Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph

Background. Chinese patent medicines are increasingly used clinically, and the prescription drug monitoring program is an effective tool to promote drug safety and maintain health. Methods. We constructed a prescription drug monitoring program for Chinese patent medicines based on knowledge graphs....

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Main Authors: Wangping Xiong, Jun Cao, Xian Zhou, Jianqiang Du, Bin Nie, Zhijun Zeng, Tianci Li
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Evidence-Based Complementary and Alternative Medicine
Online Access:http://dx.doi.org/10.1155/2021/9970063
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spelling doaj-86b2f648a80544a4a6f71b631a9218072021-07-26T00:35:19ZengHindawi LimitedEvidence-Based Complementary and Alternative Medicine1741-42882021-01-01202110.1155/2021/9970063Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge GraphWangping Xiong0Jun Cao1Xian Zhou2Jianqiang Du3Bin Nie4Zhijun Zeng5Tianci Li6School of ComputerSchool of ComputerSchool of ComputerSchool of ComputerSchool of ComputerJiangxi Province Key Laboratory of TCM EtiopathogenisisSchool of ComputerBackground. Chinese patent medicines are increasingly used clinically, and the prescription drug monitoring program is an effective tool to promote drug safety and maintain health. Methods. We constructed a prescription drug monitoring program for Chinese patent medicines based on knowledge graphs. First, we extracted the key information of Chinese patent medicines, diseases, and symptoms from the domain-specific corpus by the information extraction. Second, based on the extracted entities and relationships, a knowledge graph was constructed to form a rule base for the monitoring of data. Then, the named entity recognition model extracted the key information from the electronic medical record to be monitored and matched the knowledge graph to realize the monitoring of the Chinese patent medicines in the prescription. Results. Named entity recognition based on the pretrained model achieved an F1 value of 83.3% on the Chinese patent medicines dataset. On the basis of entity recognition technology and knowledge graph, we implemented a prescription drug monitoring program for Chinese patent medicines. The accuracy rate of combined medication monitoring of three or more drugs of the program increased from 68% to 86.4%. The accuracy rate of drug control monitoring increased from 70% to 97%. The response time for conflicting prescriptions with two drugs was shortened from 1.3S to 0.8S. The response time for conflicting prescriptions with three or more drugs was shortened from 5.2S to 1.4S. Conclusions. The program constructed in this study can respond quickly and improve the efficiency of monitoring prescriptions. It is of great significance to ensure the safety of patients’ medication.http://dx.doi.org/10.1155/2021/9970063
collection DOAJ
language English
format Article
sources DOAJ
author Wangping Xiong
Jun Cao
Xian Zhou
Jianqiang Du
Bin Nie
Zhijun Zeng
Tianci Li
spellingShingle Wangping Xiong
Jun Cao
Xian Zhou
Jianqiang Du
Bin Nie
Zhijun Zeng
Tianci Li
Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
Evidence-Based Complementary and Alternative Medicine
author_facet Wangping Xiong
Jun Cao
Xian Zhou
Jianqiang Du
Bin Nie
Zhijun Zeng
Tianci Li
author_sort Wangping Xiong
title Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
title_short Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
title_full Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
title_fullStr Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
title_full_unstemmed Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph
title_sort design and evaluation of a prescription drug monitoring program for chinese patent medicine based on knowledge graph
publisher Hindawi Limited
series Evidence-Based Complementary and Alternative Medicine
issn 1741-4288
publishDate 2021-01-01
description Background. Chinese patent medicines are increasingly used clinically, and the prescription drug monitoring program is an effective tool to promote drug safety and maintain health. Methods. We constructed a prescription drug monitoring program for Chinese patent medicines based on knowledge graphs. First, we extracted the key information of Chinese patent medicines, diseases, and symptoms from the domain-specific corpus by the information extraction. Second, based on the extracted entities and relationships, a knowledge graph was constructed to form a rule base for the monitoring of data. Then, the named entity recognition model extracted the key information from the electronic medical record to be monitored and matched the knowledge graph to realize the monitoring of the Chinese patent medicines in the prescription. Results. Named entity recognition based on the pretrained model achieved an F1 value of 83.3% on the Chinese patent medicines dataset. On the basis of entity recognition technology and knowledge graph, we implemented a prescription drug monitoring program for Chinese patent medicines. The accuracy rate of combined medication monitoring of three or more drugs of the program increased from 68% to 86.4%. The accuracy rate of drug control monitoring increased from 70% to 97%. The response time for conflicting prescriptions with two drugs was shortened from 1.3S to 0.8S. The response time for conflicting prescriptions with three or more drugs was shortened from 5.2S to 1.4S. Conclusions. The program constructed in this study can respond quickly and improve the efficiency of monitoring prescriptions. It is of great significance to ensure the safety of patients’ medication.
url http://dx.doi.org/10.1155/2021/9970063
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