Abstract

Acupuncture can regulate the cognition of brain system, and different manipulations are the keys of realizing the curative effect of acupuncture on human body. Therefore, it is crucial to distinguish and monitor the different acupuncture manipulations automatically. In this brief, in order to enhance the robustness of electroencephalogram (EEG) detection against noise and interference, we propose an acupuncture manipulation detecting framework based on supervised ISOMAP and recurrent neural network (RNN). Primarily, the low-dimensional embedding neural manifold of brain dynamical functional network is extracted via the reconstructed geodetic distance. It is found that there exhibits stronger acupuncture-specific reconfiguration of brain network. Besides, we show that the distance travel along this manifold correlates strongly with changes of acupuncture manipulations. The low-dimensional brain topological structure of all subjects shows crescent-like feature when acupuncturing at Zusanli acupoints, and fixed-points are varying under diverse manipulation methods. Moreover, Takagi-Sugeno-Kang (TSK) classifier is adopted to identify acupuncture manipulations according to the nonlinear characteristics of neural manifolds. Compared with different classifier, TSK can further improve the accuracy of manipulation identification at 96.71%. The results demonstrate the effectiveness of our model in detecting the acupuncture manipulations, which may provide neural biomarkers for acupuncture physicians.

Highlights

  • Acupuncture is an essential treatment of traditional Chinese medicine, and its efficacy on various diseases has been confirmed by long-term clinical practice all over the world [13]

  • The controllability of brain network under different acupuncture manipulations during cognitive process is investigated via dynamical functional network analysis

  • In order to enhance the robustness of EEG detection against noise and interference, we propose an acupuncture manipulation detection method based on the combination of I-Isometric Feature Mapping (ISOMAP) and recurrent neural network (RNN)

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Summary

Introduction

Acupuncture is an essential treatment of traditional Chinese medicine, and its efficacy on various diseases has been confirmed by long-term clinical practice all over the world [13]. In the theory of traditional Chinese medicine, the basic role of acupuncture is to modulate the brain system, which plays an important role in the treatment of insomnia, stroke, and Alzheimer’s disease [4,5]. Apart from the functional treatment, acupuncture has multi-factor intervention, such as different manipulation methods: consists of twirling-rotating (TR) and lifting-thrusting (LT) of the needle. These methods can improve the stimulating effect of acupuncture on acupoints during the treatment procedure of acupuncture [6,7]. It is urgent to develop an automatic acupuncture manipulations detection system, which can provide real-time manipulations detection

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