Babikian Sarine, Kanso Eva, Kutch Jason J
Aerospace and Mechanical Engineering, University of Southern California, Los Angeles, CA, 90089, USA.
Division of Biokinesiology and Physical Therapy, University of Southern California, 1540 E. Alcazar Street, CHP 155, Los Angeles, CA, 90033, USA.
Exp Brain Res. 2017 Apr;235(4):1139-1147. doi: 10.1007/s00221-017-4876-9. Epub 2017 Feb 4.
Human movement patterns have been shown to be particularly variable if many combinations of activity in different muscles all achieve the same task goal (i.e., are goal-equivalent). The nervous system appears to automatically vary its output among goal-equivalent combinations of muscle activity to minimize muscle fatigue or distribute tissue loading, but the neural mechanism of this "good" variation is unknown. Here we use a bimanual finger task, electroencephalography (EEG), and machine learning to determine if cortical signals can predict goal-equivalent variation in finger force output. 18 healthy participants applied left and right index finger forces to repeatedly perform a task that involved matching a total (sum of right and left) finger force. As in previous studies, we observed significantly more variability in goal-equivalent muscle activity across task repetitions compared to variability in muscle activity that would not achieve the goal: participants achieved the task in some repetitions with more right finger force and less left finger force (right > left) and in other repetitions with less right finger force and more left finger force (left > right). We found that EEG signals from the 500 milliseconds (ms) prior to each task repetition could make a significant prediction of which repetitions would have right > left and which would have left > right. We also found that cortical maps of sites contributing to the prediction contain both motor and pre-motor representation in the appropriate hemisphere. Thus, goal-equivalent variation in motor output may be implemented at a cortical level.
如果不同肌肉活动的多种组合都能实现相同的任务目标(即目标等效),那么人类的运动模式就会表现出特别大的变异性。神经系统似乎会在肌肉活动的目标等效组合中自动改变其输出,以尽量减少肌肉疲劳或分散组织负荷,但这种“良好”变异性的神经机制尚不清楚。在这里,我们使用双手手指任务、脑电图(EEG)和机器学习来确定皮层信号是否能够预测手指力量输出中的目标等效变异性。18名健康参与者运用左右食指力量反复执行一项任务,该任务涉及匹配总的(右手和左手力量之和)手指力量。与之前的研究一样,我们观察到,与无法实现目标的肌肉活动变异性相比,在任务重复过程中,目标等效肌肉活动的变异性明显更大:参与者在某些重复任务中右手用力更多、左手用力更少(右>左),而在其他重复任务中右手用力更少、左手用力更多(左>右)。我们发现,在每次任务重复前500毫秒(ms)的脑电图信号能够显著预测哪些重复任务会出现右>左,哪些会出现左>右。我们还发现,对预测有贡献的位点的皮层图谱在相应半球中同时包含运动和运动前表征。因此,运动输出中的目标等效变异性可能是在皮层水平上实现的。