关于匹配调整间接比较的全面回顾和闪亮应用。

IF 5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY Research Synthesis Methods Pub Date : 2024-02-21 DOI:10.1002/jrsm.1709
Ziren Jiang, Joseph C. Cappelleri, Margaret Gamalo, Yong Chen, Neal Thomas, Haitao Chu
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引用次数: 0

摘要

人口调整间接比较(PAIC)是一种越来越常用的技术,用于在无法进行头对头试验的情况下估算不同治疗方法的比较效果,以便进行卫生技术评估。三种常用的 PAIC 方法包括匹配调整间接比较法(MAIC)、模拟治疗比较法(STC)和多层次网络元回归法(ML-NMR)。MAIC 使研究人员能够在两项独立试验中实现均衡的协变量分布,而个体参与者数据只能在一项试验中获得。在本文中,我们将全面回顾 MAIC 方法,包括其理论推导、隐含假设以及与调查抽样中校准估计的联系。我们讨论了锚定 MAIC 和非锚定 MAIC 之间的细微差别,以及它们所需的假设。此外,我们还在用户友好的 R Shiny 应用程序 Shiny-MAIC 中实现了各种 MAIC 方法。据我们所知,这是第一个实现各种 MAIC 方法的 Shiny 应用程序。Shiny-MAIC 应用程序提供了锚定或非锚定 MAIC 的选择、不同类型协变量和结果的选择,以及两种方差估计方法,包括自举和稳健标准误差。我们提供了一个模拟数据示例,以展示 Shiny-MAIC 应用程序的实用性,从而为医疗保健决策提供一种方便用户的 MAIC 方法。Shiny-MAIC 可通过以下链接免费获取:https://ziren.shinyapps.io/Shiny_MAIC/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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A comprehensive review and shiny application on the matching-adjusted indirect comparison

Population-adjusted indirect comparison (PAIC) is an increasingly used technique for estimating the comparative effectiveness of different treatments for the health technology assessments when head-to-head trials are unavailable. Three commonly used PAIC methods include matching-adjusted indirect comparison (MAIC), simulated treatment comparison (STC), and multilevel network meta-regression (ML-NMR). MAIC enables researchers to achieve balanced covariate distribution across two independent trials when individual participant data are only available in one trial. In this article, we provide a comprehensive review of the MAIC methods, including their theoretical derivation, implicit assumptions, and connection to calibration estimation in survey sampling. We discuss the nuances between anchored and unanchored MAIC, as well as their required assumptions. Furthermore, we implement various MAIC methods in a user-friendly R Shiny application Shiny-MAIC. To our knowledge, it is the first Shiny application that implements various MAIC methods. The Shiny-MAIC application offers choice between anchored or unanchored MAIC, choice among different types of covariates and outcomes, and two variance estimators including bootstrap and robust standard errors. An example with simulated data is provided to demonstrate the utility of the Shiny-MAIC application, enabling a user-friendly approach conducting MAIC for healthcare decision-making. The Shiny-MAIC is freely available through the link: https://ziren.shinyapps.io/Shiny_MAIC/.

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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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