From the Center for Genomic Medicine, Massachusetts General Hospital, Boston, Massachusetts.
Department of Psychiatry, Harvard Medical School, Boston, Massachusetts.
Epidemiology. 2021 Jan;32(1):120-130. doi: 10.1097/EDE.0000000000001269.
Causal mediation analysis addresses mechanistic questions by decomposing and quantifying effects operating through different pathways. Because most individual studies are underpowered to detect mediating effects, we outlined a parametric approach to meta-analyzing causal mediation and interaction analyses with multiple mediators, compared it with a bootstrap-based alternative, and discussed its limitations.
We employed fixed- and random-effects multivariate meta-analyses to integrate evidence on treatment-mediators and mediators-outcome associations across trials. We estimated path-specific effects as functions of meta-analyzed regression coefficients; we obtained standard errors using the delta method. We evaluated the performance of this approach in simulations and applied it to assess the mediating roles of positive symptoms of schizophrenia and weight gain in the treatment effect of paliperidone ER on negative symptoms across four efficacy trials.
Both simulations and the application showed that the meta-analytic approaches increased statistical power. In the application, we observed substantial mediating effects of positive symptoms (proportions mediated from fixed-effects meta-analysis: (Equation is included in full-text article.)). Weight gain may have beneficial mediating effects; however, such benefit may disappear at high doses when metabolic side effects were excessive.
Meta-analyzing causal mediation analysis combines evidence from multiple sources and improves power. Targeting positive symptoms may be an effective way to reduce negative symptoms that are challenging to treat. Future work should focus on extending the existing methods to allow for more flexible modeling of mediation.
因果中介分析通过分解和量化通过不同途径运作的效应来解决机制问题。由于大多数单独的研究都没有足够的能力来检测中介效应,我们概述了一种参数方法来对具有多个中介的因果中介和交互分析进行荟萃分析,并与基于引导的替代方法进行了比较,并讨论了其局限性。
我们采用固定效应和随机效应多变量荟萃分析来整合试验间治疗中介和中介结局关联的证据。我们将路径特异性效应估计为荟萃分析回归系数的函数;我们使用 delta 方法获得标准误差。我们在模拟中评估了这种方法的性能,并应用于评估精神分裂症阳性症状和体重增加在长效帕利哌酮治疗对 4 项疗效试验中阴性症状的治疗效果中的中介作用。
模拟和应用都表明,荟萃分析方法提高了统计功效。在应用中,我们观察到阳性症状的中介作用很大(固定效应荟萃分析的中介比例:(方程式包含在全文中))。体重增加可能具有有益的中介作用;然而,当代谢副作用过多时,高剂量可能会消失。
荟萃分析因果中介分析结合了来自多个来源的证据,提高了功效。针对阳性症状可能是减少难以治疗的阴性症状的有效方法。未来的工作应侧重于扩展现有方法,以允许更灵活地对中介进行建模。