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Order Frequency Spectral Correlation Based Cyclo-nonstationary Analysis of Surface EMG Signals in Biceps Brachii Muscles

机译:基于顺序频谱相关性基于二头肌肌肉表面EMG信号的Cycl-Nonstationary分析

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Surface Electromyogram (sEMG) is an indicator of fatigue progression during isometric or dynamic contraction of skeletal muscle. Estimation of fatigue index provides clinically relevant data for the diagnosis of neuromuscular disorders. The major challenge is that the signal is highly nonstationary upon dynamic contraction of muscles. Therefore, an advanced signal processing method is essential for the analysis of such signals to measure fatigue indices. Cyclo-nonstationary (CNS) analysis reveals the hidden periodicities of a highly nonstationary signal which is not firmly established for muscle fatigue analysis. In this work, an attempt has been made for the cyclo-nonstationary analysis of sEMG signal in biceps brachii muscle using Order-Frequency Spectral Correlation function (OFSC) method. For this, signals are recorded from fifty healthy volunteers with well-defined protocol. The preprocessed signals are equally partitioned into three segments namely, nonfatigue, progression of fatigue and fatigue. Further, OFSC is computed using the Welch-based estimator. In addition, the OFSC statistical features such as area under the curve, skewness, kurtosis and six entropies are estimated to evaluate fatigue condition with CNS analysis. The preliminary results show that OFSC features are able to differentiate the fatigue condition. The obtained results are statistically significant with p < 0.002. Therefore, OFSC-based CNS analysis can be used for the fatigue index estimation to diagnose neuromuscular disorders.
机译:表面肌电图(SEMG)是骨骼肌等距或动态收缩期间疲劳进展的指标。疲劳指数的估计为神经肌肉障碍的诊断提供临床相关数据。主要挑战是,信号在肌肉动态收缩时,信号非常不稳定。因此,高级信号处理方法对于分析这种信号来测量疲劳指数至关重要。基金 - 非营养态(CNS)分析揭示了高度非间抗信号的隐藏周期性,这对于肌肉疲劳分析并未牢固建立。在这项工作中,使用订单频谱相关函数(OFSC)方法,已经尝试了二头肌Brachii肌肉中SEMG信号的基质不稳定分析。为此,信号由具有明确定义的协议的50个健康志愿者记录。预处理的信号同等地分配到三个段中,即抗疲劳和疲劳进展。此外,使用基于Welch的估计器来计算OFSC。此外,估计曲线,偏斜,峰和六个熵下的区域统计特征,例如曲线,偏振,血管术和六个熵,以评估CNS分析的疲劳病症。初步结果表明,OFSC功能能够区分疲劳条件。得到的结果与P <0.002有统计学意义。因此,基于族的CNS分析可用于抗疲劳指数估计以诊断神经肌肉障碍。

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