Bradburn Michael J, Deeks Jonathan J, Berlin Jesse A, Russell Localio A
Centre for Statistics in Medicine, Wolfson College, Linton Road, Oxford OX2 6UD, UK.
Stat Med. 2007 Jan 15;26(1):53-77. doi: 10.1002/sim.2528.
For rare outcomes, meta-analysis of randomized trials may be the only way to obtain reliable evidence of the effects of healthcare interventions. However, many methods of meta-analysis are based on large sample approximations, and may be unsuitable when events are rare. Through simulation, we evaluated the performance of 12 methods for pooling rare events, considering estimability, bias, coverage and statistical power. Simulations were based on data sets from three case studies with between five and 19 trials, using baseline event rates between 0.1 and 10 per cent and risk ratios of 1, 0.75, 0.5 and 0.2. We found that most of the commonly used meta-analytical methods were biased when data were sparse. The bias was greatest in inverse variance and DerSimonian and Laird odds ratio and risk difference methods, and the Mantel-Haenszel (MH) odds ratio method using a 0.5 zero-cell correction. Risk difference meta-analytical methods tended to show conservative confidence interval coverage and low statistical power at low event rates. At event rates below 1 per cent the Peto one-step odds ratio method was the least biased and most powerful method, and provided the best confidence interval coverage, provided there was no substantial imbalance between treatment and control group sizes within trials, and treatment effects were not exceptionally large. In other circumstances the MH OR without zero-cell corrections, logistic regression and the exact method performed similarly to each other, and were less biased than the Peto method.
对于罕见结局,随机试验的荟萃分析可能是获得医疗保健干预措施效果可靠证据的唯一途径。然而,许多荟萃分析方法基于大样本近似,在事件罕见时可能并不适用。通过模拟,我们评估了12种汇总罕见事件方法的性能,考虑了可估计性、偏差、覆盖率和统计功效。模拟基于来自三个案例研究的数据集,试验数量在5至19个之间,基线事件发生率在0.1%至10%之间,风险比为1、0.75、0.5和0.2。我们发现,当数据稀疏时,大多数常用的荟萃分析方法存在偏差。在逆方差法、DerSimonian和Laird比值比及风险差方法以及使用0.5零单元格校正的Mantel-Haenszel(MH)比值比方法中,偏差最大。风险差荟萃分析方法在低事件发生率时往往显示出保守的置信区间覆盖率和低统计功效。在事件发生率低于1%时,Peto一步比值比方法是偏差最小且功效最强的方法,并且提供了最佳的置信区间覆盖率,前提是试验中治疗组和对照组规模之间没有实质性失衡,且治疗效果不是特别大。在其他情况下,未进行零单元格校正的MH比值比、逻辑回归和精确方法的表现彼此相似,且偏差小于Peto方法。