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Changing cluster composition in cluster randomised controlled trials: design and analysis considerations

机译:在组群随机对照试验中改变组群组成:设计和分析注意事项

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Background There are many methodological challenges in the conduct and analysis of cluster randomised controlled trials, but one that has received little attention is that of post-randomisation changes to cluster composition. To illustrate this, we focus on the issue of cluster merging, considering the impact on the design, analysis and interpretation of trial outcomes. Methods We explored the effects of merging clusters on study power using standard methods of power calculation. We assessed the potential impacts on study findings of both homogeneous cluster merges (involving clusters randomised to the same arm of a trial) and heterogeneous merges (involving clusters randomised to different arms of a trial) by simulation. To determine the impact on bias and precision of treatment effect estimates, we applied standard methods of analysis to different populations under analysis. Results Cluster merging produced a systematic reduction in study power. This effect depended on the number of merges and was most pronounced when variability in cluster size was at its greatest. Simulations demonstrate that the impact on analysis was minimal when cluster merges were homogeneous, with impact on study power being balanced by a change in observed intracluster correlation coefficient (ICC). We found a decrease in study power when cluster merges were heterogeneous, and the estimate of treatment effect was attenuated. Conclusions Examples of cluster merges found in previously published reports of cluster randomised trials were typically homogeneous rather than heterogeneous. Simulations demonstrated that trial findings in such cases would be unbiased. However, simulations also showed that any heterogeneous cluster merges would introduce bias that would be hard to quantify, as well as having negative impacts on the precision of estimates obtained. Further methodological development is warranted to better determine how to analyse such trials appropriately. Interim recommendations include avoidance of cluster merges where possible, discontinuation of clusters following heterogeneous merges, allowance for potential loss of clusters and additional variability in cluster size in the original sample size calculation, and use of appropriate ICC estimates that reflect cluster size.
机译:背景技术在进行聚类随机对照试验的过程和分析中,存在许多方法上的挑战,但很少有人关注聚类组成的随机化后变化。为了说明这一点,我们将重点放在群集合并问题上,考虑对试验结果的设计,分析和解释的影响。方法我们使用功效计算的标准方法探索了合并集群对研究功效的影响。我们通过模拟评估了同质聚类合并(涉及的聚类随机分配到试验的同一组)和异构聚类(涉及聚类被随机分配到试验的不同分支)的研究结果的潜在影响。为了确定对偏倚和治疗效果估计精度的影响,我们将标准分析方法应用于所分析的不同人群。结果集群合并导致研究能力的系统降低。这种影响取决于合并的数量,并且在簇大小的可变性最大时最为明显。仿真表明,当集群合并是同质的时,对分析的影响最小,而对研究能力的影响则通过观察到的集群内相关系数(ICC)的变化得到平衡。我们发现当簇合并异质时研究能力降低,并且治疗效果的估计减弱。结论在先前发表的集群随机试验报告中发现的集群合并示例通常是同质的,而不是异质的。模拟表明,在这种情况下的试验结果将是公正的。但是,仿真还表明,任何异构聚类合并都会引入难以量化的偏差,并对获得的估计精度产生负面影响。有必要进一步开发方法,以更好地确定如何适当地分析此类试验。临时建议包括:在可能的情况下避免聚类合并;在异类合并之后终止聚类;考虑到聚类的潜在损失以及原始样本大小计算中聚类大小的其他可变性;以及使用反映聚类大小的适当ICC估计值。

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