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Publishing Language: Chinese

Research on machine-learning quantitative evaluative model of manual acupuncture manipulation based on three-dimensional motion tracking technology

Jiayao WANBinggan WANGTianai HUANGFan WANGWenchao TANG( )
School of Acupuncture-Moxibustion and Tuina, Shanghai University of TCM, Shanghai 201203, China
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Abstract

Objective

To develop an objective quantitative evaluative model of manual acupuncture manipulation (MAM) using three-dimensional motion tracking technology and machine learning, so as to provide a new approach to the study on acupuncture and moxibustion education and manipulation standardization.

Methods

A total of 120 undergraduate students in the major of acupuncture-moxibustion and tuina were recruited. The Simi Motion Ver.8.5 motion tracking system was used to collect the data of three types of MAM, balanced reinforcing and reducing by twisting, reinforcing technique by twisting and reducing technique by twisting. Eight quantitative parameters covering movement performance and stability were established. With 5 types of machine learning algorithms (logistic regression, random forest, support vector machine, K-nearest neighbor, and decision tree) adopted, the evaluative model was constructed, and the feature importance analyzed.

Results

In the evaluation of different types of MAM, the support vector machine presented the best for the effects of the balanced reinforcing and reducing by twisting, and the reducing by twisting (accuracy rates were both 0.88); and the logistic regression algorithm showed the optimal performance in evaluating the reinforcing by twisting (1.00 of accuracy rate). Feature importance analysis revealed that twisting velocity was the dominant parameter for evaluating the balanced reinforcing-reducing manipulation. The reinforcing and reducing of acupuncture techniques were more dependent on the left-hand twisting parameters and comprehensive performances, respectively.

Conclusion

The objective evaluative model of MAM based on three-dimensional motion tracking technology and machine learning demonstrates a reliable evaluative performance, providing a new technical approach to standardized assessment in acupuncture and moxibustion education.

References

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Chinese Acupuncture&Moxibustion
Pages 1201-1208

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Cite this article:
WAN J, WANG B, HUANG T, et al. Research on machine-learning quantitative evaluative model of manual acupuncture manipulation based on three-dimensional motion tracking technology. Chinese Acupuncture&Moxibustion, 2025, 45(9): 1201-1208. https://doi.org/10.13703/j.0255-2930.20241209-0002

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Received: 09 December 2024
Published: 12 September 2025
© The Editorial Office of CHINESE ACUPUNCTURE & MOXIBUSTION