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An EMG-based muscle force evaluation method using approximate entropy

机译:使用近似熵的基于肌电图的肌力评估方法

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This paper proposed a novel muscle force evaluation method to evaluate the patient's rehabilitation condition in the process of rehabilitation training. According to the related literature research, the complexity of the electromyography (EMG) signals were different under different muscle force. The physiological features and the state of muscle can be indirectly speculated by detecting the change of the dynamic complexity of EMG signals. The novel ideal of our research is to propose an EMG-based muscle force evaluation method using approximate entropy. The evaluation system consists of two main parts: the EMG acquisition (BIOFORCEN) and the measurement of muscle force (FingerTPS). Experiments were conducted with a healthy male. 15 groups EMG signals of biceps and triceps were acquired under different muscle force. Raw EMG data were recorded for off-line analysis. The approximate entropy (ApEn) and the power of EMG signals aiming at intercept relatively stable 10 section signal in each group were calculated to compose the training set. In addition, the additional 150 groups feature vectors were obtained to compose a sample set. 15 groups muscle force were divided into 6 levels and two classification method (linear discriminate analysis (LDA) and quadratic discriminate analysis (QDA)) were used to classify the feature vector. Experimental results have shown that the discrimination between ApEn and the power were obvious and 65% classification accuracy was got with the QDA method. The research of this paper can be a promising approach for further research in the field of rehabilitation evaluation.
机译:提出了一种新颖的肌肉力量评估方法,用于在康复训练过程中评估患者的康复状况。根据相关的文献研究,肌电图(EMG)信号的复杂性在不同的肌肉力量下是不同的。可以通过检测EMG信号的动态复杂度的变化来间接推测肌肉的生理特征和状态。我们研究的新理想是提出一种基于EMG的使用近似熵的肌肉力评估方法。评估系统包括两个主要部分:EMG采集(BIOFORCEN)和肌肉力量的测量(FingerTPS)。实验是对一个健康的男性进行的。在不同的肌肉力量下采集了二头肌和三头肌的15组肌电信号。记录原始EMG数据以进行离线分析。计算近似熵(ApEn)和针对每组中相对稳定的10个截面信号的EMG信号的功率,以构成训练集。此外,获得了额外的150组特征向量以构成样本集。将15组肌肉力量分为6个级别,并使用两种分类方法(线性判别分析(LDA)和二次判别分析(QDA))对特征向量进行分类。实验结果表明,ApEn和功率之间的区别很明显,QDA方法的分类精度达到了65%。本文的研究可能是在康复评估领域进行进一步研究的有前途的方法。

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