Zand Aria, Sharma Arjun, Stokes Zack, Reynolds Courtney, Montilla Alberto, Sauk Jenny, Hommes Daniel
Vatche and Tamar Manoukian Division of Digestive Diseases, UCLA Center for Inflammatory Bowel Diseases, David Geffen School of Medicine, University of California at Los Angeles, Los Angeles, CA, United States.
Department of Digestive Diseases, Leiden University Medical Center, Leiden, Netherlands.
J Med Internet Res. 2020 May 26;22(5):e15589. doi: 10.2196/15589.
The emergence of chatbots in health care is fast approaching. Data on the feasibility of chatbots for chronic disease management are scarce.
This study aimed to explore the feasibility of utilizing natural language processing (NLP) for the categorization of electronic dialog data of patients with inflammatory bowel diseases (IBD) for use in the development of a chatbot.
Electronic dialog data collected between 2013 and 2018 from a care management platform (UCLA eIBD) at a tertiary referral center for IBD at the University of California, Los Angeles, were used. Part of the data was manually reviewed, and an algorithm for categorization was created. The algorithm categorized all relevant dialogs into a set number of categories using NLP. In addition, 3 independent physicians evaluated the appropriateness of the categorization.
A total of 16,453 lines of dialog were collected and analyzed. We categorized 8324 messages from 424 patients into seven categories. As there was an overlap in these categories, their frequencies were measured independently as symptoms (2033/6193, 32.83%), medications (2397/6193, 38.70%), appointments (1518/6193, 24.51%), laboratory investigations (2106/6193, 34.01%), finance or insurance (447/6193, 7.22%), communications (2161/6193, 34.89%), procedures (617/6193, 9.96%), and miscellaneous (624/6193, 10.08%). Furthermore, in 95.0% (285/300) of cases, there were minor or no differences in categorization between the algorithm and the three independent physicians.
With increased adaptation of electronic health technologies, chatbots could have great potential in interacting with patients, collecting data, and increasing efficiency. Our categorization showcases the feasibility of using NLP in large amounts of electronic dialog for the development of a chatbot algorithm. Chatbots could allow for the monitoring of patients beyond consultations and potentially empower and educate patients and improve clinical outcomes.
聊天机器人在医疗保健领域的出现已指日可待。关于聊天机器人用于慢性病管理的可行性数据稀缺。
本研究旨在探讨利用自然语言处理(NLP)对炎症性肠病(IBD)患者的电子对话数据进行分类,以用于开发聊天机器人的可行性。
使用2013年至2018年期间从加利福尼亚大学洛杉矶分校一所IBD三级转诊中心的护理管理平台(UCLA eIBD)收集的电子对话数据。部分数据进行了人工审核,并创建了一种分类算法。该算法使用NLP将所有相关对话分类为固定数量的类别。此外,3名独立医生评估了分类的适当性。
共收集并分析了16453行对话。我们将来自424名患者的8324条消息分为七类。由于这些类别存在重叠,其出现频率被独立统计为症状(2033/6193,32.83%)、药物(2397/6193,38.70%)、预约(1518/6193,24.51%)、实验室检查(2106/6193,34.01%)、财务或保险(447/6193,7.22%)、沟通(2161/6193,34.89%)、程序(617/6193,9.96%)和其他(624/6193,10.08%)。此外,在95.0%(285/300)的病例中,算法与三名独立医生之间的分类差异较小或无差异。
随着电子健康技术的应用日益广泛,聊天机器人在与患者互动、收集数据和提高效率方面可能具有巨大潜力。我们的分类展示了在大量电子对话中使用NLP开发聊天机器人算法的可行性。聊天机器人可以在会诊之外对患者进行监测,并有可能增强患者能力、对患者进行教育并改善临床结果。