4.6 Article

A Novel and Efficient Surface Electromyography Decomposition Algorithm Using Local Spatial Information

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出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2022.3210019

关键词

Electromyography; Electrodes; Muscles; Bioinformatics; Neurons; Correlation; Computational complexity; Motor unit decomposition; multichannel surface EMG; spike detection

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A novel approach using local spatial information is proposed for the accurate and efficient decomposition of surface electromyography (sEMG) signals from forearm muscles. By leveraging the spatial distribution characteristics of motor unit action potentials, low-energy motor units can be easily identified, resulting in a faster and more efficient decomposition process.
Motor unit spike trains (MUSTs) decomposed from surface electromyography (sEMG) have been an emerging solution for neural interfacing, especially for the control of upper limb prosthetics. Accurate and efficient decomposition techniques are essential and desirable. However, most decomposition methods are designed for motor units (MUs) with global maximum of single or large muscle, while in general forearm muscles are usually small and slender with low global energy. Thus, we propose a novel approach using local spatial information towards more accurate and efficient sEMG decomposition of forearm muscles. A fast spatial spike detection method is proposed to replace the time-consuming iteration process of blind source separation (BSS) methods. Here, spatial distribution characteristics of motor unit action potential are leveraged to pre-classify the candidate MUs, and further to create initial MU templates, aiming to avoid repeating convergence to high-energy MUs. The results of both simulated and experimental sEMG signals show that low-energy MUs from small muscles are more easily found compared with conventional BSS algorithm. Specifically, the proposed method can identify more 40% reliable MUs while only 30% consuming time are needed. The outcomes provide a novel solution for more efficient sEMG decomposition, potentially paving the way of MUST-based non-invasive neural interface.

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