ResNet for recognition of Qi-deficiency constitution and balanced constitution based on voice

According to traditional Chinese medicine theory, a Qi-deficiency constitution is characterized by a lower voice frequency, shortness of breath, reluctance to speak, an introverted personality, emotional instability, and timidity. People with Qi-deficiency constitution are prone to repeated colds an...

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Published inFrontiers in psychology Vol. 13; p. 1043955
Main Authors Lai, Tong, Guan, Yutong, Men, Shaoyang, Shang, Hongcai, Zhang, Honglai
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 05.12.2022
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Summary:According to traditional Chinese medicine theory, a Qi-deficiency constitution is characterized by a lower voice frequency, shortness of breath, reluctance to speak, an introverted personality, emotional instability, and timidity. People with Qi-deficiency constitution are prone to repeated colds and have a higher probability of chronic diseases and depression. However, a person with a Balanced constitution is relatively healthy in all physical and psychological aspects. At present, the determination of whether one has a Qi-deficiency constitution or a Balanced constitution are mostly based on a scale, which is easily affected by subjective factors. As an objective method of diagnosis, the human voice is worthy of research. Therefore, the purpose of this study is to improve the objectivity of determining Qi-deficiency constitution and Balanced constitution through one's voice and to explore the feasibility of deep learning in TCM constitution recognition. The voices of 48 subjects were collected, and the constitution classification results were obtained from the classification and determination of TCM constitutions. Then, the constitution was classified according to the ResNet residual neural network model. A total of 720 voice data points were collected from 48 subjects. The classification accuracy rate of the Qi-deficiency constitution and Balanced constitution was 81.5% according to ResNet. The loss values of the model training and test sets gradually decreased to 0, while the ACC values of the training and test sets tended to increase, and the ACC values of the training set approached 1. The ROC curve shows an AUC value of 0.85. The Qi-deficiency constitution and Balanced constitution determination method based on the ResNet residual neural network model proposed in this study can improve the efficiency of constitution recognition and provide decision support for clinical practice.
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Reviewed by: Lang He, Xi’an University of Post and Telecommunications, China; Serap Aydin, Hacettepe University, Turkey
Edited by: Shiqing Zhang, Taizhou University, China
This article was submitted to Emotion Science, a section of the journal Frontiers in Psychology
ISSN:1664-1078
1664-1078
DOI:10.3389/fpsyg.2022.1043955