An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study

BackgroundThe emergence of chatbots in health care is fast approaching. Data on the feasibility of chatbots for chronic disease management are scarce. ObjectiveThis study aimed to explore the feasibility of utilizing natural language processing (NLP) for the categ...

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Main Authors: Zand, Aria, Sharma, Arjun, Stokes, Zack, Reynolds, Courtney, Montilla, Alberto, Sauk, Jenny, Hommes, Daniel
Format: Article
Language:English
Published: JMIR Publications 2020-05-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2020/5/e15589/
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spelling doaj-5a0c400995f8425a8422dd81b863a1172021-04-02T19:21:24ZengJMIR PublicationsJournal of Medical Internet Research1438-88712020-05-01225e1558910.2196/15589An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort StudyZand, AriaSharma, ArjunStokes, ZackReynolds, CourtneyMontilla, AlbertoSauk, JennyHommes, Daniel BackgroundThe emergence of chatbots in health care is fast approaching. Data on the feasibility of chatbots for chronic disease management are scarce. ObjectiveThis 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. MethodsElectronic 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. ResultsA 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. ConclusionsWith 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.http://www.jmir.org/2020/5/e15589/
collection DOAJ
language English
format Article
sources DOAJ
author Zand, Aria
Sharma, Arjun
Stokes, Zack
Reynolds, Courtney
Montilla, Alberto
Sauk, Jenny
Hommes, Daniel
spellingShingle Zand, Aria
Sharma, Arjun
Stokes, Zack
Reynolds, Courtney
Montilla, Alberto
Sauk, Jenny
Hommes, Daniel
An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
Journal of Medical Internet Research
author_facet Zand, Aria
Sharma, Arjun
Stokes, Zack
Reynolds, Courtney
Montilla, Alberto
Sauk, Jenny
Hommes, Daniel
author_sort Zand, Aria
title An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
title_short An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
title_full An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
title_fullStr An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
title_full_unstemmed An Exploration Into the Use of a Chatbot for Patients With Inflammatory Bowel Diseases: Retrospective Cohort Study
title_sort exploration into the use of a chatbot for patients with inflammatory bowel diseases: retrospective cohort study
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2020-05-01
description BackgroundThe emergence of chatbots in health care is fast approaching. Data on the feasibility of chatbots for chronic disease management are scarce. ObjectiveThis 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. MethodsElectronic 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. ResultsA 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. ConclusionsWith 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.
url http://www.jmir.org/2020/5/e15589/
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