A Traditional Chinese Medicine Syndrome Classification Model Based on Cross-Feature Generation by Convolution Neural Network: Model Development and Validation.

TCM cross-FGCNN intelligent syndrome differentiation

Journal

JMIR medical informatics
ISSN: 2291-9694
Titre abrégé: JMIR Med Inform
Pays: Canada
ID NLM: 101645109

Informations de publication

Date de publication:
06 Apr 2022
Historique:
received: 01 04 2021
accepted: 13 02 2022
revised: 17 12 2021
entrez: 6 4 2022
pubmed: 7 4 2022
medline: 7 4 2022
Statut: epublish

Résumé

Nowadays, intelligent medicine is gaining widespread attention, and great progress has been made in Western medicine with the help of artificial intelligence to assist in decision making. Compared with Western medicine, traditional Chinese medicine (TCM) involves selecting the specific treatment method, prescription, and medication based on the dialectical results of each patient's symptoms. For this reason, the development of a TCM-assisted decision-making system has lagged. Treatment based on syndrome differentiation is the core of TCM treatment; TCM doctors can dialectically classify diseases according to patients' symptoms and optimize treatment in time. Therefore, the essence of a TCM-assisted decision-making system is a TCM intelligent, dialectical algorithm. Symptoms stored in electronic medical records are mostly associated with patients' diseases; however, symptoms of TCM are mostly subjectively identified. In general electronic medical records, there are many missing values. TCM medical records, in which symptoms tend to cause high-dimensional sparse data, reduce algorithm accuracy. This study aims to construct an algorithm model compatible for the multidimensional, highly sparse, and multiclassification task of TCM syndrome differentiation, so that it can be effectively applied to the intelligent dialectic of different diseases. The relevant terms in electronic medical records were standardized with respect to symptoms and evidence-based criteria of TCM. We structuralized case data based on the classification of different symptoms and physical signs according to the 4 diagnostic examinations in TCM diagnosis. A novel cross-feature generation by convolution neural network model performed evidence-based recommendations based on the input embedded, structured medical record data. The data set included 5273 real dysmenorrhea cases from the Sichuan TCM big data management platform and the Chinese literature database, which were embedded into 60 fields after being structured and standardized. The training set and test set were randomly constructed in a ratio of 3:1. For the classification of different syndrome types, compared with 6 traditional, intelligent dialectical models and 3 click-through-rate models, the new model showed a good generalization ability and good classification effect. The comprehensive accuracy rate reached 96.21%. The main contribution of this study is the construction of a new intelligent dialectical model combining the characteristics of TCM by treating intelligent dialectics as a high-dimensional sparse vector classification task. Owing to the standardization of the input symptoms, all the common symptoms of TCM are covered, and the model can differentiate the symptoms with a variety of missing values. Therefore, with the continuous improvement of disease data sets, this model has the potential to be applied to the dialectical classification of different diseases in TCM.

Sections du résumé

BACKGROUND BACKGROUND
Nowadays, intelligent medicine is gaining widespread attention, and great progress has been made in Western medicine with the help of artificial intelligence to assist in decision making. Compared with Western medicine, traditional Chinese medicine (TCM) involves selecting the specific treatment method, prescription, and medication based on the dialectical results of each patient's symptoms. For this reason, the development of a TCM-assisted decision-making system has lagged. Treatment based on syndrome differentiation is the core of TCM treatment; TCM doctors can dialectically classify diseases according to patients' symptoms and optimize treatment in time. Therefore, the essence of a TCM-assisted decision-making system is a TCM intelligent, dialectical algorithm. Symptoms stored in electronic medical records are mostly associated with patients' diseases; however, symptoms of TCM are mostly subjectively identified. In general electronic medical records, there are many missing values. TCM medical records, in which symptoms tend to cause high-dimensional sparse data, reduce algorithm accuracy.
OBJECTIVE OBJECTIVE
This study aims to construct an algorithm model compatible for the multidimensional, highly sparse, and multiclassification task of TCM syndrome differentiation, so that it can be effectively applied to the intelligent dialectic of different diseases.
METHODS METHODS
The relevant terms in electronic medical records were standardized with respect to symptoms and evidence-based criteria of TCM. We structuralized case data based on the classification of different symptoms and physical signs according to the 4 diagnostic examinations in TCM diagnosis. A novel cross-feature generation by convolution neural network model performed evidence-based recommendations based on the input embedded, structured medical record data.
RESULTS RESULTS
The data set included 5273 real dysmenorrhea cases from the Sichuan TCM big data management platform and the Chinese literature database, which were embedded into 60 fields after being structured and standardized. The training set and test set were randomly constructed in a ratio of 3:1. For the classification of different syndrome types, compared with 6 traditional, intelligent dialectical models and 3 click-through-rate models, the new model showed a good generalization ability and good classification effect. The comprehensive accuracy rate reached 96.21%.
CONCLUSIONS CONCLUSIONS
The main contribution of this study is the construction of a new intelligent dialectical model combining the characteristics of TCM by treating intelligent dialectics as a high-dimensional sparse vector classification task. Owing to the standardization of the input symptoms, all the common symptoms of TCM are covered, and the model can differentiate the symptoms with a variety of missing values. Therefore, with the continuous improvement of disease data sets, this model has the potential to be applied to the dialectical classification of different diseases in TCM.

