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Estimating the contribution of studies in network meta-analysis: paths flows and streams

机译:估算研究在网络元分析中的贡献:路径流量和流

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摘要

In network meta-analysis, it is important to assess the influence of the limitations or other characteristics of individual studies on the estimates obtained from the network. The proportion contribution matrix, which shows how much each direct treatment effect contributes to each treatment effect estimate from network meta-analysis, is crucial in this context. We use ideas from graph theory to derive the proportion that is contributed by each direct treatment effect. We start with the ‘projection’ matrix in a two-step network meta-analysis model, called the >H matrix, which is analogous to the hat matrix in a linear regression model. We develop a method to translate >H entries to proportion contributions based on the observation that the rows of >H can be interpreted as flow networks, where a stream is defined as the composition of a path and its associated flow. We present an algorithm that identifies the flow of evidence in each path and decomposes it into direct comparisons. To illustrate the methodology, we use two published networks of interventions. The first compares no treatment, quinolone antibiotics, non-quinolone antibiotics and antiseptics for underlying eardrum perforations and the second compares 14 antimanic drugs. We believe that this approach is a useful and novel addition to network meta-analysis methodology, which allows the consistent derivation of the proportion contributions of direct evidence from individual studies to network treatment effects.
机译:在网络荟萃分析中,重要的是评估单个研究的局限性或其他特征对从网络获得的估计值的影响。在这种情况下,比例贡献矩阵至关重要,它显示了每种直接治疗效果对网络荟萃分析估计的每种治疗效果的贡献。我们使用图论的思想来推导每种直接治疗效果所占的比例。我们从两步网络元分析模型中的“投影”矩阵开始,该模型称为> H 矩阵,该矩阵类似于线性回归模型中的hat矩阵。我们基于观察到> H 的行可以解释为流网络的观点,开发出一种将> H 项转换为比例贡献的方法,其中,流定义为流的组成路径及其关联的流程。我们提出了一种算法,该算法可识别每个路径中的证据流并将其分解为直接比较。为了说明该方法,我们使用了两个已发布的干预网络。第一个比较未治疗的药物,喹诺酮类抗生素,非喹诺酮类抗生素和防腐剂用于潜在的鼓膜穿孔,第二个比较了14种抗躁狂药。我们认为,这种方法是对网络荟萃分析方法的一种有用且新颖的补充,它允许对来自各个研究的直接证据对网络治疗效果的比例贡献进行持续推导。

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