Department of Mechanical Engineering, Université Laval, Québec, QC G1V 0A6, Canada.
Centre for Interdisciplinary Research in Rehabilitation and Social Integration, CIUSSS de la Capitale-Nationale, Québec, QC G1M 2S8, Canada.
Sensors (Basel). 2023 Mar 8;23(6):2927. doi: 10.3390/s23062927.
Electromyography (EMG) is gaining importance in many research and clinical applications, including muscle fatigue detection, control of robotic mechanisms and prostheses, clinical diagnosis of neuromuscular diseases and quantification of force. However, EMG signals can be contaminated by various types of noise, interference and artifacts, leading to potential data misinterpretation. Even assuming best practices, the acquired signal may still contain contaminants. The aim of this paper is to review methods employed to reduce the contamination of single channel EMG signals. Specifically, we focus on methods which enable a full reconstruction of the EMG signal without loss of information. This includes subtraction methods used in the time domain, denoising methods performed after the signal decomposition and hybrid approaches that combine multiple methods. Finally, this paper provides a discussion on the suitability of the individual methods based on the type of contaminant(s) present in the signal and the specific requirements of the application.
肌电图(EMG)在许多研究和临床应用中变得越来越重要,包括肌肉疲劳检测、机器人机制和假肢的控制、神经肌肉疾病的临床诊断以及力量的量化。然而,EMG 信号可能会受到各种类型的噪声、干扰和伪影的污染,从而导致潜在的数据误读。即使假设采用了最佳实践,所获得的信号仍然可能包含污染物。本文的目的是回顾用于减少单通道 EMG 信号污染的方法。具体来说,我们专注于能够在不丢失信息的情况下完全重建 EMG 信号的方法。这包括在时域中使用的减法方法、在信号分解后执行的去噪方法以及结合多种方法的混合方法。最后,本文根据信号中存在的污染物类型和应用的特定要求,讨论了各个方法的适用性。