Centre for Reviews and Dissemination, University of York, YO10 5DD, UK.
Bristol Medical School, University of Bristol, Canynge Hall, 39 Whatley Road, BS8 2PS, UK.
Res Synth Methods. 2020 Jul;11(4):496-506. doi: 10.1002/jrsm.1380. Epub 2019 Nov 10.
When there are structural relationships between outcomes reported in different trials, separate analyses of each outcome do not provide a single coherent analysis, which is required for decision-making. For example, trials of intrapartum anti-bacterial prophylaxis (IAP) to prevent early onset group B streptococcal (EOGBS) disease can report three treatment effects: the effect on bacterial colonisation of the newborn, the effect on EOGBS, and the effect on EOGBS conditional on newborn colonisation. These outcomes are conditionally related, or nested, in a multi-state model. This paper shows how to exploit these structural relationships, providing a single coherent synthesis of all the available data, while checking to ensure that different sources of evidence are consistent.
Overall, the use of IAP reduces the risk of EOGBS (RR: 0.03; 95% Credible Interval (CrI): 0.002-0.13). Most of the treatment effect is due to the prevention of colonisation in newborns of colonised mothers (RR: 0.08, 95% CrI: 0.04-0.14). Node-splitting demonstrated that the treatment effect calculated using only direct evidence was consistent with that predicted from the remaining evidence (p = 0.15). The findings accorded with previously published separate meta-analyses of the different outcomes, once these are re-analysed correctly accounting for zero cells.
Multiple outcomes should be synthesised together where possible, taking account of their structural relationships. This generates an internally coherent analysis, suitable for decision making, in which estimates of each of the treatment effects are based on all available evidence (direct and indirect). Separate meta-analyses of each outcome have none of these properties.
当不同试验报告的结局之间存在结构关系时,对每个结局进行单独分析并不能提供单一的连贯分析,而这是决策所必需的。例如,针对产时抗菌预防(IAP)以预防早发型 B 组链球菌(EOGBS)病的试验可以报告三种治疗效果:对新生儿细菌定植的影响、对 EOGBS 的影响,以及对新生儿定植条件下 EOGBS 的影响。这些结局在多状态模型中具有条件关系,即嵌套关系。本文展示了如何利用这些结构关系,对所有可用数据进行单一的连贯综合分析,同时检查以确保不同来源的证据是一致的。
总体而言,使用 IAP 可降低 EOGBS 的风险(RR:0.03;95%可信区间(CrI):0.002-0.13)。大部分治疗效果归因于预防定植母亲的新生儿定植(RR:0.08,95% CrI:0.04-0.14)。节点分割表明,仅使用直接证据计算的治疗效果与从其余证据预测的治疗效果一致(p=0.15)。这些发现与之前发表的关于不同结局的单独荟萃分析一致,一旦正确地重新分析了这些结局,考虑到零细胞的情况。
应尽可能一起综合多个结局,同时考虑它们的结构关系。这会产生一个内部一致的分析,适合决策,其中每个治疗效果的估计都基于所有可用的证据(直接和间接)。每个结局的单独荟萃分析都不具有这些特性。