Morgan Katy E, Forbes Andrew B, Keogh Ruth H, Jairath Vipul, Kahan Brennan C
Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, U.K.
School of Public Health and Preventive Medicine, Monash University, Melbourne, Australia.
Stat Med. 2017 Jan 30;36(2):318-333. doi: 10.1002/sim.7137. Epub 2016 Sep 28.
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.
在整群随机交叉(CRXO)试验中,各个整群会在一段时间内按照随机顺序接受多种治疗。在这类试验中,同一整群内的患者之间通常存在相关性。此外,在一个整群内,同一时期的患者可能彼此之间比与其他时期的患者更为相似。我们证明,在分析中考虑这些相关性对于获得正确的I型错误率是必要的。然后,我们使用模拟来比较分析两期CRXO设计的二元结局的不同方法。我们的模拟表明,对于群内时期不考虑随机效应的分层模型,由于没有考虑任何额外的时期内相关性,在许多情况下表现不佳,I型错误率大幅膨胀。在存在额外时期内相关性的情况下,仅对整群和群内时期考虑随机效应的分层模型,只有在整群数量较多时才有正确的I型错误率;整群数量较少时,错误率会膨胀。我们还发现,广义估计方程在任何考虑的情况下都不能给出正确的错误率。总体而言,未加权的整群水平汇总回归表现最佳,在所有情况下错误率都接近5%,尽管在存在额外时期内相关性时,尤其是整群数量较少时,其检验效能会降低。我们模拟研究的结果表明,在CRXO试验中对两个层次的整群进行建模很重要,并且任何额外的时期内相关性都应予以考虑。版权所有© 2016约翰威立父子有限公司。