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一种用于功能性电刺激期间表面肌电信号处理的刺激伪迹去除技术。

A Stimulus Artifact Removal Technique for SEMG Signal Processing During Functional Electrical Stimulation.

作者信息

Qiu Shuang, Feng Jing, Xu Rui, Xu Jiapeng, Wang Kun, He Feng, Qi Hongzhi, Zhao Xin, Zhou Peng, Zhang Lixin, Ming Dong

出版信息

IEEE Trans Biomed Eng. 2015 Aug;62(8):1959-68. doi: 10.1109/TBME.2015.2407834. Epub 2015 Feb 27.

Abstract

GOAL

The purpose of this study was to design a method for extracting the volitional EMG from recorded surface electromyography (EMG), contaminated by functional electrical stimulation (FES) artifact.

METHODS

Considering that the FES artifact emerges periodically with rather large amplitude in nonstationary EMG, we designed an adaptive-matched filter (AMF) via genetic algorithm (GA) optimization. Both the simulated and real data from seven subjects were processed, using the GA-AMF filter and comb filter, respectively. To test the filtering effect on the EMG, contaminated with FES artifact of different current intensities, the contaminated EMG was simulated by combining the simulation artifact and clean EMG with various FES artifacts to clean EMG ratios.

RESULTS

The results show that, in simulation test, compared to the EMG filtered by comb filter, the simulated EMG (p < 0.05), filtered by using GA-AMF, had significantly higher correlation coefficient, higher signal to noise ratio, and lower normalized root mean square error, whereas the real EMG (p < 0.05), filtered by using GA-AMF had higher power reduction than that filtered by using comb filter. The results indicate that GA-AMF can effectively remove FES artifact from the EMG of the stimulated muscle and its adjacent muscle, and the GA-AMF filter performed better than did the comb filter.

CONCLUSION

All these results demonstrate that the GA-AMF filter is capable of extracting volitional EMG from the stimulated muscle and adjacent muscles.

SIGNIFICANCE

GA-AMF could provide technical support for improving EMG feedback control of FES rehabilitation system.

摘要

目的

本研究旨在设计一种从受功能性电刺激(FES)伪迹污染的记录表面肌电图(EMG)中提取自主肌电图的方法。

方法

考虑到FES伪迹在非平稳肌电图中以较大幅度周期性出现,我们通过遗传算法(GA)优化设计了一种自适应匹配滤波器(AMF)。分别使用GA - AMF滤波器和梳状滤波器对来自7名受试者的模拟数据和真实数据进行处理。为了测试对受不同电流强度FES伪迹污染的肌电图的滤波效果,通过将模拟伪迹与清洁肌电图以不同的FES伪迹与清洁肌电图比率相结合来模拟受污染的肌电图。

结果

结果表明,在模拟测试中,与经梳状滤波器滤波的肌电图相比,经GA - AMF滤波的模拟肌电图(p < 0.05)具有显著更高的相关系数、更高的信噪比和更低的归一化均方根误差,而经GA - AMF滤波的真实肌电图(p < 0.05)比经梳状滤波器滤波的肌电图具有更高的功率降低。结果表明GA - AMF可以有效地从受刺激肌肉及其相邻肌肉的肌电图中去除FES伪迹,并且GA - AMF滤波器的性能优于梳状滤波器。

结论

所有这些结果表明GA - AMF滤波器能够从受刺激肌肉和相邻肌肉中提取自主肌电图。

意义

GA - AMF可为改善FES康复系统的肌电图反馈控制提供技术支持。

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