Lin Lifeng, Chu Haitao, Hodges James S
From the Division of Biostatistics, School of Public Health, University of Minnesota, Minneapolis, MN.
Epidemiology. 2016 Jul;27(4):562-9. doi: 10.1097/EDE.0000000000000482.
Network meta-analysis of randomized controlled trials is increasingly used to combine both direct evidence comparing treatments within trials and indirect evidence comparing treatments across different trials. When the outcome is binary, the commonly used contrast-based network meta-analysis methods focus on relative treatment effects such as odds ratios comparing two treatments. As shown in a recent report, when using contrast-based network meta-analysis, the impact of excluding a treatment in the network can be substantial, suggesting a methodological limitation. In addition, relative treatment effects are sometimes not sufficient for patients to make decisions. For example, it can be challenging for patients to trade off efficacy and safety for two drugs if they only know the relative effects, not the absolute effects. A recently proposed arm-based network meta-analysis, based on a missing-data framework, provides an alternative approach. It focuses on estimating population-averaged treatment-specific absolute effects. This article examines the influence of treatment exclusion empirically using 14 published network meta-analyses, for both arm- and contrast-based approaches. The difference between these two approaches is substantial, and it is almost entirely due to single-arm trials. When a treatment is removed from a contrast-based network meta-analysis, it is necessary to exclude other treatments in two-arm studies that investigated the excluded treatment; such exclusions are not necessary in arm-based network meta-analysis, leading to substantial gain in performance.
随机对照试验的网络荟萃分析越来越多地用于整合试验内比较治疗方法的直接证据和不同试验间比较治疗方法的间接证据。当结果为二元变量时,常用的基于对比的网络荟萃分析方法侧重于相对治疗效果,如比较两种治疗方法的比值比。如最近一份报告所示,使用基于对比的网络荟萃分析时,在网络中排除一种治疗方法的影响可能很大,这表明存在方法学上的局限性。此外,相对治疗效果有时不足以让患者做出决策。例如,如果患者只知道两种药物的相对效果而不知道绝对效果,那么他们在权衡两种药物的疗效和安全性时可能会面临挑战。最近提出的基于臂的网络荟萃分析基于缺失数据框架,提供了一种替代方法。它侧重于估计总体平均治疗特异性绝对效果。本文使用14篇已发表的网络荟萃分析,对基于臂和基于对比的方法进行实证研究,考察治疗方法排除的影响。这两种方法之间的差异很大,几乎完全是由于单臂试验造成的。当从基于对比的网络荟萃分析中移除一种治疗方法时,有必要在研究了该被排除治疗方法的双臂研究中排除其他治疗方法;而在基于臂的网络荟萃分析中则不需要这样的排除,从而在性能上有显著提升。