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A unified approach of meta-analysis: application to an antecedent biomarker study in Alzheimer's disease

机译:荟萃分析的统一方法:在阿尔茨海默氏病前期生物标志物研究中的应用

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This article provides a unified methodology of meta-analysis that synthesizes medical evidence by using both available individual patient data (IPD) and published summary statistics within the framework of likelihood principle. Most up-to-date scientific evidence on medicine is crucial information not only to consumers but also to decision makers, and can only be obtained when existing evidence from the literature and the most recent IPD are optimally synthesized. We propose a general linear mixed effects model to conduct meta-analyses when IPD are only available for some of the studies and summary statistics have to be used for the rest of the studies. Our approach includes both the traditional meta-analyses in which only summary statistics are available for all studies and the other extreme case in which IPD are available for all studies as special examples. We implement the proposed model with statistical procedures from standard computing packages. We provide measures of heterogeneity based on the proposed model. Finally, we demonstrate the proposed methodology through a real-life example by studying the cerebrospinal fluid biomarkers to identify individuals with a high risk of developing Alzheimer's disease when they are still cognitively normal.
机译:本文提供了一种统一的荟萃分析方法,该方法通过在可能性原理框架内使用可用的个人患者数据(IPD)和已发布的摘要统计信息来综合医学证据。关于医学的最新科学证据不仅对消费者而且对决策者都是至关重要的信息,并且只有在最佳地综合了文献和最新IPD的现有证据时才能获得。当IPD仅适用于某些研究且摘要统计必须用于其余研究时,我们提出了一个通用的线性混合效应模型来进行荟萃分析。我们的方法既包括传统的荟萃分析,其中仅汇总统计信息可用于所有研究,另一种极端情况是IPD可用于所有研究,作为特殊示例。我们使用来自标准计算包的统计程序来实现建议的模型。我们基于提出的模型提供了异质性度量。最后,我们通过研究脑脊髓液生物标记物以识别在认知上仍正常的情况下具有罹患阿尔茨海默氏病的高风险个体的现实生活中的示例来证明所提出的方法。

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