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Towards Human–Machine Collaboration in Creating an Evaluation Corpus for Adverse Drug Events in Discharge Summaries of Electronic Medical Records

机译:建立人机协作,建立电子病历摘要中不良药物事件的评估语料库

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Adverse drug events (ADEs) contribute significantly to morbidity and mortality in the healthcare system. The availability of digitalised hospitals’ narrative clinical data offers a potentially rich resource to enhance pharmacovigilance efforts to manage potential safety issues arising from real-world use of drugs. The goal of this paper was to establish a foundation for creating an evaluation corpus by developing a set of annotation guidelines to achieve high inter-annotator agreement (IAA) and to evaluate the performance of basic entity identification tools for drugs, adverse events (AEs) and drug-AE relationships from 100 discharge summaries of a tertiary hospital in Singapore. Two teams of three annotators worked independently on text annotation using Knowtator. Three-way IAA of 86%, 70% and 49% were achieved for drugs, AEs and drug-AE relationships respectively. The performance of the machine algorithm was evaluated against annotations made by at least two annotators, with a recall of 84% and precision of 73% for drugs and a recall of 67% and precision of 53% for AEs. The high recall and precision for drug entity extraction suggests that machine pre-annotation of drugs followed by human annotation of AEs and drug-AE relationships could be a feasible approach in expediting the process of creating a larger evaluation corpus. Non-matches between machine and human annotations were examined to identify ways to further refine the algorithm. When successfully implemented, the identification of ADEs could greatly support pharmacovigilance work in characterising the magnitude and scope of ADEs and prioritising interventions to improve the drug safety.
机译:药物不良事件(ADEs)大大增加了医疗系统的发病率和死亡率。数字化医院的叙述性临床数据的可用性提供了潜在的丰富资源,可以加强药物警戒工作,以管理由现实世界中使用药物引起的潜在安全问题。本文的目的是通过开发一套注释准则来建立评估语料库,以实现较高的注释者之间的协议(IAA)并评估用于药物,不良事件(AEs)的基本实体识别工具的性能。与新加坡一家三级医院的100次出院总结中的药物-不良事件关系。由三个注释器组成的两个团队使用Knowtator独立进行文本注释。药物,不良事件和药物与不良事件的关系分别达到86%,70%和49%的三向IAA。针对至少两个注释者所做的注释,评估了机器算法的性能,其中药物的召回率为84%,准确度为73%,AE的召回率为67%,准确度为53%。药品实体提取的高召回率和高精度提示,对药品进行机器预批注,然后人工对AE和药品-AE关系进行批注可能是加快建立更大的评估语料库的可行方法。检查了机器注释和人类注释之间的不匹配情况,以确定进一步完善算法的方法。如果成功实施,则ADE的鉴定可在表征ADE的数量和范围以及确定干预措施的优先次序以提高药物安全性方面为药物警戒工作提供大力支持。

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