临床命名实体识别:一个简短的比较。

Juan Antonio Lossio-Ventura, Sebastien Boussard, Juandiego Morzan, Tina Hernandez-Boussard
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引用次数: 2

摘要

电子健康记录的采用增加了临床数据的数量,这为医疗保健研究提供了机会。有几种生物医学注释系统已被用于促进临床数据的分析。然而,缺乏临床注释比较来选择最适合特定临床任务的工具。在这项工作中,我们使用了MIMIC-III数据库中的临床记录,并评估了三种注释系统,以确定四种类型的实体:(1)程序,(2)疾病,(3)药物和(4)解剖。我们的初步结果表明,biopportal在提取疾病和药物方面表现良好。这可以为临床研究人员提供对患者健康模式的真实临床见解,并可能允许创建注释数据集的第一版。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical named-entity recognition: A short comparison.

The adoption of electronic health records has increased the volume of clinical data, which has opened an opportunity for healthcare research. There are several biomedical annotation systems that have been used to facilitate the analysis of clinical data. However, there is a lack of clinical annotation comparisons to select the most suitable tool for a specific clinical task. In this work, we used clinical notes from the MIMIC-III database and evaluated three annotation systems to identify four types of entities: (1) procedure, (2) disorder, (3) drug, and (4) anatomy. Our preliminary results demonstrate that BioPortal performs well when extracting disorder and drug. This can provide clinical researchers with real-clinical insights into patient's health patterns and it may allow to create a first version of an annotated dataset.

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