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An Evaluation of a Natural Language Processing Tool for Identifying and Encoding Allergy Information in Emergency Department Clinical Notes

机译:用于识别和编码急诊科临床笔记中过敏信息的自然语言处理工具的评估

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摘要

Emergency department (ED) visits due to allergic reactions are common. Allergy information is often recorded in free-text provider notes; however, this domain has not yet been widely studied by the natural language processing (NLP) community. We developed an allergy module built on the MTERMS NLP system to identify and encode food, drug, and environmental allergies and allergic reactions. The module included updates to our lexicon using standard terminologies, and novel disambiguation algorithms. We developed an annotation schema and annotated 400 ED notes that served as a gold standard for comparison to MTERMS output. MTERMS achieved an F-measure of 87.6% for the detection of allergen names and no known allergies, 90% for identifying true reactions in each allergy statement where true allergens were also identified, and 69% for linking reactions to their allergen. These preliminary results demonstrate the feasibility using NLP to extract and encode allergy information from clinical notes.
机译:由于过敏反应,急诊就诊很常见。过敏信息通常记录在自由文本提供者注释中;但是,自然语言处理(NLP)社区尚未对该领域进行广泛的研究。我们开发了基于MTERMS NLP系统的过敏模块,以识别和编码食物,药物,环境过敏和过敏反应。该模块包括使用标准术语对我们词典的更新以及新颖的消歧算法。我们开发了注释模式并注释了400 ED笔记,这是与MTERMS输出进行比较的黄金标准。 MTERMS的F值检测为87.6%的过敏原名称和未知过敏反应; 90%的鉴定每个过敏陈述中也鉴定出真实过敏原的真反应; 69%的F测验用于鉴定过敏原。这些初步结果证明了使用NLP从临床记录中提取和编码过敏信息的可行性。

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