Department of Statistics, Florida State University, Tallahassee, FL, USA.
Department of Population Medicine, College of Medicine, Qatar University, Doha, Qatar.
J Gen Intern Med. 2022 Feb;37(2):308-317. doi: 10.1007/s11606-021-07098-5. Epub 2021 Sep 10.
Meta-analysis is increasingly used to synthesize proportions (e.g., disease prevalence). It can be implemented with widely used two-step methods or one-step methods, such as generalized linear mixed models (GLMMs). Existing simulation studies have shown that GLMMs outperform the two-step methods in some settings. It is, however, unclear whether these simulation settings are common in the real world. We aim to compare the real-world performance of various meta-analysis methods for synthesizing proportions.
We extracted datasets of proportions from the Cochrane Library and applied 12 two-step and one-step methods to each dataset. We used Spearman's ρ and the Bland-Altman plot to assess their results' correlation and agreement. The GLMM with the logit link was chosen as the reference method. We calculated the absolute difference and fold change (ratio of estimates) of the overall proportion estimates produced by each method vs. the reference method.
We obtained a total of 43,644 datasets. The various methods generally had high correlations (ρ > 0.9) and agreements. GLMMs had computational issues more frequently than the two-step methods. However, the two-step methods generally produced large absolute differences from the GLMM with the logit link for small total sample sizes (< 50) and crude event rates within 10-20% and 90-95%, and large fold changes for small total event counts (< 10) and low crude event rates (< 20%).
Although different methods produced similar overall proportion estimates in most datasets, one-step methods should be considered in the presence of small total event counts or sample sizes and very low or high event rates.
荟萃分析越来越多地用于合成比例(例如疾病流行率)。它可以使用广泛使用的两步法或一步法(例如广义线性混合模型(GLMM))来实现。现有模拟研究表明,在某些情况下,GLMM 优于两步法。然而,尚不清楚这些模拟设置在现实世界中是否常见。我们旨在比较各种荟萃分析方法在合成比例方面的实际表现。
我们从 Cochrane 图书馆中提取了比例数据集,并将 12 种两步法和一步法应用于每个数据集。我们使用斯皮尔曼 ρ和 Bland-Altman 图来评估它们的结果相关性和一致性。选择具有对数链接的 GLMM 作为参考方法。我们计算了每种方法与参考方法相比产生的总体比例估计值的绝对差异和折叠变化(估计值的比值)。
我们共获得了 43644 个数据集。各种方法通常具有较高的相关性(ρ>0.9)和一致性。GLMM 比两步法更容易出现计算问题。然而,对于总样本量较小(<50)和粗事件率在 10-20%和 90-95%之间以及总事件计数较小(<10)和低粗事件率(<20%)的情况,两步法通常会产生与具有对数链接的 GLMM 较大的绝对差异和较大的折叠变化。
尽管不同的方法在大多数数据集上产生了相似的总体比例估计值,但在总事件计数或样本量较小以及事件率非常低或高的情况下,应考虑使用一步法。