Identifying Unknown Adverse Drug Reaction Signal Pairs in Postmarketing Surveillance Using an Active Multi-agent System Approach

Yanqing Ji, H. Ying, M.S. Farber, J. Yen, P. Dews, R. E. Miller, R. Massanari
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Abstract

Discovering unknown adverse drug reactions (ADRs) in postmarketing surveillance as early as possible is of great importance. The current approach to postmarketing surveillance primarily relies on spontaneous reporting. It is passive and suffers from gross underreporting (<0% reporting rate), latency, and inconsistent reporting. We propose a novel team-based intelligent agent system approach for actively monitoring and detecting potential ADRs of interest using electronic patient records. We designed such a system and named it ADRMonitor. To evaluate the performance of the ADRMonitor with respect to the spontaneous reporting approach, we conducted simulation experiments on identification of ADR signal pairs (i.e., potential links between drugs and apparent adverse reactions) under various conditions. The experiments involved over 275,000 simulated patients created on the basis of more than 1,000 real patients treated by the drug cisapride that was on the market for seven years until its withdrawal by the FDA in 2000 due to serious ADRs. The quantitative simulation results show that (1) the ADR detection rate of the ADRMonitor agents with even moderate decision-making skills is 5 times higher than that of spontaneous reporting; (2) as the number of patient cases increases, ADRs could be detected significantly earlier by the ADRMonitor.
利用主动多智能体系统方法识别上市后监测中未知药物不良反应信号对
在上市后监测中尽早发现未知药物不良反应(adr)具有重要意义。目前的上市后监测方法主要依赖于自发报告。它是被动的,存在严重的低报(报告率<0%)、延迟和不一致的报告。我们提出了一种新的基于团队的智能代理系统方法,用于利用电子病历主动监测和检测潜在的adr。我们设计了这样一个系统,并将其命名为ADRMonitor。为了评估ADRMonitor相对于自发报告方法的性能,我们进行了在不同条件下识别ADR信号对(即药物与明显不良反应之间的潜在联系)的模拟实验。实验涉及超过275,000名模拟患者,这些患者是在1000多名服用西沙比利的真实患者的基础上创建的。西沙比利在市场上销售了7年,直到2000年由于严重的不良反应被FDA撤回。定量模拟结果表明:(1)决策能力中等的ADRMonitor代理的ADR检出率是自发报告的5倍;(2)随着患者数量的增加,ADRMonitor可以显著提前发现adr。
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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