Department of Systems Management Engineering, Sungkyunkwan University, Suwon 440-746, South Korea.
J Electromyogr Kinesiol. 2010 Dec;20(6):1223-9. doi: 10.1016/j.jelekin.2010.08.001.
The fraction of crosstalk was examined from the surface EMG signals collected from digit- and wrist-dedicated flexors with a blind signal separation (BSS) algorithm. Six participants performed static power grip tasks in a neutral posture at four different exertion levels of 25%, 50%, 75%, and 100% MVC. The signals were collected from the flexor digitorum superficialis, flexor digitorum profundus, flexor carpi radialis, palmaris longus, and flexor carpi ulnaris using a bipolar electrode configuration. The percentage of root mean square (RMS) was used as an amplitude-based index of crosstalk by normalizing the signals including crosstalk to those excluding crosstalk by the BSS algorithm for each %MVC exertion. The peak R(2) value of a cross-correlation function was also calculated as a correlation-based index of crosstalk for a group of forearm flexors by force level and algorithm application. The fraction of crosstalk ranged from 32% to 50% in the wrist-dedicated flexors and from 11% to 25% in the digit-dedicated flexors. Since surface EMG signals had such high levels of crosstalk, reduction methods like the BSS algorithm should be employed, as the BSS significantly reduced crosstalk in the forearm flexors 33% over all muscles and exertion levels. Thus, it is recommended that BSS be utilized to reduce crosstalk for the digit- and wrist-dedicated flexors during gripping tasks.
从使用盲信号分离 (BSS) 算法从专门用于手指和手腕的屈肌上采集的表面肌电图信号中检查串扰分数。六名参与者在中立姿势下进行静态力量握力任务,用力程度为 MVC 的 25%、50%、75%和 100%的四个不同水平。使用双极电极配置从指浅屈肌、指深屈肌、桡侧腕屈肌、掌长肌和尺侧腕屈肌采集信号。均方根 (RMS) 的百分比用作串扰的基于幅度的指标,通过 BSS 算法将包括串扰的信号归一化为不包括串扰的信号,每个 %MVC 用力。还通过力水平和算法应用为一组前臂屈肌计算了互相关函数的峰值 R(2)值作为串扰的基于相关性的指标。在专门用于手腕的屈肌中,串扰分数范围为 32%至 50%,在专门用于手指的屈肌中,串扰分数范围为 11%至 25%。由于表面肌电图信号具有如此高的串扰水平,因此应该采用 BSS 等减少串扰的方法,因为 BSS 算法在所有肌肉和用力水平下都将前臂屈肌的串扰减少了 33%。因此,建议在握力任务中使用 BSS 减少专门用于手指和手腕的屈肌的串扰。