Industrial and Management Systems Engineering, West Virginia University, PO Box 6070, Morgantown, WV 26506-6107, USA.
J Electromyogr Kinesiol. 2013 Oct;23(5):995-1003. doi: 10.1016/j.jelekin.2013.05.001. Epub 2013 Jun 17.
Assessment of neuromuscular fatigue is essential for early detection and prevention of risks associated with work-related musculoskeletal disorders. In recent years, discrete wavelet transform (DWT) of surface electromyography (SEMG) has been used to evaluate muscle fatigue, especially during dynamic contractions when the SEMG signal is non-stationary. However, its application to the assessment of work-related neck and shoulder muscle fatigue is not well established. Therefore, the purpose of this study was to establish DWT analysis as a suitable method to conduct quantitative assessment of neck and shoulder muscle fatigue under dynamic repetitive conditions. Ten human participants performed 40min of fatiguing repetitive arm and neck exertions while SEMG data from the upper trapezius and sternocleidomastoid muscles were recorded. The ten of the most commonly used wavelet functions were used to conduct the DWT analysis. Spectral changes estimated using power of wavelet coefficients in the 12-23Hz frequency band showed the highest sensitivity to fatigue induced by the dynamic repetitive exertions. Although most of the wavelet functions tested in this study reasonably demonstrated the expected power trend with fatigue development and recovery, the overall performance of the "Rbio3.1" wavelet in terms of power estimation and statistical significance was better than the remaining nine wavelets.
肌肉疲劳的评估对于早期发现与工作相关的肌肉骨骼疾病相关的风险至关重要。近年来,表面肌电图(SEMG)的离散小波变换(DWT)已被用于评估肌肉疲劳,特别是在 SEMG 信号非平稳的动态收缩期间。然而,其在工作相关颈部和肩部肌肉疲劳评估中的应用尚未得到很好的建立。因此,本研究的目的是确立 DWT 分析作为一种合适的方法,以在动态重复条件下对颈部和肩部肌肉疲劳进行定量评估。10 名人类参与者进行了 40 分钟的疲劳重复手臂和颈部运动,同时记录了上斜方肌和胸锁乳突肌的表面肌电图数据。使用了最常用的 10 种小波函数进行 DWT 分析。在 12-23Hz 频带中使用小波系数的功率估计的频谱变化显示出对动态重复运动引起的疲劳最敏感。尽管本研究中测试的大多数小波函数在疲劳发展和恢复过程中都合理地展示了预期的功率趋势,但“Rbio3.1”小波在功率估计和统计显著性方面的整体性能优于其余九个小波。