网络荟萃分析中检测不一致性的两种模型比较。

IF 5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Lu Qin, Shishun Zhao, Wenlai Guo, Tiejun Tong, Ke Yang
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引用次数: 0

摘要

网络荟萃分析的应用越来越广泛,要想成功实施网络荟萃分析,就要求直接比较结果和间接比较结果保持一致。因此,在网络荟萃分析中,如何正确检测不一致性往往是一个关键问题,因为网络荟萃分析的结果能否可靠地用作临床指导。在现有的不一致性检测方法中,有两种常用的模型,即按治疗设计交互模型和侧分模型。虽然最初的侧分模型是用贝叶斯方法估计的,但在本文中,我们采用的是频数主义方法。在本文中,我们将网络荟萃分析的数据结构视为缺失数据,并对每个模型的潜在完整数据进行参数化,从而对这两类模型进行全面评述,并探讨它们之间的关系。通过分析和数值研究,我们验证了边分裂模型是按治疗设计交互模型的具体实例,包含了额外的假设或在特定的数据结构下。此外,与侧面分割模型相比,按治疗设计交互模型在不同数据结构下的不一致性检测中表现出稳健的性能。最后,作为不一致性检测的实用指南,我们建议在缺乏有关不一致性潜在位置的信息时使用逐项设计交互模型。相比之下,侧分模型可以作为一种补充方法,尤其是当每个设计中的研究数量较少时,可以从整体和局部两个角度对不一致性进行全面评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison of two models for detecting inconsistency in network meta-analysis

The application of network meta-analysis is becoming increasingly widespread, and for a successful implementation, it requires that the direct comparison result and the indirect comparison result should be consistent. Because of this, a proper detection of inconsistency is often a key issue in network meta-analysis as whether the results can be reliably used as a clinical guidance. Among the existing methods for detecting inconsistency, two commonly used models are the design-by-treatment interaction model and the side-splitting models. While the original side-splitting model was initially estimated using a Bayesian approach, in this context, we employ the frequentist approach. In this paper, we review these two types of models comprehensively as well as explore their relationship by treating the data structure of network meta-analysis as missing data and parameterizing the potential complete data for each model. Through both analytical and numerical studies, we verify that the side-splitting models are specific instances of the design-by-treatment interaction model, incorporating additional assumptions or under certain data structure. Moreover, the design-by-treatment interaction model exhibits robust performance across different data structures on inconsistency detection compared to the side-splitting models. Finally, as a practical guidance for inconsistency detection, we recommend utilizing the design-by-treatment interaction model when there is a lack of information about the potential location of inconsistency. By contrast, the side-splitting models can serve as a supplementary method especially when the number of studies in each design is small, enabling a comprehensive assessment of inconsistency from both global and local perspectives.

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来源期刊
Research Synthesis Methods
Research Synthesis Methods MATHEMATICAL & COMPUTATIONAL BIOLOGYMULTID-MULTIDISCIPLINARY SCIENCES
CiteScore
16.90
自引率
3.10%
发文量
75
期刊介绍: Research Synthesis Methods is a reputable, peer-reviewed journal that focuses on the development and dissemination of methods for conducting systematic research synthesis. Our aim is to advance the knowledge and application of research synthesis methods across various disciplines. Our journal provides a platform for the exchange of ideas and knowledge related to designing, conducting, analyzing, interpreting, reporting, and applying research synthesis. While research synthesis is commonly practiced in the health and social sciences, our journal also welcomes contributions from other fields to enrich the methodologies employed in research synthesis across scientific disciplines. By bridging different disciplines, we aim to foster collaboration and cross-fertilization of ideas, ultimately enhancing the quality and effectiveness of research synthesis methods. Whether you are a researcher, practitioner, or stakeholder involved in research synthesis, our journal strives to offer valuable insights and practical guidance for your work.
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