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Detecting adverse drug reactions in discharge summaries of electronic medical records using Readpeer

机译:使用Readpeer检测电子病历摘要中的药物不良反应

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Background: Hospital discharge summaries offer a potentially rich resource to enhance pharmacovigilance efforts to evaluate drug safety in real-world clinical practice. However, it is infeasible for experts to read through all discharge summaries to find cases of drug-adverse event (AE) relations.Purpose: The objective of this paper is to develop a natural language processing (NLP) framework to detect drug-AE relations from unstructured hospital discharge summaries.Basic procedures: An NLP algorithm was designed using customized dictionaries of drugs, adverse event (AE) terms, and rules based on trigger phrases, negations, fuzzy logic and word distances to recognize drug, AE terms and to detect drug-AE relations. Furthermore, a customized annotation tool was developed to facilitate expert review of discharge summaries from a tertiary hospital in Singapore in 2011.Main findings: A total of 33 trial sets with 50 to 100 records per set were evaluated (1620 discharge summaries) by our algorithm and reviewed by pharmacovigilance experts. After every 6 trial sets, drug and AE dictionaries were updated, and rules were modified to improve the system. Excellent performance was achieved for drug and AE entity recognition with over 92% precision and recall. On the final 6 sets of discharge summaries (600 records), our algorithm achieved 75% precision and 59% recall for identification of valid drug-AE relations.Principal conclusions: Adverse drug reactions are a significant contributor to health care costs and utilization. Our algorithm is not restricted to particular drugs, drug classes or specific medical specialties, which is an important attribute for a national regulatory authority to carry out comprehensive safety monitoring of drug products. Drug and AE dictionaries may be updated periodically to ensure that the tool remains relevant for performing surveillance activities. The development of the algorithm, and the ease of reviewing and correcting the results of the algorithm as part of an iterative machine learning process, is an important step towards use of hospital discharge summaries for an active pharmacovigilance program.
机译:背景:医院出院总结提供了潜在的丰富资源,可增强药物警戒性,以评估实际临床实践中的药物安全性。然而,专家无法通读所有出院摘要以查找药物不良事件(AE)关系的案例。目的:本文的目的是开发一种自然语言处理(NLP)框架来检测药物不良事件之间的关系基本过程:使用定制的药物词典,不良事件(AE)术语以及基于触发短语,否定,模糊逻辑和单词距离的规则设计NLP算法,以识别药物,AE术语并进行检测毒品-AE关系。此外,2011年开发了一套定制的注释工具,以方便专家对新加坡一家三级医院的出院摘要进行审查。主要发现:我们的算法评估了33个试验集,每组50到100条记录(1620个出院摘要)并由药物警戒专家审查。在每6个试验集之后,将更新药物和AE词典,并修改规则以改进系统。药物和AE实体识别的卓越性能达到了92%以上的精度和召回率。在最后的6组出院总结(600条记录)中,我们的算法在识别有效的药物-AE关系方面达到了75%的准确度和59%的召回率。主要结论:药物不良反应是医疗费用和利用率的重要因素。我们的算法不限于特定的药物,药物类别或特定的医学专业,这是国家监管机构对药物产品进行全面安全监控的重要属性。药物和AE词典可能会定期更新,以确保该工具与执行监视活动保持相关。作为迭代机器学习过程的一部分,算法的开发以及对算法结果的复查和纠正变得容易,这是朝着将出院摘要用于主动药物警戒计划的重要一步。

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  • 作者单位

    Natl Univ Singapore, Sch Comp, Dept Comp Sci, Singapore, Singapore;

    Natl Univ Singapore, Sch Comp, Dept Comp Sci, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore|Agcy Sci & Technol, Genome Inst Singapore, Singapore, Singapore;

    Natl Univ Hlth Syst, Natl Univ Singapore, Yong Loo Lin Sch Med, Singapore, Singapore;

    Hlth Sci Author, Vigilance & Compliance Branch, Hlth Prod Regulat Grp, Singapore, Singapore|Duke NUS Med Sch, Hlth Serv & Syst Res, Singapore, Singapore;

    Natl Univ Singapore, Sch Comp, Dept Comp Sci, Singapore, Singapore;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Pharmacovigilance; Text mining; Electronic medical records; Expert system; Adverse drug reaction;

    机译:药物警戒;文本挖掘;电子病历;专家系统;药物不良反应;
  • 入库时间 2022-08-18 04:18:41

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