Bloorview Research Institute, Toronto, ON, Canada.
Physiol Meas. 2010 Apr;31(4):461-76. doi: 10.1088/0967-3334/31/4/001. Epub 2010 Feb 24.
Knowledge of muscle activity timing is critical to many clinical applications, such as the assessment of muscle coordination and the prescription of muscle-activated switches for individuals with disabilities. In this study, we introduce a continuous wavelet transform (CWT) algorithm for the detection of muscle activity via mechanomyogram (MMG) signals. CWT coefficients of the MMG signal were compared to scale-specific thresholds derived from the baseline signal to estimate the timing of muscle activity. Test signals were recorded from the flexor carpi radialis muscles of 15 able-bodied participants as they squeezed and released a hand dynamometer. Using the dynamometer signal as a reference, the proposed CWT detection algorithm was compared against a global-threshold CWT detector as well as amplitude-based event detection for sensitivity and specificity to voluntary contractions. The scale-specific CWT-based algorithm exhibited superior detection performance over the other detectors. CWT detection also showed good muscle selectivity during hand movement, particularly when a given muscle was the primary facilitator of the contraction. This may suggest that, during contraction, the compound MMG signal has a recurring morphological pattern that is not prevalent in the baseline signal. The ability of CWT analysis to be implemented in real time makes it a candidate for muscle-activity detection in clinical applications.
肌肉活动时间的知识对于许多临床应用至关重要,例如评估肌肉协调性和为残疾个体规定肌肉激活开关。在这项研究中,我们介绍了一种通过肌动描记图 (MMG) 信号检测肌肉活动的连续小波变换 (CWT) 算法。将 MMG 信号的 CWT 系数与来自基线信号的特定于尺度的阈值进行比较,以估计肌肉活动的时间。测试信号是从 15 名健康参与者的桡侧腕屈肌记录的,他们挤压和释放手部测力计。使用测力计信号作为参考,将提出的 CWT 检测算法与基于全局阈值的 CWT 检测器以及基于幅度的事件检测进行了比较,以评估其对自愿收缩的灵敏度和特异性。基于特定尺度的 CWT 算法在检测性能上优于其他检测器。在手部运动期间,CWT 检测也表现出良好的肌肉选择性,特别是当给定的肌肉是收缩的主要促进者时。这可能表明,在收缩期间,复合 MMG 信号具有重复的形态模式,而不是在基线信号中普遍存在。CWT 分析能够实时实现,使其成为临床应用中肌肉活动检测的候选者。