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Choosing appropriate analysis methods for cluster randomised cross‐over trials with a binary outcome

机译:选择适当的分析方法,用于与二元结果进行随机交叉试验

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In cluster randomised cross‐over (CRXO) trials, clusters receive multiple treatments in a randomised sequence over time. In such trials, there is usual correlation between patients in the same cluster. In addition, within a cluster, patients in the same period may be more similar to each other than to patients in other periods. We demonstrate that it is necessary to account for these correlations in the analysis to obtain correct Type I error rates. We then use simulation to compare different methods of analysing a binary outcome from a two‐period CRXO design. Our simulations demonstrated that hierarchical models without random effects for period‐within‐cluster, which do not account for any extra within‐period correlation, performed poorly with greatly inflated Type I errors in many scenarios. In scenarios where extra within‐period correlation was present, a hierarchical model with random effects for cluster and period‐within‐cluster only had correct Type I errors when there were large numbers of clusters; with small numbers of clusters, the error rate was inflated. We also found that generalised estimating equations did not give correct error rates in any scenarios considered. An unweighted cluster‐level summary regression performed best overall, maintaining an error rate close to 5% for all scenarios, although it lost power when extra within‐period correlation was present, especially for small numbers of clusters. Results from our simulation study show that it is important to model both levels of clustering in CRXO trials, and that any extra within‐period correlation should be accounted for. Copyright ? 2016 John Wiley & Sons, Ltd.
机译:在集群中随机交叉(CRXO)试验,群集随着时间的推移在随机序列中接收多种处理。在这种试验中,同一群体之间存在常规相关性。此外,在群体中,同期患者可能与其他时期的患者彼此相似。我们证明有必要考虑分析中的这些相关性,以获得正确的I型错误率。然后,我们使用模拟来比较分析两周期CRXO设计的不同方法。我们的模拟展示了没有随机效应的分层模型,不考虑任何额外的内部相关关系,在许多情况下大大膨胀了I型错误。在存在额外的内部相关性的情况下,当有大量集群时,群集群集和群集内部群集随机效果的分层模型只有正确的I型错误;具有少量集群,错误率充气。我们还发现广义估计方程在考虑的任何方案中没有给出正确的错误率。虽然存在额外的内部相关性,但在存在额外的内部相关性时,但保持了最优​​异的群集级别回归,而是保持最佳,保持接近5%的错误率,尽管当存在额外的内部相关性时,但对于少量集群而言,它损失了功率。我们的仿真研究结果表明,在CRXO试验中模拟聚类级别的级别,并且应占据任何额外内部相关性的重要性。版权? 2016年John Wiley& SONS,LTD.

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