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Experimental detection of muscle atrophy initiation Using sEMG signals

机译:SEM信号的肌肉萎缩启动的实验检测

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Atrophy is one of the most common consequences of muscle disorder. This could be a result of both myopathy and neuropathy. Muscle atrophy becomes more possible as people age. As a result of this disorder, the amount and size of muscle fibers decrease, therefore a person cannot produce high amount of force in his/her muscles, leading to difficulties in handling daily activities. The main purpose of this research is to find a way to predict this disorder. In this study the force classification was used for the atrophy disorder detection. The results show that different classifiers and features from the proposed ones, work for this purpose. To approach this goal, data were collected by recording surface EMG (sEMG) signals. Processing the recorded signals, best features with respect to more accuracy and less calculation complexity were selected and reported. After extracting the features from each patient with using different types of classifiers including LDA (Linear Discriminant Analysis), QDA (Quadratic Discriminant Analysis) and SVM (Support Vector Machine), the best approach to separate normal and atrophic people was investigated. It is found that unlike the proposed features such as MAV (Mean Absolute Value), SSC (Slope Sign Change) and WL (Waveform Length) in upper limb movement classification, three features WL, WAMP (Wilson Amplitude) (time domain features) and MNP (Mean Power) (frequency domain feature) show better performance for atrophy characterization. The results show that these features well predict the detection of biceps atrophy.
机译:萎缩是肌疾病的最常见后果之一。这可能是肌病和神经病变的结果。随着人们的年龄,肌肉萎缩就变得更加可能。由于这种疾病,肌肉纤维的量和大小减少,因此人们不能在他/她的肌肉中产生大量的力,导致处理日常活动的困难。本研究的主要目的是找到一种预测这种疾病的方法。在这项研究中,力分类用于萎缩病症检测。结果表明,不同的分类器和来自所提出的分类器和特征,为此目的工作。为了接近此目标,通过记录表面EMG(SEMG)信号来收集数据。处理记录的信号,选择和报告了更准确度和计算复杂性的最佳特征。在用不同类型的分类器中提取每位患者的特征后,包括LDA(线性判别分析),QDA(二次判别分析)和SVM(支持向量机),研究了分离正常和萎缩人的最佳方法。发现与上肢移动分类中的MAV(平均绝对值),SSC(斜率标志)和WL(波形长度)等所提出的特征不同,三个特征WL,WAM(Wilson幅度)(时域特征)和MNP(平均功率)(频域特征)表现出更好的萎缩表征性能。结果表明,这些特征良好预测二头肌萎缩的检测。

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