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Muscle Performance Investigated With a Novel Smart Compression Garment Based on Pressure Sensor Force Myography and Its Validation Against EMG

机译:基于压力传感器力肌谱的新型智能压缩服装研究肌肉性能及其对肌电的验证

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摘要

Muscle activity and fatigue performance parameters were obtained and compared between both a smart compression garment and the gold-standard, a surface electromyography (EMG) system during high-speed cycling in seven participants. The smart compression garment, based on force myography (FMG), comprised of integrated pressure sensors that were sandwiched between skin and garment, located on five thigh muscles. The muscle activity was assessed by means of crank cycle diagrams (polar plots) that displayed the muscle activity relative to the crank cycle. The fatigue was assessed by means of the median frequency of the power spectrum of the EMG signal; the fractal dimension (FD) of the EMG signal; and the FD of the pressure signal. The smart compression garment returned performance parameters (muscle activity and fatigue) comparable to the surface EMG. The major differences were that the EMG measured the electrical activity, whereas the pressure sensor measured the mechanical activity. As such, there was a phase shift between electrical and mechanical signals, with the electrical signals preceding the mechanical counterparts in most cases. This is specifically pronounced in high-speed cycling. The fatigue trend over the duration of the cycling exercise was clearly reflected in the fatigue parameters (FDs and median frequency) obtained from pressure and EMG signals. The fatigue parameter of the pressure signal (FD) showed a higher time dependency (R2 = 0.84) compared to the EMG signal. This reflects that the pressure signal puts more emphasis on the fatigue as a function of time rather than on the origin of fatigue (e.g., peripheral or central fatigue). In light of the high-speed activity results, caution should be exerted when using data obtained from EMG for biomechanical models. In contrast to EMG data, activity data obtained from FMG are considered more appropriate and accurate as an input for biomechanical modeling as they truly reflect the mechanical muscle activity. In summary, the smart compression garment based on FMG is a valid alternative to EMG-garments and provides more accurate results at high-speed activity (avoiding the electro-mechanical delay), as well as clearly measures the progress of muscle fatigue over time.
机译:获得了肌肉活动和疲劳性能参数,并将它们与智能压缩服和黄金标准(一种表面肌电图(EMG)系统)在高速骑行中的七个参与者进行了比较。基于压力肌动图(FMG)的智能压缩服由位于五个大腿肌肉上的集成压力传感器(夹在皮肤和衣服之间)组成。通过显示相对于曲柄周期的肌肉活动的曲柄周期图(极坐标图)评估肌肉活动。疲劳是通过EMG信号的功率谱的中值频率评估的。 EMG信号的分形维数(FD);和压力信号的FD。智能压缩服装的性能参数(肌肉活动和疲劳)与表面肌电图相当。主要区别在于,EMG可测量电活动,而压力传感器可测量机械活动。这样,在电信号和机械信号之间存在相移,在大多数情况下,电信号先于机械信号。这在高速循环中特别明显。从压力和EMG信号获得的疲劳参数(FD和中频)清楚地反映了骑车运动过程中的疲劳趋势。与EMG信号相比,压力信号(FD)的疲劳参数具有更高的时间依赖性(R 2 = 0.84)。这反映出压力信号更加重视作为时间的函数的疲劳,而不是疲劳的起源(例如,周围或中央疲劳)。鉴于高速运动的结果,在使用从EMG获得的数据进行生物力学模型时应格外小心。与EMG数据相反,从FMG获得的活动数据被认为更合适,更准确,可以作为生物力学建模的输入,因为它们确实反映了机械肌肉的活动。总而言之,基于FMG的智能压缩服是EMG服装的有效替代品,并在高速活动(避免机电延迟)时提供更准确的结果,并且可以清楚地测量随时间推移的肌肉疲劳程度。

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