Decision tree-based expert system for adverse drug reaction detection using fuzzy logic and genetic algorithm

A. Mansour
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引用次数: 18

Abstract

Early detection of unknown adverse drug reactions (ADRs) could save patient lives and prevent unnecessary hospitalizations. Current surveillance systems are not ideal for rapidly identifying rare unknown ADRs. Current methods largely rely on passive spontaneous reports, which suffer from serious underreporting, latency, and inconsistent reporting. A more effective system is needed as the electronic patient records become more and more easily accessible in various health organizations such as hospitals, medical centers and insurance companies. These data provide a new source of information that has great potentials to detect ADR signals much earlier. In this paper, we have developed a methodology that uses both decision tree and fuzzy logic to generate a decision model. The developed model is equipped with a fuzzy inference engine, which enables it to find the causal relationship between a drug and a potential ADR. This could assist healthcare professionals to early detect previously unknown ADRs. Optimizing fuzzy rule weights and fuzzy sets parameters using genetic algorithm has been embedded in the proposed system to achieve excellent performance and improve the accuracy of the developed model. To evaluate the performance of the system, we have implemented the system using Weka and FuzzyJess software packages, and generated simulation results. To conduct the experiments, clinical information on 280 patients treated at the Detroit Veterans Affairs Medical Center was used. Two physicians on the team independently reviewed the experiment results. Kappa statistics show excellent agreement between the physicians and the developed model.
基于模糊逻辑和遗传算法的决策树药物不良反应检测专家系统
早期发现未知的药物不良反应(adr)可以挽救患者的生命并防止不必要的住院治疗。目前的监测系统对于快速识别罕见的未知不良反应并不理想。目前的方法主要依赖于被动的自发报告,存在严重的少报、延迟和不一致的报告。随着医院、医疗中心、保险公司等各种医疗机构的电子病历越来越容易获取,需要一个更有效的系统。这些数据提供了一种新的信息来源,具有更早发现不良反应信号的巨大潜力。在本文中,我们开发了一种使用决策树和模糊逻辑来生成决策模型的方法。所开发的模型配备了模糊推理引擎,使其能够找到药物与潜在不良反应之间的因果关系。这可以帮助医疗保健专业人员早期发现以前未知的不良反应。采用遗传算法对模糊规则权值和模糊集参数进行优化,提高了模型的精度和性能。为了评估系统的性能,我们使用Weka和FuzzyJess软件包对系统进行了实现,并生成了仿真结果。为了进行实验,使用了底特律退伍军人事务医疗中心280名患者的临床信息。团队中的两名医生独立审查了实验结果。Kappa统计显示医生和开发的模型之间有很好的一致性。
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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