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Characterization of hidden rules linking symptoms and selection of acupoint using an artificial neural network model

Authors
Jung, Won-MoPark, In-SooLee, Ye-SeulKim, Chang-EopLee, HyangsookHahm, Dae-HyunPark, Hi-JoonJang, Bo-HyoungChae, Younbyoung
Issue Date
Feb-2019
Publisher
SPRINGER
Keywords
acupuncture; indication; neural network; pattern identification; prediction
Citation
FRONTIERS OF MEDICINE, v.13, no.1, pp.112 - 120
Journal Title
FRONTIERS OF MEDICINE
Volume
13
Number
1
Start Page
112
End Page
120
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/1936
DOI
10.1007/s11684-017-0582-z
ISSN
2095-0217
Abstract
Comprehension of the medical diagnoses of doctors and treatment of diseases is important to understand the underlying principle in selecting appropriate acupoints. The pattern recognition process that pertains to symptoms and diseases and informs acupuncture treatment in a clinical setting was explored. A total of 232 clinical records were collected using a Charting Language program. The relationship between symptom information and selected acupoints was trained using an artificial neural network (ANN). A total of 11 hidden nodes with the highest average precision score were selected through a tenfold cross-validation. Our ANN model could predict the selected acupoints based on symptom and disease information with an average precision score of 0.865 (precision, 0.911; recall, 0.811). This model is a useful tool for diagnostic classification or pattern recognition and for the prediction and modeling of acupuncture treatment based on clinical data obtained in a real-world setting. The relationship between symptoms and selected acupoints could be systematically characterized through knowledge discovery processes, such as pattern identification.
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Lee, Ye-Seul
College of Korean Medicine (Premedical course of Oriental Medicine)
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