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学习手臂伸展运动内部模型的肌电图关联

Electromyographic correlates of learning an internal model of reaching movements.

作者信息

Thoroughman K A, Shadmehr R

机构信息

Department of Biomedical Engineering, Johns Hopkins School of Medicine, Baltimore, Maryland 21205-2195, USA.

出版信息

J Neurosci. 1999 Oct 1;19(19):8573-88. doi: 10.1523/JNEUROSCI.19-19-08573.1999.

Abstract

Theoretical and psychophysical studies have suggested that humans learn to make reaching movements in novel dynamic environments by building specific internal models (IMs). Here we have found electromyographic correlates of internal model formation. We recorded EMG from four muscles as subjects learned to move a manipulandum that created systematic forces (a "force field"). We also simulated a biomechanical controller, which generated movements based on an adaptive IM of the inverse dynamics of the human arm and the manipulandum. The simulation defined two metrics of muscle activation. The first metric measured the component of the EMG of each muscle that counteracted the force field. We found that early in training, the field-appropriate EMG was driven by an error feedback signal. As subjects practiced, the peak of the field-appropriate EMG shifted temporally to earlier in the movement, becoming a feedforward command. The gradual temporal shift suggests that the CNS may use the delayed error-feedback response, which was likely to have been generated through spinal reflex circuits, as a template to learn a predictive feedforward response. The second metric quantified formation of the IM through changes in the directional bias of each muscle's spatial EMG function, i.e., EMG as a function of movement direction. As subjects practiced, co-activation decreased, and the directional bias of each muscle's EMG function gradually rotated by an amount that was specific to the field being learned. This demonstrates that formation of an IM can be represented through rotations in the spatial tuning of muscle EMG functions. Combined with other recent work linking spatial tunings of EMG and motor cortical cells, these results suggest that rotations in motor cortical tuning functions could underlie representation of internal models in the CNS.

摘要

理论和心理物理学研究表明,人类通过构建特定的内部模型(IMs)来学习在新颖的动态环境中进行伸手动作。在此,我们发现了内部模型形成的肌电图相关性。当受试者学习移动一个产生系统力的操作手柄(一个“力场”)时,我们记录了四块肌肉的肌电图。我们还模拟了一个生物力学控制器,该控制器基于人体手臂和操作手柄逆动力学的自适应内部模型生成动作。该模拟定义了两个肌肉激活指标。第一个指标测量每块肌肉肌电图中抵消力场的成分。我们发现,在训练早期,与力场适配的肌电图由误差反馈信号驱动。随着受试者练习,与力场适配的肌电图峰值在时间上提前到动作更早阶段,成为一个前馈指令。这种逐渐的时间偏移表明,中枢神经系统可能将可能通过脊髓反射回路产生的延迟误差反馈响应用作模板来学习预测性前馈响应。第二个指标通过每块肌肉空间肌电图功能的方向偏差变化来量化内部模型的形成,即肌电图作为运动方向的函数。随着受试者练习,共同激活减少,每块肌肉肌电图功能的方向偏差逐渐旋转,旋转量特定于所学的力场。这表明内部模型的形成可以通过肌肉肌电图功能的空间调谐旋转来表示。结合其他近期将肌电图和运动皮层细胞空间调谐联系起来的工作,这些结果表明运动皮层调谐功能的旋转可能是中枢神经系统中内部模型表示的基础。

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