Kistemaker Dinant A, Wong Jeremy D, Gribble Paul L
The Brain and Mind Institute, Department of Psychology, The University of Western Ontario, London, Ontario, Canada; VU University Amsterdam, Amsterdam, The Netherlands; and
Simon Fraser University, Vancouver, British Columbia, Canada.
J Neurophysiol. 2014 Oct 15;112(8):1815-24. doi: 10.1152/jn.00291.2014. Epub 2014 Jun 18.
It is currently unclear whether the brain plans movement kinematics explicitly or whether movement paths arise implicitly through optimization of a cost function that takes into account control and/or dynamic variables. Several cost functions are proposed in the literature that are very different in nature (e.g., control effort, torque change, and jerk), yet each can predict common movement characteristics. We set out to disentangle predictions of the different variables using a combination of modeling and empirical studies. Subjects performed goal-directed arm movements in a force field (FF) in combination with visual perturbations of seen hand position. This FF was designed to have distinct optimal movements for muscle-input and dynamic costs while leaving kinematic cost unchanged. Visual perturbations in turn changed the kinematic cost but left the dynamic and muscle-input costs unchanged. An optimally controlled, physiologically realistic arm model was used to predict movements under the various cost variables. Experimental results were not consistent with a cost function containing any of the control and dynamic costs investigated. Movement patterns of all experimental conditions were adequately predicted by a kinematic cost function comprising both visually and somatosensory perceived jerk. The present study provides clear behavioral evidence that the brain solves kinematic and mechanical redundancy in separate steps: in a first step, movement kinematics are planned; and in a second, separate step, muscle activation patterns are generated.
目前尚不清楚大脑是明确地规划运动运动学,还是通过优化一个考虑控制和/或动态变量的成本函数来隐式地产生运动路径。文献中提出了几种本质上非常不同的成本函数(例如,控制努力、扭矩变化和加加速度),但每一种都能预测常见的运动特征。我们着手通过建模和实证研究相结合的方式来区分不同变量的预测。受试者在力场(FF)中进行目标导向的手臂运动,并结合对手部可见位置的视觉干扰。这个力场被设计为对于肌肉输入成本和动态成本具有不同的最优运动,同时保持运动学成本不变。视觉干扰反过来改变了运动学成本,但保持动态成本和肌肉输入成本不变。一个最优控制的、生理上现实的手臂模型被用来预测在各种成本变量下的运动。实验结果与包含所研究的任何控制和动态成本的成本函数不一致。由视觉和体感感知的加加速度组成的运动学成本函数充分预测了所有实验条件下的运动模式。本研究提供了明确的行为证据,表明大脑在不同步骤中解决运动学和机械冗余问题:第一步,规划运动运动学;第二步,单独生成肌肉激活模式。