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Combination of several matching adjusted indirect comparisons (MAICs) with an application in psoriasis

机译:几种匹配调整后的间接比较(MAICS)的组合在牛皮癣中的应用

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In health technology assessment (HTA), beside network meta-analysis (NMA), indirect comparisons (IC) have become an important tool used to provide evidence between two treatments when no head-to-head data are available. Researchers may use the adjusted indirect comparison based on the Bucher method (AIC) or the matching-adjusted indirect comparison (MAIC). While the Bucher method may provide biased results when included trials differ in baseline characteristics that influence the treatment outcome (treatment effect modifier), this issue may be addressed by applying the MAIC method if individual patient data (IPD) for at least one part of the AIC is available. Here, IPD is reweighted to match baseline characteristics and/or treatment effect modifiers of published data. However, the MAIC method does not provide a solution for situations when several common comparators are available. In these situations, assuming that the indirect comparison via the different common comparators is homogeneous, we propose merging these results by using meta-analysis methodology to provide a single, potentially more precise, treatment effect estimate. This paper introduces the method to combine several MAIC networks using classic meta-analysis techniques, it discusses the advantages and limitations of this approach, as well as demonstrates a practical application to combine several (M)AIC networks using data from Phase III psoriasis randomized control trials (RCT).
机译:在卫生技术评估(HTA)中,除了网络元分析(NMA)之外,间接比较(IC)已成为一种重要工具,用于在没有头对头数据的情况下提供两种治疗之间的证据。研究人员可以使用基于Bucher方法(AIC)或匹配调整间接比较(MAIC)的调整间接比较。虽然当纳入的试验在影响治疗结果的基线特征(治疗效果修正值)上存在差异时,Bucher方法可能会提供有偏差的结果,但如果至少有一部分AIC的个体患者数据(IPD)可用,则可以通过应用MAIC方法来解决这个问题。在这里,IPD被重新加权,以匹配已公布数据的基线特征和/或治疗效果调整因子。然而,MAIC方法不能为几种常见比较器可用的情况提供解决方案。在这些情况下,假设通过不同的常用比较器进行的间接比较是同质的,我们建议使用荟萃分析方法合并这些结果,以提供单一的、可能更精确的治疗效果评估。本文介绍了使用经典荟萃分析技术组合多个MAIC网络的方法,讨论了该方法的优点和局限性,并展示了使用III期银屑病随机对照试验(RCT)数据组合多个(M)AIC网络的实际应用。

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