trial, who do not benefit from the early termination of a futile arm. This study focuses on quantifying the efficiency loss a MAMS design undergoes, in terms of the expected sample size (ESS), because of outcome delay. We first estimate the number of 'pipeline' patients (recruited during the interim analysis (IA) while awaiting outcome data) analytically through different recruitment models, given the total recruitment time. We then compute the ESS accounting for delay and assess the Efficiency Loss (EL). The results indicate that more than 50% of the expected efficiency gain is typically lost due to delay when the delay is more than of the total recruitment length. Although the number of stages have little influence on the efficiency loss, the timing of the IA can impact the efficiency of MAMS designs with delayed outcomes; in particular, conducting the IAs earlier than an equally-spaced design can be harmful for the design. Finally, we conclude that, in order to gain maximum benefit of MAMS in terms of a reduced sample size in multi-arm trials, the outcome delay should be less than a third of the total recruitment length.

摘要

多臂多阶段(MAMS)是一类高效的试验设计,有助于使用适应性设计同时评估多种治疗策略。与等效的单阶段多臂试验相比,这些设计可以大幅减少所需的平均样本数量。然而,如果在等待治疗结果的同时继续招募患者,长期的主要结局会导致许多“流水线”患者被纳入试验,而这些患者无法从无效臂的提前终止中获益。本研究聚焦于量化由于结局延迟,MAMS设计在预期样本量(ESS)方面所经历的效率损失。我们首先通过不同的招募模型,在给定总招募时间的情况下,分析估计(在中期分析(IA)期间等待结局数据时招募的)“流水线”患者数量。然后,我们计算考虑延迟因素后的ESS并评估效率损失(EL)。结果表明,当延迟超过总招募时长的 时,通常会因延迟损失超过50%的预期效率增益。尽管阶段数量对效率损失影响不大,但IA的时间安排会影响结局延迟的MAMS设计的效率;特别是,比等距设计更早进行IA可能对该设计有害。最后,我们得出结论,为了在多臂试验中通过减少样本量最大程度地受益于MAMS,结局延迟应小于总招募时长的三分之一。

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