一种利用不同信号处理特征识别肌病的方法与比较

A. Doulah, Md. Asif Iqbal
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引用次数: 12

摘要

肌病,最常见的遗传性肌肉骨骼疾病之一,导致肌肉无力。肌肉痉挛、紧绷和痉挛也与肌病有关。肌电信号是通过询问肌肉发出的电信号来检查肌肉功能的生物医学信号。由于神经系统控制肌肉活动,因此可以观察和分析肌电图信号,以识别个体肌病的不可缺少的特征。本研究的目的是通过研究肌电信号的时频域特征来解离肌病信号。本文采用自相关(ACR)、过零率(ZCR)作为时域特征,平均频率作为频域特征,短时傅立叶变换(STFT)作为时频特征;对正常人和患者的肌电信号进行了广泛的分析,以成功地将患者与正常人群区分开来。为了理解这一目的,我们从6名健康人组成的正常对照组和6名肌病患者组成的一组中获得肌电信号数据库。分析结果表明,肌病信号的自相关峰低于健康人,信号的零交叉率和平均频率高于正常人。此外,肌病患者的频谱图功率水平明显低于正常组,峰值频移到更高的频率区域。
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An approach to identify myopathy disease using different signal processing features with comparison
Myopathy, one of the most frequent inherited musculoskeletal diseases resulting in muscular weakness. Muscle cramps, tautness & spasm are also associated with myopathy. The electromyography (EMG) signals are biomedical signals that examine the muscle function through the inquiry of the electrical signal the muscles emanate. As the nervous system controls the muscle activity, the EMG signals can be viewed and analyzed in order to recognize the indispensable features of myopathy disease in individuals. The aim of this work is to dissociate the myopathic signals by studying the time & frequency domain features of the EMG signals. In this paper, autocorrelation (ACR), zero crossing rate (ZCR) as time domain features, mean frequency as frequency domain feature and Short Time Fourier Transform (STFT) as Time-frequency feature; are extensively analyzed on EMG signals of both the normal persons and the patients to successfully distinguish the patients from normal group. In order to comprehend this aim, EMG signal database was obtained from a normal control group consisted of 6 healthy persons & a group of patients with myopathy consisted of 6 patients. The analytical results show that myopathic signals have lower autocorrelation peak then the healthy ones and zero crossing rate and mean frequency of the affected signals are higher than the normal persons. In addition to that the power level of the spectrogram of the myopathy patients is considerably lower than that of the normal group and frequency shifting to higher frequency region for peak values.
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