首页> 外文期刊>Journal of Computational Neuroscience >Dynamic Neural Network Models of the Premotoneuronal Circuitry Controlling Wrist Movements in Primates
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Dynamic Neural Network Models of the Premotoneuronal Circuitry Controlling Wrist Movements in Primates

机译:灵长类动物前腕神经运动控制腕部运动的动态神经网络模型。

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Dynamic recurrent neural networks were derived to simulate neuronal populations generating bidirectional wrist movements in the monkey. The models incorporate anatomical connections of cortical and rubral neurons, muscle afferents, segmental interneurons and motoneurons; they also incorporate the response profiles of four populations of neurons observed in behaving monkeys. The networks were derived by gradient descent algorithms to generate the eight characteristic patterns of motor unit activations observed during alternating flexion-extension wrist movements. The resulting model generated the appropriate input-output transforms and developed connection strengths resembling those in physiological pathways. We found that this network could be further trained to simulate additional tasks, such as experimentally observed reflex responses to limb perturbations that stretched or shortened the active muscles, and scaling of response amplitudes in proportion to inputs. In the final comprehensive network, motor units are driven by the combined activity of cortical, rubral, spinal and afferent units during step tracking and perturbations. The model displayed many emergent properties corresponding to physiological characteristics. The resulting neural network provides a working model of premotoneuronal circuitry and elucidates the neural mechanisms controlling motoneuron activity. It also predicts several features to be experimentally tested, for example the consequences of eliminating inhibitory connections in cortex and red nucleus. It also reveals that co-contraction can be achieved by simultaneous activation of the flexor and extensor circuits without invoking features specific to co-contraction.
机译:派生动态循环神经网络来模拟在猴子中产生双向腕部运动的神经元种群。这些模型结合了皮层和神经神经元,肌肉传入神经,节间神经元和运动神经元的解剖联系。它们还结合了在行为猴子中观察到的四个神经元种群的响应曲线。该网络是通过梯度下降算法导出的,以生成在交替的屈伸腕腕运动过程中观察到的八个运动单位激活特征模式。生成的模型生成适当的输入-输出转换,并开发出类似于生理途径中的连接强度。我们发现可以进一步训练该网络来模拟其他任务,例如实验观察到的对肢体摄动的反射反应(拉伸或缩短活动肌肉),以及响应幅度与输入成比例的缩放。在最终的综合网络中,在逐步跟踪和扰动期间,运动单元是由皮质,椎间盘,脊柱和传入单元的组合活动驱动的。该模型显示了许多与生理特征相对应的紧急特性。所得的神经网络提供了运动神经元前回路的工作模型,并阐明了控制运动神经元活动的神经机制。它还预测了将要进行实验测试的几个功能,例如消除皮质和红色核中抑制性连接的后果。它还揭示了可以通过同时激活屈肌和伸肌回路来实现共收缩,而无需调用特定于共收缩的功能。

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