[A machine learning-based trajectory predictive modeling method for manual acupuncture manipulation].

中国针灸 Pub Date : 2025-09-12 Epub Date: 2025-07-25 DOI:10.13703/j.0255-2930.20250117-0001
Jian Kang, Li Li, Shu Wang, Xiaonong Fan, Jie Chen, Jinniu Li, Wenqi Zhang, Yuhe Wei, Ziyi Chen, Jingqi Yang, Jingwen Yang, Chong Su
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引用次数: 0

Abstract

Objective: To propose a machine learning-based method for predicting the trajectories during manual acupuncture manipulation (MAM), aiming to improve the precision and consistency of acupuncture practitioner' operation and provide the real-time suggestions on MAM error correction.

Methods: Computer vision technology was used to analyze the hand micromotion when holding needle during acupuncture, and provide a three-dimensional coordinate description method of the index finger joints of the holding hand. Focusing on the 4 typical motions of MAM, a machine learning-based MAM trajectory predictive model was designed. By integrating the changes of phalangeal joint angle and hand skeletal information of acupuncture practitioner, the motion trajectory of the index finger joint was predicted accurately. Besides, the roles of machine learning-based MAM trajectory predictive model in the skill transmission of acupuncture manipulation were verified by stratified randomized controlled trial.

Results: The performance of MAM trajectory predictive model, based on the long short-term memory network (LSTM), obtained the highest stability and precision, up to 98%. The learning effect was improved when the model applied to the skill transmission of acupuncture manipulation.

Conclusion: The machine learning-based MAM predictive model provides acupuncture practitioner with precise action prediction and feedback. It is valuable and significant for the inheritance and error correction of manual operation of acupuncture.

[一种基于机器学习的针刺手法轨迹预测建模方法]。
目的:提出一种基于机器学习的人工针灸操作轨迹预测方法,旨在提高针灸从业者操作的准确性和一致性,并为人工针灸操作误差校正提供实时建议。方法:采用计算机视觉技术对针刺过程中握针时手部的微运动进行分析,提供握针手食指关节的三维坐标描述方法。针对MAM的4种典型运动,设计了基于机器学习的MAM运动轨迹预测模型。通过综合针灸术者指骨关节角度变化和手部骨骼信息,准确预测食指关节运动轨迹。此外,通过分层随机对照试验验证了基于机器学习的MAM轨迹预测模型在针刺手法技能传递中的作用。结果:基于长短期记忆网络(LSTM)的MAM轨迹预测模型的稳定性和精度最高,可达98%。将该模型应用于针刺手法的技能传递,提高了学习效果。结论:基于机器学习的MAM预测模型为针灸从业者提供了精确的动作预测和反馈。这对针刺手工操作的传承和纠错具有重要的价值和意义。
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来源期刊
自引率
0.00%
发文量
18644
期刊介绍: Chinese Acupuncture and Moxibustion (founded in 1981, monthly) is an authoritative academic journal of acupuncture and moxibustion under the supervision of China Association for Science and Technology and co-sponsored by Chinese Acupuncture and Moxibustion Society and Institute of Acupuncture and Moxibustion of China Academy of Traditional Chinese Medicine. It is recognised as a core journal of Chinese science and technology, a core journal of Chinese language, and is included in the core journals of China Science Citation Database, as well as being included in MEDLINE and other international well-known medical index databases. The journal adheres to the tenet of ‘improving, taking into account the popularity, colourful and realistic’, and provides valuable learning and communication opportunities for the majority of acupuncture and moxibustion clinical and scientific research workers, and plays an important role in the domestic and international publicity and promotion of acupuncture and moxibustion disciplines.
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