Centre for Quantitative Medicine, Duke-NUS Medical School, Singapore, Singapore.
Faculty of Epidemiology and Population Health, London School of Hygiene & Tropical Medicine, London, UK.
Stat Med. 2022 Jan 15;41(1):128-145. doi: 10.1002/sim.9226. Epub 2021 Oct 15.
We consider five asymptotically unbiased estimators of intervention effects on event rates in non-matched and matched-pair cluster randomized trials, including ratio of mean counts , ratio of mean cluster-level event rates , ratio of event rates , double ratio of counts , and double ratio of event rates . In the absence of an indirect effect, they all estimate the direct effect of the intervention. Otherwise, , and estimate the total effect, which comprises the direct and indirect effects, whereas and estimate the direct effect only. We derive the conditions under which each estimator is more precise or powerful than its alternatives. To control bias in studies with a small number of clusters, we propose a set of approximately unbiased estimators. We evaluate their properties by simulation and apply the methods to a trial of seasonal malaria chemoprevention. The approximately unbiased estimators are practically unbiased and their confidence intervals usually have coverage probability close to the nominal level; the asymptotically unbiased estimators perform well when the number of clusters is approximately 32 or more per trial arm. Despite its simplicity, performs comparably with and in trials with a large but realistic number of clusters. When the variability of baseline event rate is large and there is no indirect effect, and tend to offer higher power than , and . We discuss the implications of these findings to the planning and analysis of cluster randomized trials.
我们考虑了五种在非匹配和配对群组随机试验中估计干预对事件率影响的渐近无偏估计量,包括均数比 、均数群组事件率比 、事件率比 、计数的双重比 和事件率的双重比 。在不存在间接效应的情况下,它们都估计了干预的直接效应。否则, 、 和 估计总效应,包括直接效应和间接效应,而 和 仅估计直接效应。我们推导出每个估计量在何种条件下比其替代方法更精确或更有效。为了控制在群组数量较少的研究中存在的偏差,我们提出了一组近似无偏估计量。我们通过模拟评估它们的性质,并将这些方法应用于季节性疟疾化学预防试验。近似无偏估计量在实际中是无偏的,其置信区间的覆盖概率通常接近名义水平;当每个试验臂的群组数量大约为 32 个或更多时,渐近无偏估计量表现良好。尽管 简单,但在具有大量但实际群组的试验中,它的性能与 和 相当。当基线事件率的变异性较大且不存在间接效应时, 和 往往比 、 和 提供更高的功效。我们讨论了这些发现对群组随机试验的规划和分析的意义。