Su X Y, Li Wan Po A
Department of Pharmaceutical Sciences, University of Nottingham, United Kingdom.
Ann Pharmacother. 1996 May;30(5):460-5. doi: 10.1177/106002809603000504.
To compare an empirical Bayesian, a fully Bayesian, and a classical fixed-effect (Peto) method for pooling event rates from separate epidemiologic studies or clinical trials.
Four data sets used in meta-analyses by previous authors were evaluated. The first data set concerned death rates observed in clinical trials of beta-blockers, the second to lung cancer and smoking in 14 case-control studies, the third to drowsiness induced by the antihistamine compound chlorpheniramine, and the fourth to the use of intravenous magnesium in patients with suspected myocardial infarction. Randomly chosen data points were made more extreme to test the methods further.
Pooled estimates of effect expressed as odds ratios and their associated 95% confidence intervals.
All three methods gave comparable results with respect to the 95% confidence interval, although the Bayesian methods gave generally wider interval estimates. However, the point estimates for the individual studies were substantially different, particularly for small studies.
For the data sets considered, Bayesian methods, which are computer intensive but intuitively appealing, provided results that were consistent with the classic fixed-effect Peto method. Introduction of the more extreme data points did not alter this conclusion.
比较经验贝叶斯法、完全贝叶斯法和经典固定效应(佩托)法,以汇总来自不同流行病学研究或临床试验的事件发生率。
对先前作者在荟萃分析中使用的四个数据集进行评估。第一个数据集涉及β受体阻滞剂临床试验中观察到的死亡率,第二个涉及14项病例对照研究中的肺癌与吸烟情况,第三个涉及抗组胺化合物氯苯那敏引起的嗜睡,第四个涉及疑似心肌梗死患者使用静脉注射镁的情况。随机选择的数据点被设得更为极端,以进一步检验这些方法。
以比值比及其相关的95%置信区间表示的效应合并估计值。
就95%置信区间而言,所有三种方法得出的结果相当,尽管贝叶斯方法得出的区间估计通常更宽。然而,各个研究的点估计值有很大差异,尤其是对于小型研究。
对于所考虑的数据集,贝叶斯方法虽然计算量大但直观上有吸引力,其结果与经典固定效应佩托法一致。引入更极端的数据点并未改变这一结论。