Identifiants

pubmed: 35384854
pii: v10i4e29290
doi: 10.2196/29290
pmc: PMC9021949
doi:

Types de publication

Journal Article

Langues

eng

Pagination

e29290

Informations de copyright

©Zonghai Huang, Jiaqing Miao, Ju Chen, Yanmei Zhong, Simin Yang, Yiyi Ma, Chuanbiao Wen. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 06.04.2022.

Références

Int J Environ Res Public Health. 2020 Sep 13;17(18):
pubmed: 32933209
Ann Palliat Med. 2020 Sep;9(5):3288-3292
pubmed: 33065784
Front Pharmacol. 2019 Feb 21;10:123
pubmed: 30846939
Evid Based Complement Alternat Med. 2020 Dec 08;2020:3951741
pubmed: 33381200
Diabetes Obes Metab. 2019 Aug;21(8):1801-1816
pubmed: 31050124
BMC Womens Health. 2021 Nov 8;21(1):392
pubmed: 34749716
Epidemiol Rev. 2014;36:104-13
pubmed: 24284871
Artif Intell Med. 2021 Aug;118:102134
pubmed: 34412850
Front Pharmacol. 2020 May 08;11:670
pubmed: 32457636
Biomed Pharmacother. 2021 May;137:111367
pubmed: 33588265
Int J Data Min Bioinform. 2011;5(4):369-82
pubmed: 21954670
Eur J Obstet Gynecol Reprod Biol. 2020 Mar;246:40-44
pubmed: 31931396
J Ethnopharmacol. 2016 Jun 20;186:234-243
pubmed: 27060631
Evid Based Complement Alternat Med. 2021 Sep 06;2021:5528550
pubmed: 34531918
Nature. 2011 Dec 21;480(7378):S82-3
pubmed: 22190085
Evid Based Complement Alternat Med. 2021 Jun 04;2021:5550332
pubmed: 34188688
J Proteome Res. 2019 May 3;18(5):1994-2003
pubmed: 30907085
JMIR Med Inform. 2020 Jun 16;8(6):e17821
pubmed: 32543445
Evid Based Complement Alternat Med. 2016;2016:3467067
pubmed: 27242909
Evid Based Complement Alternat Med. 2021 Jun 10;2021:5513748
pubmed: 34211562
J Tradit Chin Med. 2020 Aug;40(4):690-702
pubmed: 32744037
Nature. 2018 Sep;561(7724):448-450
pubmed: 30258149

Auteurs

Zonghai Huang (Z)

College of Medical Information Engineering, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Jiaqing Miao (J)

School of Mathematics, Southwest Minzu University, Chengdu, China.

Ju Chen (J)

College of Medical Information Engineering, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Yanmei Zhong (Y)

College of Medical Information Engineering, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Simin Yang (S)

College of Acupuncture-Moxibustion and Tuina, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Yiyi Ma (Y)

College of Medical Information Engineering, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Chuanbiao Wen (C)

College of Medical Information Engineering, Chengdu University of Traditional Chinese Medicine, Chengdu, China.

Classifications MeSH