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An evidence-splitting approach to evaluation of direct-indirect evidence inconsistency in network meta-analysis

机译:评估网络元分析中直接间接证据不一致的证据分裂方法

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摘要

Network meta-analysis (NMA) compares the efficacy and harm between several treatments by combining direct and indirect evidence. The validity of NMA requires that all available evidence form a coherent network. Failure to meet such requirement is known as inconsistency. The most popular approach to inconsistency detection is to compare the direct and indirect evidence for each treatment contrast. Although several models have been proposed to evaluate direct-indirect evidence inconsistency, there is no comprehensive study on the implications of how these models separate direct from indirect evidence. The main objective of this study is to show that evidence is not properly split into direct and indirect evidence in current inconsistency models, and to propose a novel approach to inconsistency evaluation based on the principle of independence between direct and indirect evidence. We further demonstrated that current models for direct-indirect evidence inconsistency can potentially lead to misleading conclusions in inconsistency detection and NMA quality appraisal, while our proposed evidence-splitting model satisfies the principle of independence when splitting the direct from indirect evidence in multi-arm trials. Moreover, we showed that all these direct-indirect evidence inconsistency models differ in how the weight of the inconsistency parameter is split between the treatments of interest, yet only the evidence-splitting model assigns satisfying weights. Finally, we demonstrated how the evidence-splitting model can be implemented within the structural equation modeling framework. The evidence-splitting model may be a valuable tool to assess the inconsistency within NMA and evaluate the quality of its evidence.
机译:网络元分析(NMA)通过结合直接和间接证据来比较若干治疗之间的功效和伤害。 NMA的有效性要求所有可用的证据形成一致网络。未能满足此类要求被称为不一致。最流行的不一致检测方法是比较每个治疗对比的直接和间接证据。虽然已经提出了几种模型来评估直接间接证据不一致,但没有关于这些模型如何与间接证据分开的含义的全面研究。本研究的主要目的是表明,证据没有被正确分成当前不一致模式的直接和间接证据,并根据直接和间接证据之间的独立原则提出一种新的方法对不一致性评估。我们进一步证明,目前的直接间接证据不一致的模型可能导致不一致的检测和NMA质量评估的结论,而我们所提出的证据分裂模型符合独立性的原则,当从多臂试验中分离直接证据时,可以满足独立原则。此外,我们表明,所有这些直接间接证据不一致模型在感兴趣的治疗之间分配了不一致参数的重量,但只有令人满意的权重分配的证据分割模型。最后,我们证明了如何在结构方程建模框架内实现证据分离模型。证据分裂模型可能是评估NMA内不一致的有价值的工具,并评估其证据的质量。

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