Department of Anesthesia, McMaster University, Hamilton, Ontario, Canada
Department of Health Research Methods, Evidence, and Impact, McMaster University, Hamilton, Ontario, Canada.
BMJ Evid Based Med. 2023 Jun;28(3):204-209. doi: 10.1136/bmjebm-2022-111928. Epub 2022 Jun 27.
Network meta-analysis (NMA) is an increasingly popular statistical method of synthesising evidence to assess the comparative benefits and harms of multiple treatments in a single analysis. Several automated software packages facilitate conducting NMA using either of two alternative approaches, Bayesian or frequentist frameworks. Researchers must choose a framework for conducting NMA (Bayesian or frequentist) and select appropriate model(s), and those conducting NMA need to understand the assumptions and limitations of different approaches. Bayesian models are more frequently used and can be more flexible but require checking additional assumptions and greater statistical expertise that are often ignored. The present paper describes the important theoretical aspects of Bayesian and frequentist models for NMA and the applications and considerations of contrast-synthesis and arm-synthesis NMAs. In addition, we present evidence from a limited number of simulation and empirical studies that compared different frequentist and Bayesian models and provide an overview of available automated software packages to perform NMA. We will conclude that when analysts choose appropriate models, there are seldom important differences in the results of Bayesian and frequentist approaches and that network meta-analysts should therefore focus on model features rather than the statistical framework.
网络荟萃分析(NMA)是一种越来越受欢迎的统计方法,用于综合证据,以评估单一分析中多种治疗方法的相对益处和危害。有几个自动化软件包可以方便地使用贝叶斯或频率主义框架这两种替代方法之一来进行 NMA。研究人员必须选择进行 NMA(贝叶斯或频率主义)的框架,并选择适当的模型,进行 NMA 的人员需要了解不同方法的假设和局限性。贝叶斯模型使用得更频繁,并且可以更灵活,但需要检查更多的假设和更多的统计专业知识,而这些通常被忽略。本文描述了 NMA 的贝叶斯和频率主义模型的重要理论方面,以及对比合成和臂合成 NMA 的应用和考虑因素。此外,我们还提供了来自有限数量的模拟和实证研究的证据,这些研究比较了不同的频率主义和贝叶斯模型,并概述了可用的自动软件包来执行 NMA。我们的结论是,当分析人员选择适当的模型时,贝叶斯和频率主义方法的结果很少有重要差异,因此网络荟萃分析人员应该关注模型特征而不是统计框架。