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Neuromuscular disease classification based on discrete wavelet transform of dominant motor unit action potential of EMG signal

机译:基于离散小波变换的肌电信号主要运动单位动作电位的神经肌肉疾病分类

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Electromyogram (EMG) is a recording of the electrical activity of skeletal muscles. These signals are used in the medical field for diagnosis of various diseases. In this paper neuromuscular diseases are classified by using discrete wavelet transform. Here dominant motor unit action potentials are extracted from the EMG signals via template matching based decomposition method. Apart from considering all motor unit action potentials, dominant motor unit action potential is considered for disease classification. Because all MUAPs are not uniquely represents a class. Therefore, dominant MUAP based on an energy criterion is proposed for feature extraction. Then statistical features are extracted from dominant MUAP by decomposing it to produce wavelet coefficients. Finally K-nearest neighbor classifier (KNN) is used to classify neuromuscular diseases.
机译:肌电图(EMG)是骨骼肌电活动的记录。这些信号在医学领域用于诊断各种疾病。本文利用离散小波变换对神经肌肉疾病进行分类。在这里,通过基于模板匹配的分解方法从EMG信号中提取主要的电机单位动作电位。除了考虑所有运动单位动作电位之外,主要的运动单位动作电位也被考虑用于疾病分类。因为并非所有MUAP都唯一地代表一个类。因此,提出了一种基于能量准则的优势MUAP特征提取方法。然后,通过分解主要的MUAP提取统计特征,以产生小波系数。最后,使用K近邻分类器(KNN)对神经肌肉疾病进行分类。

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