Centre for Prognosis Research, School of Medicine, Keele University, Staffordshire, ST5 5BG, UK.
Department of Biostatistics and Center for Evidence Synthesis in Health, Brown University School of Public Health, Providence, RI, 02912, USA.
Syst Rev. 2022 Jul 26;11(1):149. doi: 10.1186/s13643-022-01999-0.
Multivariate meta-analysis allows the joint synthesis of multiple outcomes accounting for their correlation. This enables borrowing of strength (BoS) across outcomes, which may lead to greater efficiency and even different conclusions compared to separate univariate meta-analyses. However, multivariate meta-analysis is complex to apply, so guidance is needed to flag (in advance of analysis) when the approach is most useful.
We use 43 Cochrane intervention reviews to empirically investigate the characteristics of meta-analysis datasets that are associated with a larger BoS statistic (from 0 to 100%) when applying a bivariate meta-analysis of binary outcomes.
Four characteristics were identified as strongly associated with BoS: the total number of studies, the number of studies with the outcome of interest, the percentage of studies missing the outcome of interest, and the largest absolute within-study correlation. Using these characteristics, we then develop a model for predicting BoS in a new dataset, which is shown to have good performance (an adjusted R of 50%). Applied examples are used to illustrate the use of the BoS prediction model.
Cochrane reviewers mainly use univariate meta-analysis methods, but the identified characteristics associated with BoS and our subsequent prediction model for BoS help to flag when a multivariate meta-analysis may also be beneficial in Cochrane reviews with multiple binary outcomes. Extension to non-Cochrane reviews and other outcome types is still required.
多变量荟萃分析允许对多个结局进行联合综合分析,同时考虑到它们之间的相关性。这使得可以在不同结局之间“借用力量”(BoS),与单独的单变量荟萃分析相比,这可能会提高效率,甚至得出不同的结论。然而,多变量荟萃分析的应用较为复杂,因此需要指导,以便在分析前标记出最有用的方法。
我们使用 43 项 Cochrane 干预评价,从经验上研究了与二元结局的双变量荟萃分析应用中 BoS 统计量(0%到 100%)较大相关的荟萃分析数据集的特征。
确定了四个与 BoS 强烈相关的特征:研究总数、有感兴趣结局的研究数量、缺失感兴趣结局的研究比例和最大绝对组内相关。使用这些特征,我们随后开发了一个新数据集的 BoS 预测模型,该模型表现良好(调整 R2 为 50%)。应用示例用于说明 BoS 预测模型的使用。
Cochrane 评论员主要使用单变量荟萃分析方法,但确定的与 BoS 相关的特征以及我们随后的 BoS 预测模型有助于标记当多变量荟萃分析可能对具有多个二元结局的 Cochrane 评价也有益时。仍需要扩展到非 Cochrane 评价和其他结局类型。