利用自然语言处理技术自动识别临床文本中患者未满足的社会需求

Sungrim Moon PhD , Yuqi Wu PhD , Jay B. Doughty MHA , Mark L. Wieland MD, MPH , Lindsey M. Philpot PhD, MPH , Jungwei W. Fan PhD , Jane W. Njeru MB, ChB
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引用次数: 0

摘要

目标开发自然语言处理(NLP)解决方案,用于识别患者未得到满足的社会需求,以便及时进行干预:一项回顾性队列研究,通过审查和注释临床笔记来识别未满足的社会需求,然后使用注释来开发和评估 NLP 解决方案。参与者:2019 年 6 月 1 日至 2021 年 5 月 31 日期间,在一家大型学术医疗中心就诊并转诊至社区保健员 (CHW) 项目的初级保健患者共计 1103 人。对 200 名按年龄和性别分类的患者的临床笔记和门户网站信息进行了采样,以便对未满足的社会需求进行注释。第一种解决方案在以语义嵌入向量表示的句子之上采用了基于相似性的分类。第二种解决方案涉及设计术语和模式,用于识别临床文本中未满足的社会需求的各个领域。结果共对 5675 份临床笔记和 475 条门户信息进行了注释,注释者之间的一致性为 0.938。最佳 NLP 解决方案的 f1 分数为 0.95,适用于所有转介的 CHW 群体(n=1103),其中 80% 的人在首次转介 CHW 之前的 6 个月内至少有一项社会需求未得到满足。在大多数性别和年龄层中,经济压力和健康知识是未满足社会需求的前两个领域。NLP在识别这些需求以进行CHW转诊方面可以取得良好的效果,并有助于对健康的社会决定因素进行数据驱动的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Identification of Patients’ Unmet Social Needs in Clinical Text Using Natural Language Processing

Objective

To develop natural language processing (NLP) solutions for identifying patients’ unmet social needs to enable timely intervention.

Patients and Methods

Design: A retrospective cohort study with review and annotation of clinical notes to identify unmet social needs, followed by using the annotations to develop and evaluate NLP solutions.

Participants

A total of 1103 primary care patients seen at a large academic medical center from June 1, 2019, to May 31, 2021 and referred to a community health worker (CHW) program. Clinical notes and portal messages of 200 age and sex-stratified patients were sampled for annotation of unmet social needs.

Systems

Two NLP solutions were developed and compared. The first solution employed similarity-based classification on top of sentences represented as semantic embedding vectors. The second solution involved designing of terms and patterns for identifying each domain of unmet social needs in the clinical text.

Measures

Precision, recall, and f1-score of the NLP solutions.

Results

A total of 5675 clinical notes and 475 portal messages were annotated, with an inter-annotator agreement of 0.938. The best NLP solution achieved an f1-score of 0.95 and was applied to the entire CHW-referred cohort (n=1103), of whom >80% had at least 1 unmet social need within the 6 months before the first CHW referral. Financial strain and health literacy were the top 2 domains of unmet social needs across most of the sex and age strata.

Conclusion

Clinical text contains rich information about patients’ unmet social needs. The NLP can achieve good performance in identifying those needs for CHW referral and facilitate data-driven research on social determinants of health.

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来源期刊
Mayo Clinic Proceedings. Digital health
Mayo Clinic Proceedings. Digital health Medicine and Dentistry (General), Health Informatics, Public Health and Health Policy
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