Probing Patient Messages Enhanced by Natural Language Processing: A Top-Down Message Corpus Analysis

Author:

Mastorakos George1ORCID,Khurana Aditya1ORCID,Huang Ming2ORCID,Fu Sunyang2ORCID,Tafti Ahmad P.34ORCID,Fan Jungwei2ORCID,Liu Hongfang2

Affiliation:

1. Mayo Clinic Alix School of Medicine, Mayo Clinic, Scottsdale, AZ, USA

2. Mayo Clinic, Department of Health Sciences Research, Rochester, MN, USA

3. Computer Science Department, University of Southern Maine, Portland, Maine, USA

4. Dubyak Center for Digital Science and Innovation, University of Southern Maine, Portland, Maine, USA

Abstract

Background. Patients increasingly use asynchronous communication platforms to converse with care teams. Natural language processing (NLP) to classify content and automate triage of these messages has great potential to enhance clinical efficiency. We characterize the contents of a corpus of portal messages generated by patients using NLP methods. We aim to demonstrate descriptive analyses of patient text that can contribute to the development of future sophisticated NLP applications. Methods. We collected approximately 3,000 portal messages from the cardiology, dermatology, and gastroenterology departments at Mayo Clinic. After labeling these messages as either Active Symptom, Logistical, Prescription, or Update, we used NER (named entity recognition) to identify medical concepts based on the UMLS library. We hierarchically analyzed the distribution of these messages in terms of departments, message types, medical concepts, and keywords therewithin. Results. Active Symptom and Logistical content types comprised approximately 67% of the message cohort. The “Findings” medical concept had the largest number of keywords across all groupings of content types and departments. “Anatomical Sites” and “Disorders” keywords were more prevalent in Active Symptom messages, while “Drugs” keywords were most prevalent in Prescription messages. Logistical messages tended to have the lower proportions of “Anatomical Sites,”, “Disorders,”, “Drugs,”, and “Findings” keywords when compared to other message content types. Conclusions. This descriptive corpus analysis sheds light on the content and foci of portal messages. The insight into the content and differences among message themes can inform the development of more robust NLP models.

Publisher

American Association for the Advancement of Science (AAAS)

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. The role of framing in managing EHR portal messages;Healthcare;2024-09

2. Automatic uncovering of patient primary concerns in portal messages using a fusion framework of pretrained language models;Journal of the American Medical Informatics Association;2024-06-27

3. Characterizing the Users of Patient Portal Messaging: A Single Institutional Cohort Study;2023 IEEE 11th International Conference on Healthcare Informatics (ICHI);2023-06-26

4. Classification of Patient Portal Messages with BERT-based Language Models;2023 IEEE 11th International Conference on Healthcare Informatics (ICHI);2023-06-26

5. Mapping Chinese Medical Entities to the Unified Medical Language System;Health Data Science;2023-01

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