网络元分析模型中的偏见传播

IF 5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Hua Li, Ming-Chieh Shih, Cheng-Jie Song, Yu-Kang Tu
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引用次数: 0

摘要

网络荟萃分析结合直接和间接证据来比较多种治疗方法。由于一种治疗对比的直接证据可能是其他治疗对比的间接证据,因此一种治疗对比的直接证据的偏差不仅可能影响对该特定治疗对比的估计,还可能影响对其他治疗对比的估计。由于网络结构决定了直接证据和间接证据的组合和加权方式,因此有偏见证据的影响将由网络几何形状决定。因此,本研究的目的是调查有偏见证据的影响如何在整个网络中传播,以及偏见的传播如何受到网络结构的影响。除了流行的Lu &除了模型之外,我们还研究了基线模型和基于臂的模型中的偏差传播,以比较不同模型中偏差的影响。我们在不同情况下进行了广泛的模拟,以探索偏差的影响如何受到偏差位置,网络几何形状和统计模型的影响。我们的研究结果表明,网络的结构对偏见如何在网络中传播有重要影响,对于Lu &面模型。在一个关系良好的网络中,偏见的影响更有可能被其他无偏见的证据所稀释。我们还使用了一个真实的网络元分析来演示如何使用关于偏见传播的新知识来解释原始分析的可疑结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bias propagation in network meta-analysis models

Network meta-analysis combines direct and indirect evidence to compare multiple treatments. As direct evidence for one treatment contrast may be indirect evidence for other treatment contrasts, biases in the direct evidence for one treatment contrast may affect not only the estimate for this particular treatment contrast but also estimates of other treatment contrasts. Because network structure determines how direct and indirect evidence are combined and weighted, the impact of biased evidence will be determined by the network geometry. Thus, this study's aim was to investigate how the impact of biased evidence spreads across the whole network and how the propagation of bias is influenced by the network structure. In addition to the popular Lu & Ades model, we also investigate bias propagation in the baseline model and arm-based model to compare the effects of bias in the different models. We undertook extensive simulations under different scenarios to explore how the impact of bias may be affected by the location of the bias, network geometry and the statistical model. Our results showed that the structure of a network has an important impact on how the bias spreads across the network, and this is especially true for the Lu & Ades model. The impact of bias is more likely to be diluted by other unbiased evidence in a well-connected network. We also used a real network meta-analysis to demonstrate how to use the new knowledge about bias propagation to explain questionable results from the original analysis.

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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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