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具有少量聚类的适应性整群随机对照试验的性质:一项模拟研究。

Properties of adaptive, cluster-randomised controlled trials with few clusters: a simulation study.

作者信息

Nolan Erin, Dizon Joshua, Oldmeadow Christopher, Holliday Elizabeth, Hall Alix, Barker Daniel

机构信息

School of Medicine and Public Health, The University of Newcastle, Callaghan, NSW, Australia.

Hunter Medical Research Institute, New Lambton Heights, New South Wales, Australia.

出版信息

Implement Sci. 2025 Jul 1;20(1):31. doi: 10.1186/s13012-025-01443-6.

Abstract

Trials optimising implementation strategies are complex, assess multicomponent strategies, and cluster randomise. We define optimisation as identifying the best combination of components for multi-component implementation strategies. Multi-arm, fixed, cluster randomised control trials (cRCTs) can assess multiple implementation components but suffer from low power due to challenges of recruitment. Adaptive designs offer increased efficiency, when compared to "fixed trial" approaches. A simulation study was conducted to assess whether adaptive designs are feasible (acceptable operating characteristics and adaptive interim decisions) for implementation cRCTs with few clusters. A four-arm cRCT was simulated under varying trial properties. The trials were simulated using fixed design and adaptive design parameters (number of interim analyses, timing of interim analysis, actions at interim e.g. allowing for early stopping for futility, arm dropping) and modelled using Bayesian hierarchical models. The power and type 1 error were compared between the fixed and adaptive designs, and the number of correct interim decisions under the adaptive design were examined. When the intra-class correlation (ICC) was high, the proportion of trials that incorrectly dropped the most effective arm increased. There were small power gains for adaptive designs, without increasing type 1 error. Power gains attenuated when ICC was high and sample size was low. Type 1 error was lower comparable between adaptive and non-adaptive designs. Adaptive designs are feasible for cRCTs with few clusters. They are not as feasible when the ICC is high due to increased risk of incorrect adaptive interim decisions.

摘要

优化实施策略的试验很复杂,需评估多成分策略并进行整群随机分组。我们将优化定义为确定多成分实施策略中各成分的最佳组合。多组、固定、整群随机对照试验(cRCT)可以评估多个实施成分,但由于招募方面的挑战,效能较低。与“固定试验”方法相比,适应性设计能提高效率。我们进行了一项模拟研究,以评估适应性设计对于少量整群的实施cRCT是否可行(可接受的操作特征和适应性中期决策)。在不同的试验特性下模拟了一项四组cRCT。使用固定设计和适应性设计参数(中期分析次数、中期分析时间、中期的操作,例如允许因无效而提前终止、撤组)对试验进行模拟,并使用贝叶斯分层模型进行建模。比较了固定设计和适应性设计之间的效能和I类错误,并检查了适应性设计下正确的中期决策数量。当组内相关系数(ICC)较高时,错误撤掉最有效组的试验比例会增加。适应性设计有小幅的效能提升,且不会增加I类错误。当ICC较高且样本量较低时,效能提升会减弱。适应性设计和非适应性设计之间的I类错误相当,且前者更低。适应性设计对于少量整群的cRCT是可行的。当ICC较高时,由于适应性中期决策错误的风险增加,其可行性会降低。

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