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Natural language processing of symptoms documented in free-text narratives of electronic health records: a systematic review

机译:在电子健康记录的自由文本叙述中记录的自然语言处理症状:系统审查

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Objective: Natural language processing (NLP) of symptoms from electronic health records (EHRs) could contribute to the advancement of symptom science. We aim to synthesize the literature on the use of NLP to process or analyze symptom information documented in EHR free-text narratives. Materials and Methods: Our search of 1964 records from PubMed and EMBASE was narrowed to 27 eligible articles. Data related to the purpose, free-text corpus, patients, symptoms, NLP methodology, evaluation metrics, and quality indicators were extracted for each study. Results: Symptom-related information was presented as a primary outcome in 14 studies. EHR narratives represented various inpatient and outpatient clinical specialties, with general, cardiology, and mental health occurring most frequently. Studies encompassed a wide variety of symptoms, including shortness of breath, pain, nausea, dizziness, disturbed sleep, constipation, and depressed mood. NLP approaches included previously developed NLP tools, classification methods, and manually curated rule-based processing. Only one-third (n?=?9) of studies reported patient demographic characteristics. Discussion: NLP is used to extract information from EHR free-text narratives written by a variety of healthcare providers on an expansive range of symptoms across diverse clinical specialties. The current focus of this field is on the development of methods to extract symptom information and the use of symptom information for disease classification tasks rather than the examination of symptoms themselves. Conclusion: Future NLP studies should concentrate on the investigation of symptoms and symptom documentation in EHR free-text narratives. Efforts should be undertaken to examine patient characteristics and make symptom-related NLP algorithms or pipelines and vocabularies openly available.
机译:目的:电子健康记录(EHRS)的症状的自然语言处理(NLP)可能导致症状科学的进步。我们的目标是综合使用NLP来处理或分析在EHR自由文本叙述中记录的症状信息的文献。材料和方法:我们搜索1964年从PubMed and Embase的记录缩小为27个符合条件的文章。针对每项研究提取了与目的,自由文本语料库,患者,症状,NLP方法,评估度量和质量指标有关的数据。结果:症状相关信息作为14项研究的主要结果呈现。 EHR叙述代表了各种住院患者和门诊临床专业,常见,心脏病学和心理健康。研究包括各种各样的症状,包括呼吸短促,疼痛,恶心,头晕,睡眠不安,便秘和情绪沮丧。 NLP方法包括先前开发的NLP工具,分类方法和手动策划基于规则的处理。只有三分之一的研究报告了患者人口特征。讨论:NLP用于从各种医疗保健提供者编写的EHR自由文本叙述中提取信息,以在各种临床专业的广泛症状范围内。该领域的目前的重点是开发提取症状信息的方法和用于疾病分类任务的症状信息,而不是症状本身的检查。结论:未来的NLP研究应专注于ehr自由文本叙事中症状和症状文件的调查。应努力审查患者特征,并使症状相关的NLP算法或管道和词汇和词汇。

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