School of Social and Community Medicine, University of Bristol, Bristol, UK (SD, AEA, NJW)
Department of Health Sciences, University of Leicester, Leicester, UK (AJS)
Med Decis Making. 2013 Jul;33(5):607-17. doi: 10.1177/0272989X12458724. Epub 2012 Oct 26.
We set out a generalized linear model framework for the synthesis of data from randomized controlled trials. A common model is described, taking the form of a linear regression for both fixed and random effects synthesis, which can be implemented with normal, binomial, Poisson, and multinomial data. The familiar logistic model for meta-analysis with binomial data is a generalized linear model with a logit link function, which is appropriate for probability outcomes. The same linear regression framework can be applied to continuous outcomes, rate models, competing risks, or ordered category outcomes by using other link functions, such as identity, log, complementary log-log, and probit link functions. The common core model for the linear predictor can be applied to pairwise meta-analysis, indirect comparisons, synthesis of multiarm trials, and mixed treatment comparisons, also known as network meta-analysis, without distinction. We take a Bayesian approach to estimation and provide WinBUGS program code for a Bayesian analysis using Markov chain Monte Carlo simulation. An advantage of this approach is that it is straightforward to extend to shared parameter models where different randomized controlled trials report outcomes in different formats but from a common underlying model. Use of the generalized linear model framework allows us to present a unified account of how models can be compared using the deviance information criterion and how goodness of fit can be assessed using the residual deviance. The approach is illustrated through a range of worked examples for commonly encountered evidence formats.
我们提出了一种广义线性模型框架,用于综合随机对照试验的数据。描述了一种常见的模型,采用固定效应和随机效应综合的线性回归形式,可用于正态、二项式、泊松和多项数据。用于二项式数据荟萃分析的熟悉的逻辑回归模型是具有对数链接函数的广义线性模型,适用于概率结果。通过使用其他链接函数,如恒等、对数、互补对数对数和概率链接函数,相同的线性回归框架可应用于连续结果、速率模型、竞争风险或有序类别结果。线性预测因子的常见核心模型可应用于成对荟萃分析、间接比较、多臂试验综合和混合治疗比较,也称为网络荟萃分析,无需区分。我们采用贝叶斯方法进行估计,并提供使用马尔可夫链蒙特卡罗模拟的贝叶斯分析的 WinBUGS 程序代码。这种方法的一个优点是,它可以很容易地扩展到共享参数模型中,在这些模型中,不同的随机对照试验以不同的格式报告结果,但来自共同的基本模型。广义线性模型框架的使用允许我们提出一个统一的解释,说明如何使用偏差信息准则比较模型,以及如何使用残差偏差评估拟合优度。该方法通过一系列常见的证据格式的实例说明进行说明。