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一种基于表面肌电图-脑电图信号组合的上肢截肢者运动分类策略。

A motion-classification strategy based on sEMG-EEG signal combination for upper-limb amputees.

作者信息

Li Xiangxin, Samuel Oluwarotimi Williams, Zhang Xu, Wang Hui, Fang Peng, Li Guanglin

机构信息

Chinese Academy of Sciences (CAS) Key Laboratory of Human-Machine Intelligence-Synergy Systems, Shenzhen Institutes of Advanced Technology, Shenzhen, 518055, China.

Shenzhen College of Advanced Technology, University of Chinese Academy of Sciences, Shenzhen, 518055, China.

出版信息

J Neuroeng Rehabil. 2017 Jan 7;14(1):2. doi: 10.1186/s12984-016-0212-z.

Abstract

BACKGROUND

Most of the modern motorized prostheses are controlled with the surface electromyography (sEMG) recorded on the residual muscles of amputated limbs. However, the residual muscles are usually limited, especially after above-elbow amputations, which would not provide enough sEMG for the control of prostheses with multiple degrees of freedom. Signal fusion is a possible approach to solve the problem of insufficient control commands, where some non-EMG signals are combined with sEMG signals to provide sufficient information for motion intension decoding. In this study, a motion-classification method that combines sEMG and electroencephalography (EEG) signals were proposed and investigated, in order to improve the control performance of upper-limb prostheses.

METHODS

Four transhumeral amputees without any form of neurological disease were recruited in the experiments. Five motion classes including hand-open, hand-close, wrist-pronation, wrist-supination, and no-movement were specified. During the motion performances, sEMG and EEG signals were simultaneously acquired from the skin surface and scalp of the amputees, respectively. The two types of signals were independently preprocessed and then combined as a parallel control input. Four time-domain features were extracted and fed into a classifier trained by the Linear Discriminant Analysis (LDA) algorithm for motion recognition. In addition, channel selections were performed by using the Sequential Forward Selection (SFS) algorithm to optimize the performance of the proposed method.

RESULTS

The classification performance achieved by the fusion of sEMG and EEG signals was significantly better than that obtained by single signal source of either sEMG or EEG. An increment of more than 14% in classification accuracy was achieved when using a combination of 32-channel sEMG and 64-channel EEG. Furthermore, based on the SFS algorithm, two optimized electrode arrangements (10-channel sEMG + 10-channel EEG, 10-channel sEMG + 20-channel EEG) were obtained with classification accuracies of 84.2 and 87.0%, respectively, which were about 7.2 and 10% higher than the accuracy by using only 32-channel sEMG input.

CONCLUSIONS

This study demonstrated the feasibility of fusing sEMG and EEG signals towards improving motion classification accuracy for above-elbow amputees, which might enhance the control performances of multifunctional myoelectric prostheses in clinical application.

TRIAL REGISTRATION

The study was approved by the ethics committee of Institutional Review Board of Shenzhen Institutes of Advanced Technology, and the reference number is SIAT-IRB-150515-H0077.

摘要

背景

大多数现代电动假肢是通过记录在截肢肢体残余肌肉上的表面肌电图(sEMG)进行控制的。然而,残余肌肉通常有限,尤其是在肘部以上截肢后,这无法为控制具有多个自由度的假肢提供足够的sEMG信号。信号融合是解决控制命令不足问题的一种可能方法,即一些非肌电信号与sEMG信号相结合,为运动意图解码提供足够的信息。在本研究中,提出并研究了一种结合sEMG和脑电图(EEG)信号的运动分类方法,以提高上肢假肢的控制性能。

方法

实验招募了四名无任何形式神经疾病的经肱骨截肢者。指定了五个运动类别,包括手张开、手闭合、手腕旋前、手腕旋后和无动作。在运动过程中,分别从截肢者的皮肤表面和头皮同时采集sEMG和EEG信号。对这两种信号进行独立预处理,然后作为并行控制输入进行组合。提取四个时域特征,并将其输入到通过线性判别分析(LDA)算法训练的分类器中进行运动识别。此外,使用顺序前向选择(SFS)算法进行通道选择,以优化所提出方法的性能。

结果

sEMG和EEG信号融合实现的分类性能明显优于单独使用sEMG或EEG单一信号源获得的性能。当使用32通道sEMG和64通道EEG的组合时,分类准确率提高了14%以上。此外,基于SFS算法,获得了两种优化的电极布置(10通道sEMG + 10通道EEG,10通道sEMG + 20通道EEG),分类准确率分别为84.2%和87.0%,比仅使用32通道sEMG输入的准确率高约7.2%和10%。

结论

本研究证明了融合sEMG和EEG信号以提高肘部以上截肢者运动分类准确率的可行性,这可能会增强多功能肌电假肢在临床应用中的控制性能。

试验注册

本研究经深圳先进技术研究院机构审查委员会伦理委员会批准,参考编号为SIAT-IRB-150515-H0077。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ab8/5219671/3d9a727f581e/12984_2016_212_Fig1_HTML.jpg

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