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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Modulation Effect of Acupuncture on Functional Brain Networks and Classification of Its Manipulation With EEG Signals
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Modulation Effect of Acupuncture on Functional Brain Networks and Classification of Its Manipulation With EEG Signals

机译:针刺对功能性脑网络的调节作用及其对脑电信号的分类

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摘要

Acupuncture manipulation is the key of Chinese medicine acupuncture therapy. In clinical practice, different acupuncture manipulations are required to achieve different therapeutic effects, which means it is crucial to distinguish different acupuncture manipulations. In this paper, we proposed a classification framework for different acupuncture manipulations, which employed the graph theory and machine learning method. Multichannel EEG signals evoked by acupuncture at "Zusanli" acupoint were recorded from healthy humans by two acupuncture manipulations: twirling-rotating (TR) and lifting-thrusting (LT). Phase locking value was used to estimate the phase synchronization of pair-wise EEG channels. It was found that acupunctured by TR manipulation exhibit significantly higher synchronization degree than acupunctured by LT manipulation. With the construction of functional brain network, the topological features of graph theory were extracted. Taken the network features as inputs, machine learning classifiers were established to classify acupuncture manipulations. The highest accuracy can achieve 92.14% with support vector machine. By further optimizing the network features utilized in machine learning classifiers, it was found that the combination of node betweenness and small world network index is the most effective factor for acupuncture manipulations classification. These findings suggested that our approach provides new ideas for automatically identify acupuncture manipulations from the perspective of functional brain networks and machine learning methods.
机译:针灸操纵是中医针灸治疗的关键。在临床实践中,需要不同的针灸操作来达到不同的治疗效果,这意味着区分不同的针灸操作至关重要。在本文中,我们提出了一种基于图论和机器学习方法的针对不同针刺操作的分类框架。通过两种针刺操作:旋转-旋转(TR)和推力-推力(LT),从健康的人类中记录了针刺“祖三里”穴位所诱发的多通道EEG信号。锁相值用于估计成对EEG通道的相位同步。结果发现,TR针刺疗法比LT针刺疗法具有更高的同步度。通过功能脑网络的构建,提取了图论的拓扑特征。以网络功能为输入,建立了机器学习分类器以对针灸操作进行分类。支持向量机的最高精度可以达到92.14%。通过进一步优化机器学习分类器中使用的网络功能,发现节点之间的联系和小世界网络索引的组合是针刺操作分类的最有效因素。这些发现表明,我们的方法为从功能性大脑网络和机器学习方法的角度自动识别针灸操作提供了新思路。

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