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Three‐Component Mixture Model‐Based Adverse Drug Event Signal Detection for the Adverse Event Reporting System

机译:基于三组分混合物模型的不良事件报告系统不良药物事件信号检测

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摘要

The US Food and Drug Administration (FDA) Adverse Event Reporting System (FAERS) is an important source for detecting adverse drug event (ADE) signals. In this article, we propose a three‐component mixture model (3CMM) for FAERS signal detection. In 3CMM, a drug‐ADE pair is assumed to have either a zero relative risk (RR), or a background RR (mean RR = 1), or an increased RR (mean RR >1). By clearly defining the second component (mean RR = 1) as the null distribution, 3CMM estimates local false discovery rates (FDRs) for ADE signals under the empirical Bayes framework. Compared with existing approaches, the local FDR's top signals have noninferior or better sensitivities to detect true signals in both FAERS analysis and simulation studies. Additionally, we identify that the top signals of different approaches have different patterns, and they are complementary to each other.
机译:美国食品和药物管理局(FDA)不良事件报告系统(FAERS)是检测不良药物事件(ADE)信号的重要来源。在本文中,我们提出了一种用于FAERS信号检测的三成分混合模型(3CMM)。在3CMM中,假定一个药物-ADE对具有零相对风险(RR),背景RR(平均RRme = 1)或增加的RR(平均RR> 1)。通过将第二个分量(平均RR = 1)明确定义为零分布,3CMM在经验贝叶斯框架下估算ADE信号的局部误发现率(FDR)。与现有方法相比,本地FDR的最高信号在FAERS分析和仿真研究中检测真实信号的灵敏度均不低于或更高。此外,我们确定不同方法的顶部信号具有不同的模式,并且它们彼此互补。

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