Auto Response Generation in Online Medical Chat Services.

IF 5.9 Q1 Computer Science
Journal of Healthcare Informatics Research Pub Date : 2022-07-15 eCollection Date: 2022-09-01 DOI:10.1007/s41666-022-00118-x
Hadi Jahanshahi, Syed Kazmi, Mucahit Cevik
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引用次数: 0

Abstract

Telehealth helps to facilitate access to medical professionals by enabling remote medical services for the patients. These services have become gradually popular over the years with the advent of necessary technological infrastructure. The benefits of telehealth have been even more apparent since the beginning of the COVID-19 crisis, as people have become less inclined to visit doctors in person during the pandemic. In this paper, we focus on facilitating chat sessions between a doctor and a patient. We note that the quality and efficiency of the chat experience can be critical as the demand for telehealth services increases. Accordingly, we develop a smart auto-response generation mechanism for medical conversations that helps doctors respond to consultation requests efficiently, particularly during busy sessions. We explore over 900,000 anonymous, historical online messages between doctors and patients collected over 9 months. We implement clustering algorithms to identify the most frequent responses by doctors and manually label the data accordingly. We then train machine learning algorithms using this preprocessed data to generate the responses. The considered algorithm has two steps: a filtering (i.e., triggering) model to filter out infeasible patient messages and a response generator to suggest the top-3 doctor responses for the ones that successfully pass the triggering phase. Among the models utilized, BERT provides an accuracy of 85.41% for precision@3 and shows robustness to its parameters.

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在线医疗聊天服务中的自动回复生成。
远程医疗通过为病人提供远程医疗服务,帮助病人更方便地获得医疗专业人员的服务。多年来,随着必要技术基础设施的出现,这些服务已逐渐普及。自 COVID-19 危机爆发以来,远程医疗的益处更加明显,因为在大流行病期间,人们越来越不愿意亲自去看医生。在本文中,我们的重点是促进医生和病人之间的聊天会话。我们注意到,随着远程医疗服务需求的增加,聊天体验的质量和效率至关重要。因此,我们为医疗对话开发了一种智能自动回复生成机制,帮助医生高效地回复咨询请求,尤其是在繁忙的会话期间。我们研究了 9 个月来收集的超过 900,000 条医生和患者之间的匿名历史在线信息。我们采用聚类算法来识别医生最频繁的回复,并对数据进行相应的人工标注。然后,我们使用这些预处理数据训练机器学习算法,以生成回复。所考虑的算法有两个步骤:一个是过滤(即触发)模型,用于过滤掉不可行的患者信息;另一个是回复生成器,用于为成功通过触发阶段的回复建议前 3 位医生的回复。在所使用的模型中,BERT 的精确度@3 为 85.41%,并显示出其参数的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Healthcare Informatics Research
Journal of Healthcare Informatics Research Computer Science-Computer Science Applications
CiteScore
13.60
自引率
1.70%
发文量
12
期刊介绍: Journal of Healthcare Informatics Research serves as a publication venue for the innovative technical contributions highlighting analytics, systems, and human factors research in healthcare informatics.Journal of Healthcare Informatics Research is concerned with the application of computer science principles, information science principles, information technology, and communication technology to address problems in healthcare, and everyday wellness. Journal of Healthcare Informatics Research highlights the most cutting-edge technical contributions in computing-oriented healthcare informatics.  The journal covers three major tracks: (1) analytics—focuses on data analytics, knowledge discovery, predictive modeling; (2) systems—focuses on building healthcare informatics systems (e.g., architecture, framework, design, engineering, and application); (3) human factors—focuses on understanding users or context, interface design, health behavior, and user studies of healthcare informatics applications.   Topics include but are not limited to: ·         healthcare software architecture, framework, design, and engineering;·         electronic health records·         medical data mining·         predictive modeling·         medical information retrieval·         medical natural language processing·         healthcare information systems·         smart health and connected health·         social media analytics·         mobile healthcare·         medical signal processing·         human factors in healthcare·         usability studies in healthcare·         user-interface design for medical devices and healthcare software·         health service delivery·         health games·         security and privacy in healthcare·         medical recommender system·         healthcare workflow management·         disease profiling and personalized treatment·         visualization of medical data·         intelligent medical devices and sensors·         RFID solutions for healthcare·         healthcare decision analytics and support systems·         epidemiological surveillance systems and intervention modeling·         consumer and clinician health information needs, seeking, sharing, and use·         semantic Web, linked data, and ontology·         collaboration technologies for healthcare·         assistive and adaptive ubiquitous computing technologies·         statistics and quality of medical data·         healthcare delivery in developing countries·         health systems modeling and simulation·         computer-aided diagnosis
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