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How to read and interpret the results of a Bayesian network meta-analysis: a short tutorial

机译:如何阅读和解释贝叶斯网络元分析的结果:简短教程

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In this manuscript we use realistic data to conduct a network meta-analysis using a Bayesian approach to analysis. The purpose of this manuscript is to explain, in lay terms, how to interpret the output of such an analysis. Many readers are familiar with the forest plot as an approach to presenting the results of a pairwise meta-analysis. However when presented with the results of network meta-analysis, which often does not include the forest plot, the output and results can be difficult to understand. Further, one of the advantages of Bayesian network meta-analyses is in the novel outputs such as treatment rankings and the probability distributions are more commonly presented for network meta-analysis. Our goal here is to provide a tutorial for how to read the outcome of network meta-analysis rather than how to conduct or assess the risk of bias in a network meta-analysis.
机译:在本手稿中,我们使用现实数据使用贝叶斯方法进行分析来进行网络元分析。 此稿件的目的是以奠定术语来解释如何解释这种分析的输出。 许多读者熟悉森林图作为呈现成对元分析结果的方法。 然而,当呈现网络元分析的结果时,这通常不包括森林图,输出和结果可能很难理解。 此外,贝叶斯网络元分析的优点之一是在新颖的输出中,例如治疗排名和概率分布,更常见于网络元分析。 我们的目标是提供如何阅读网络元分析的结果的教程,而不是如何在网络元分析中进行或评估偏置风险的情况。

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