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Novel Pseudo-Wavelet Function for MMG Signal Extraction during Dynamic Fatiguing Contractions

机译:动态疲劳收缩期间MMG信号提取的新型伪小波函数

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摘要

The purpose of this study was to develop an algorithm to classify muscle fatigue content in sports related scenarios. Mechanomyography (MMG) signals of the biceps muscle were recorded from thirteen subjects performing dynamic contractions until fatigue. For training and testing purposes, the signals were labeled in two classes (Non-Fatigue and Fatigue). A genetic algorithm was used to evolve a pseudo-wavelet function for optimizing the detection of muscle fatigue. Tuning of the generalized evolved pseudo-wavelet function was based on the decomposition of 70% of the conducted MMG trials. After completing 25 independent pseudo-wavelet evolution runs, the best run was selected and then tested on the remaining 30% of the data to measure the classification performance. Results show that the evolved pseudo-wavelet improved the classification rate of muscle fatigue by 4.70 percentage points to 16.61 percentage points when compared to other standard wavelet functions, giving an average correct classification of 80.63%, with statistical significance (p < 0.05).
机译:这项研究的目的是开发一种在运动相关场景中对肌肉疲劳含量进行分类的算法。记录了十三名进行动态收缩直至疲劳的受试者的二头肌肌肉的机械X线照相(MMG)信号。为了进行培训和测试,信号被标记为两类(非疲劳和疲劳)。遗传算法被用来发展伪小波函数,以优化肌肉疲劳的检测。广义演化伪小波函数的调整基于70%进行的MMG试验的分解。在完成25次独立的伪小波进化运行之后,选择最佳运行,然后对其余30%的数据进行测试以衡量分类性能。结果表明,与其他标准小波函数相比,进化后的伪小波将肌肉疲劳的分类率提高了4.70个百分点,至16.61个百分点,平均正确分类率为80.63%,具有统计学意义(p <0.05)。

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