Principal Component Analysis of Electromyographic Signals: An Overview

G. Bosco
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引用次数: 25

Abstract

Surface electromyography (EMG) is a widely used, straight-forward, technique which allows to investigate patterns of neuromuscular activation. In contrast to the relative simplicity of the recording technique, the analysis of the derived electric signals may be rather sophisticated. The last decade, in particular, has been characterized by the development of a several quantitative approaches to the analysis of the EMG signals. The common principle underlying these analyses is the decomposition of the EMG signal waveforms in a small set of basis waveforms that capture most of the relevant features of the source EMGs and define a low-dimensional space on which the original EMG activation patterns can be represented as vectors. This could be particularly useful when the aim is to classify quantitatively EMG patterns recorded across muscles or from the same muscle across several motor tasks. Within this framework, this article will be focused on one of these approaches, the Principal Component Analysis, which has a strong potential for large scale diffusion both in research and clinical settings because of its conceptual simplicity and high practicality. The intent is to provide an overview/tutorial of the PCA applied to surface EMG signals, first by outlining the main methodological aspects and, then, by drawing examples from the movement control literature where PCA has been used effectively to gain insight on the neural processes that may underlie the control of common actions of our motor repertoire such as arm pointing and gait.
肌电信号的主成分分析综述
表面肌电图(EMG)是一种广泛使用的、直接的技术,它允许研究神经肌肉激活的模式。与相对简单的记录技术相比,对衍生电信号的分析可能相当复杂。特别是在过去的十年里,已经发展了几种定量方法来分析肌电图信号。这些分析背后的共同原则是将肌电信号波形分解为一小组基本波形,这些基本波形捕获了源肌电信号的大部分相关特征,并定义了一个低维空间,在这个空间上,原始肌电信号激活模式可以被表示为向量。当目的是对跨肌肉记录的肌电图模式进行定量分类或从同一肌肉在几个运动任务中记录的肌电图模式时,这可能特别有用。在此框架内,本文将重点关注其中一种方法,即主成分分析,由于其概念简单和高度实用性,在研究和临床环境中具有大规模推广的强大潜力。本文的目的是提供一个PCA应用于表面肌电信号的概述/教程,首先概述了主要的方法方面,然后从运动控制文献中提取例子,在这些文献中,PCA被有效地用于深入了解神经过程,这些神经过程可能是控制我们的运动技能(如手臂指向和步态)的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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