Tu Yu-Kang, Wu Yun-Chun
Department of Public Health and Institute of Epidemiology and Preventive Medicine, College of Public Health, National Taiwan University, Taipei, Taiwan.
BMC Med Res Methodol. 2017 Jul 14;17(1):104. doi: 10.1186/s12874-017-0390-9.
Network meta-analysis overcomes the limitations of traditional pair-wise meta-analysis by incorporating all available evidence into a general statistical framework for simultaneous comparisons of several treatments. Currently, network meta-analyses are undertaken either within the Bayesian hierarchical linear models or frequentist generalized linear mixed models. Structural equation modeling (SEM) is a statistical method originally developed for modeling causal relations among observed and latent variables. As random effect is explicitly modeled as a latent variable in SEM, it is very flexible for analysts to specify complex random effect structure and to make linear and nonlinear constraints on parameters. The aim of this article is to show how to undertake a network meta-analysis within the statistical framework of SEM.
We used an example dataset to demonstrate the standard fixed and random effect network meta-analysis models can be easily implemented in SEM. It contains results of 26 studies that directly compared three treatment groups A, B and C for prevention of first bleeding in patients with liver cirrhosis. We also showed that a new approach to network meta-analysis based on the technique of unrestricted weighted least squares (UWLS) method can also be undertaken using SEM.
For both the fixed and random effect network meta-analysis, SEM yielded similar coefficients and confidence intervals to those reported in the previous literature. The point estimates of two UWLS models were identical to those in the fixed effect model but the confidence intervals were greater. This is consistent with results from the traditional pairwise meta-analyses. Comparing to UWLS model with common variance adjusted factor, UWLS model with unique variance adjusted factor has greater confidence intervals when the heterogeneity was larger in the pairwise comparison. The UWLS model with unique variance adjusted factor reflects the difference in heterogeneity within each comparison.
SEM provides a very flexible framework for univariate and multivariate meta-analysis, and its potential as a powerful tool for advanced meta-analysis is still to be explored.
网络荟萃分析通过将所有可用证据纳入一个用于同时比较多种治疗方法的通用统计框架,克服了传统成对荟萃分析的局限性。目前,网络荟萃分析是在贝叶斯分层线性模型或频率主义广义线性混合模型中进行的。结构方程模型(SEM)是一种最初为对观测变量和潜在变量之间的因果关系进行建模而开发的统计方法。由于在SEM中随机效应被明确建模为一个潜在变量,分析人员在指定复杂的随机效应结构以及对参数进行线性和非线性约束方面非常灵活。本文的目的是展示如何在SEM的统计框架内进行网络荟萃分析。
我们使用一个示例数据集来证明标准的固定效应和随机效应网络荟萃分析模型可以很容易地在SEM中实现。它包含26项研究的结果,这些研究直接比较了三个治疗组A、B和C预防肝硬化患者首次出血的效果。我们还表明,基于无限制加权最小二乘法(UWLS)技术的一种新的网络荟萃分析方法也可以使用SEM进行。
对于固定效应和随机效应网络荟萃分析,SEM得出的系数和置信区间与先前文献报道的相似。两个UWLS模型的点估计与固定效应模型中的相同,但置信区间更大。这与传统成对荟萃分析的结果一致。与具有共同方差调整因子的UWLS模型相比,当成对比较中的异质性较大时,具有独特方差调整因子的UWLS模型的置信区间更大。具有独特方差调整因子的UWLS模型反映了每次比较中异质性的差异。
SEM为单变量和多变量荟萃分析提供了一个非常灵活的框架,其作为高级荟萃分析强大工具的潜力仍有待探索。