面向上市后药品安全监测的分布式协作智能代理

Yanqing Ji, H. Ying, M.S. Farber, J. Yen, P. Dews, R. E. Miller, R. Massanari
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引用次数: 2

摘要

全国范围内的医疗保健系统和保险公司定期根据有关药物的益处、风险和成本的证据,决定将哪些药物纳入或排除在处方中。有效选择药物的一个主要障碍是缺乏关于药物,特别是新药安全性的充分公开资料。在本文中,我们提出了一个创新的多智能体系统,名为ADRMonitor,用于主动监测和检测医疗机构中涉及预期或潜在药物不良反应(adr)的信号对。每个智能代理都由基于模糊逻辑的计算识别启动决策(RPD)模型授权,其中模糊逻辑用于表示、解释和计算模糊和/或主观信息。我们进行了一项模拟研究,该研究基于数千个假设病例,这些病例是根据当地医院中服用西沙匹利的真实患者创建的。在当前阶段,我们的重点是建立该系统在识别信号对方面优于自发报告方法。在一定条件下(例如,没有agent协作),我们的仿真结果表明:(1)当优化的RPD模型作为金标准时,ADRMonitor检测到27个adr中的21个(78%);(2)在任何特定时间,代理人检测到的不良反应数量(许多)多于自发报告策略(假设报告率为10%——文献中报告率的高端)检测到的不良反应数量。第二个结果表明,提议的代理系统可以更及时地收集有用的信息,以进行公式决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed, Collaborative Intelligent Agents for Proactive Post-Marketing Drug Safety Surveillance
Healthcare systems and insurers nationwide regularly make decisions regarding which drugs to include or exclude from their formularies based on evidence concerning benefits, risks, and costs of the medications. A major barrier to effective drug selection is the lack of sufficient published information on the safety of drugs, particularly new drugs. In this paper, we propose an innovative multi-agent system, named ADRMonitor, for actively monitoring and detecting signal pairs implicating anticipated or potential adverse drug reactions (ADRs) of interest at a healthcare facility. Each intelligent agent is empowered by a fuzzy logic-based computational recognition-primed decision (RPD) model where fuzzy logic is utilized to represent, interpret, and compute vague and/or subjective information. We conducted a simulation study based on thousands of hypothetical patient cases that were created on the basis of real patients who were prescribed the drug Cisapride in a local hospital. At the current stage, our focus is to establish that the system can outperform the spontaneous reporting approach in identifying signal pairs. Under certain conditions (e.g., without agent collaboration), our simulation results show that (1) ADRMonitor detected 21 out of 27 (78%) ADRs when the optimized RPD model was used as a gold standard; (2) the number of ADRs detected by the agents is (many) more than those detected by the spontaneous reporting strategy (assuming 10% reporting rate - high end of rates reported in the literature) at any particular time. The second result implies that useful information could be collected more timely by the proposed agent system for formulary decisions.
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