Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System

BackgroundHealth education emerged as an important intervention for improving the awareness and self-management abilities of chronic disease patients. The development of information technologies has changed the form of patient educational materials from traditional paper mate...

Full description

Bibliographic Details
Main Authors: Wang, Zheyu, Huang, Haoce, Cui, Liping, Chen, Juan, An, Jiye, Duan, Huilong, Ge, Huiqing, Deng, Ning
Format: Article
Language:English
Published: JMIR Publications 2020-04-01
Series:JMIR Medical Informatics
Online Access:http://medinform.jmir.org/2020/4/e17642/
id doaj-7726c50314f642a89d0a1d4b5e795cf2
record_format Article
spelling doaj-7726c50314f642a89d0a1d4b5e795cf22021-05-03T02:53:38ZengJMIR PublicationsJMIR Medical Informatics2291-96942020-04-0184e1764210.2196/17642Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender SystemWang, ZheyuHuang, HaoceCui, LipingChen, JuanAn, JiyeDuan, HuilongGe, HuiqingDeng, Ning BackgroundHealth education emerged as an important intervention for improving the awareness and self-management abilities of chronic disease patients. The development of information technologies has changed the form of patient educational materials from traditional paper materials to electronic materials. To date, the amount of patient educational materials on the internet is tremendous, with variable quality, which makes it hard to identify the most valuable materials by individuals lacking medical backgrounds. ObjectiveThe aim of this study was to develop a health recommender system to provide appropriate educational materials for chronic disease patients in China and evaluate the effect of this system. MethodsA knowledge-based recommender system was implemented using ontology and several natural language processing (NLP) techniques. The development process was divided into 3 stages. In stage 1, an ontology was constructed to describe patient characteristics contained in the data. In stage 2, an algorithm was designed and implemented to generate recommendations based on the ontology. Patient data and educational materials were mapped to the ontology and converted into vectors of the same length, and then recommendations were generated according to similarity between these vectors. In stage 3, the ontology and algorithm were incorporated into an mHealth system for practical use. Keyword extraction algorithms and pretrained word embeddings were used to preprocess educational materials. Three strategies were proposed to improve the performance of keyword extraction. System evaluation was based on a manually assembled test collection for 50 patients and 100 educational documents. Recommendation performance was assessed using the macro precision of top-ranked documents and the overall mean average precision (MAP). ResultsThe constructed ontology contained 40 classes, 31 object properties, 67 data properties, and 32 individuals. A total of 80 SWRL rules were defined to implement the semantic logic of mapping patient original data to the ontology vector space. The recommender system was implemented as a separate Web service connected with patients' smartphones. According to the evaluation results, our system can achieve a macro precision up to 0.970 for the top 1 recommendation and an overall MAP score up to 0.628. ConclusionsThis study demonstrated that a knowledge-based health recommender system has the potential to accurately recommend educational materials to chronic disease patients. Traditional NLP techniques combined with improvement strategies for specific language and domain proved to be effective for improving system performance. One direction for future work is to explore the effect of such systems from the perspective of patients in a practical setting.http://medinform.jmir.org/2020/4/e17642/
collection DOAJ
language English
format Article
sources DOAJ
author Wang, Zheyu
Huang, Haoce
Cui, Liping
Chen, Juan
An, Jiye
Duan, Huilong
Ge, Huiqing
Deng, Ning
spellingShingle Wang, Zheyu
Huang, Haoce
Cui, Liping
Chen, Juan
An, Jiye
Duan, Huilong
Ge, Huiqing
Deng, Ning
Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
JMIR Medical Informatics
author_facet Wang, Zheyu
Huang, Haoce
Cui, Liping
Chen, Juan
An, Jiye
Duan, Huilong
Ge, Huiqing
Deng, Ning
author_sort Wang, Zheyu
title Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
title_short Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
title_full Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
title_fullStr Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
title_full_unstemmed Using Natural Language Processing Techniques to Provide Personalized Educational Materials for Chronic Disease Patients in China: Development and Assessment of a Knowledge-Based Health Recommender System
title_sort using natural language processing techniques to provide personalized educational materials for chronic disease patients in china: development and assessment of a knowledge-based health recommender system
publisher JMIR Publications
series JMIR Medical Informatics
issn 2291-9694
publishDate 2020-04-01
description BackgroundHealth education emerged as an important intervention for improving the awareness and self-management abilities of chronic disease patients. The development of information technologies has changed the form of patient educational materials from traditional paper materials to electronic materials. To date, the amount of patient educational materials on the internet is tremendous, with variable quality, which makes it hard to identify the most valuable materials by individuals lacking medical backgrounds. ObjectiveThe aim of this study was to develop a health recommender system to provide appropriate educational materials for chronic disease patients in China and evaluate the effect of this system. MethodsA knowledge-based recommender system was implemented using ontology and several natural language processing (NLP) techniques. The development process was divided into 3 stages. In stage 1, an ontology was constructed to describe patient characteristics contained in the data. In stage 2, an algorithm was designed and implemented to generate recommendations based on the ontology. Patient data and educational materials were mapped to the ontology and converted into vectors of the same length, and then recommendations were generated according to similarity between these vectors. In stage 3, the ontology and algorithm were incorporated into an mHealth system for practical use. Keyword extraction algorithms and pretrained word embeddings were used to preprocess educational materials. Three strategies were proposed to improve the performance of keyword extraction. System evaluation was based on a manually assembled test collection for 50 patients and 100 educational documents. Recommendation performance was assessed using the macro precision of top-ranked documents and the overall mean average precision (MAP). ResultsThe constructed ontology contained 40 classes, 31 object properties, 67 data properties, and 32 individuals. A total of 80 SWRL rules were defined to implement the semantic logic of mapping patient original data to the ontology vector space. The recommender system was implemented as a separate Web service connected with patients' smartphones. According to the evaluation results, our system can achieve a macro precision up to 0.970 for the top 1 recommendation and an overall MAP score up to 0.628. ConclusionsThis study demonstrated that a knowledge-based health recommender system has the potential to accurately recommend educational materials to chronic disease patients. Traditional NLP techniques combined with improvement strategies for specific language and domain proved to be effective for improving system performance. One direction for future work is to explore the effect of such systems from the perspective of patients in a practical setting.
url http://medinform.jmir.org/2020/4/e17642/
work_keys_str_mv AT wangzheyu usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT huanghaoce usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT cuiliping usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT chenjuan usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT anjiye usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT duanhuilong usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT gehuiqing usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
AT dengning usingnaturallanguageprocessingtechniquestoprovidepersonalizededucationalmaterialsforchronicdiseasepatientsinchinadevelopmentandassessmentofaknowledgebasedhealthrecommendersystem
_version_ 1721484982633889792