Detecting Neuromuscular Disorders Using EMG Signals Based on TQWT Features

Agya Ram Verma, Bhumika Gupta
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引用次数: 9

Abstract

Neuromuscular disorders are characterized by abnormal functioning of muscles and nerves that communicate with the brain, resulting in muscle weakness and ultimately damage to nervous control, for instance amyotrophic lateral sclerosis (ALS) and myopathy (MYO). Diagnosis of these disorders is frequently done by examining ALS, MYO and normal electromyography (EMG) signals. In the present work, an efficient technique that involves wavelet transform using tunable-Q dynamics (TQWT) is proposed in order to identify disorders related to the neuromuscular domain of EMG signals. The EMG signal is decomposed by the TQWT technique into sub-bands, and these sub-bands are used to determine spectral features including spectral flatness, spectral stretch and spectral decrease, and statistical features including kurtosis, mean absolute deviation, and interquartile range. The extracted features are used as inputs into extreme learning machine classifiers in order to identify and analyze EMG signals associated with neuromuscular dysfunction. The results achieved with this technique illustrate a much better classification with regard to neuromuscular disturbance in electromyogram signals when compared with previous methods.

Abstract Image

基于TQWT特征的肌电信号检测神经肌肉疾病
神经肌肉疾病的特征是与大脑交流的肌肉和神经功能异常,导致肌肉无力,并最终损害神经控制,例如肌萎缩性侧索硬化症(ALS)和肌病(MYO)。这些疾病的诊断通常通过检查ALS、MYO和正常肌电图(EMG)信号来完成。在本工作中,提出了一种使用可调谐Q动力学(TQWT)进行小波变换的有效技术,以识别与EMG信号的神经肌肉域相关的疾病。通过TQWT技术将EMG信号分解为子带,并且这些子带用于确定光谱特征,包括光谱平坦性、光谱拉伸和光谱减小,以及统计特征,包括峰度、平均绝对偏差和四分位间距。提取的特征被用作极限学习机器分类器的输入,以便识别和分析与神经肌肉功能障碍相关的EMG信号。与以前的方法相比,用这种技术获得的结果说明了对肌电图信号中的神经肌肉紊乱的更好分类。
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