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首页> 外文期刊>Yonsei Medical Journal >A Personalized and Learning Approach for Identifying Drugs with Adverse Events
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A Personalized and Learning Approach for Identifying Drugs with Adverse Events

机译:识别不良事件药物的个性化学习方法

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Purpose Adverse drug events (ADEs) are associated with high health and financial costs and have increased as more elderly patients treated with multiple medications emerge in an aging society. It has thus become challenging for physicians to identify drugs causing adverse events. This study proposes a novel approach that can improve clinical decision making with recommendations on ADE causative drugs based on patient information, drug information, and previous ADE cases. Materials and Methods We introduce a personalized and learning approach for detecting drugs with a specific adverse event, where recommendations tailored to each patient are generated using data mining techniques. Recommendations could be improved by learning the associations of patients and ADEs as more ADE cases are accumulated through iterations. After consulting the system-generated recommendations, a physician can alter prescriptions accordingly and report feedback, enabling the system to evolve with actual causal relationships. Results A prototype system is developed using ADE cases reported over 1.5 years and recommendations obtained from decision tree analysis are validated by physicians. Two representative cases demonstrate that the personalized recommendations could contribute to more prompt and accurate responses to ADEs. Conclusion The current system where the information of individual drugs exists but is not organized in such a way that facilitates the extraction of relevant information together can be complemented with the proposed approach to enhance the treatment of patients with ADEs. Our illustrative results show the promise of the proposed system and further studies are expected to validate its performance with quantitative measures.
机译:目的不良药物事件(ADEs)与高昂的健康和财务成本相关联,并且随着老龄化社会中出现更多接受多种药物治疗的老年患者而增加。因此,对于医生而言,识别引起不良事件的药物变得具有挑战性。这项研究提出了一种新颖的方法,可以根据患者信息,药物信息和以前的ADE病例,通过对ADE致病药物的建议来改善临床决策。材料和方法我们引入了一种个性化的学习方法来检测具有特定不良事件的药物,其中使用数据挖掘技术生成针对每个患者的建议。随着更多的ADE案例通过迭代积累,可以通过学习患者与ADE的关联来改善建议。在咨询了系统生成的建议之后,医生可以相应地更改处方并报告反馈,从而使系统随着实际的因果关系而发展。结果利用1.5年以来报道的ADE案例开发了原型系统,医生通过决策树分析获得的建议得到了验证。两个代表性案例表明,个性化推荐可以有助于对ADE做出更迅速和准确的响应。结论现有的系统中存在单个药物的信息,但其组织方式不便于将相关信息提取在一起,因此可以通过建议的增强ADEs治疗的方法来进行补充。我们的说明性结果表明了拟议系统的前景,并有望通过定量研究进一步研究以验证其性能。

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