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Combining multiple outcome measures in a meta-analysis: an application.

机译:在荟萃分析中结合多种结果指标:一个应用程序。

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摘要

In meta-analysis of clinical trials published in the medical literature it is customary to restrict oneself to standard univariate fixed or random effects models. If multiple endpoints are present, each endpoint is analysed separately. A few articles have been written in the statistical literature on multivariate methods for multiple outcome measures. However, these methods were not easy to apply in practice, because self-written programs had to be used, and the examples were only two-dimensional. In this paper we consider a meta-analysis on the effect on stroke-free survival of surgery compared to conservative treatment in patients with increased risk of stroke. Three summary measures per trial are available: short-term post-operative morbidity/mortality in the surgical group; long-term event rate in the surgical group, and the event rate in the conservative group. We analyse the three outcomes jointly with a general linear MIXED model, compare the results with the standard univariate approaches and discuss the many advantages of multivariate modelling. It turns out that the general linear MIXED model is a very convenient framework for multivariate meta-analysis. All analyses could be carried out in standard general linear MIXED model software.
机译:在医学文献中发表的临床试验的荟萃分析中,习惯上将自己局限于标准的单变量固定或随机效应模型。如果存在多个端点,则将分别分析每个端点。统计文献中已经有几篇文章涉及用于多种结果测量的多元方法。但是,这些方法在实践中并不容易应用,因为必须使用自行编写的程序,并且示例仅为二维的。在本文中,我们考虑对中风风险增加的患者与保守治疗相比对手术无卒中生存的影响进行荟萃分析。每个试验可采用三种简易措施:手术组的短期术后发病率/死亡率;手术组的长期事件发生率,保守组的事件发生率。我们使用通用线性MIXED模型共同分析这三个结果,将结果与标准单变量方法进行比较,并讨论了多元建模的许多优点。事实证明,一般的线性MIXED模型是用于多元荟萃分析的非常方便的框架。所有分析都可以在标准的通用线性MIXED模型软件中进行。

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