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首页> 外文期刊>Statistical methods in medical research >Extended likelihood ratio test-based methods for signal detection in a drug class with application to FDA’s adverse event reporting system database
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Extended likelihood ratio test-based methods for signal detection in a drug class with application to FDA’s adverse event reporting system database

机译:延长似然比基于测试的方法用于对FDA的不良事件报告系统数据库的药物类中的信号检测方法

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摘要

A likelihood ratio test, recently developed for the detection of signals of adverse events for a drug of interest in the FDA Adverse Events Reporting System database, is extended to detect signals of adverse events simultaneously for all the drugs in a drug class. The extended likelihood ratio test methods, based on Poisson model (Ext-LRT) and zero-inflated Poisson model (Ext-ZIP-LRT), are discussed and are analytically shown, like the likelihood ratio test method, to control the type-I error and false discovery rate. Simulation studies are performed to evaluate the performance characteristics of Ext-LRT and Ext-ZIP-LRT. The proposed methods are applied to the Gadolinium drug class in FAERS database. An in-house likelihood ratio test tool, incorporating the Ext-LRT methodology, is being developed in the Food and Drug Administration.
机译:似然比测试,最近开发用于检测FDA不良事件报告系统数据库中感兴趣药物的不良事件信号的信号,扩展以检测药物类中所有药物的不良事件的信号。 基于泊松模型(EXT-LRT)和零充气泊松模型(EXT-ZIP-LRT)的延长似然比测试方法被讨论并进行了分析示出,如可能性比率测试方法,以控制I-I 错误和错误发现率。 进行仿真研究以评估EXT-LRT和EXT-ZIP-LRT的性能特征。 所提出的方法适用于仙子系统数据库中的钆药类。 在食品和药物管理中,正在开发包含ext-LRT方法的内部似然比测试工具。

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