Lukashin A V, Amirikian B R, Georgopoulos A P
Brain Sciences Center, Department of Veterans Affairs Medical Center, Minneapolis, USA.
Biol Cybern. 1996 May;74(5):469-78. doi: 10.1007/BF00206713.
We have developed a model that simulates possible mechanisms by which supraspinal neuronal signals coding forces could converge in the spinal cord and provide an ongoing integrated signal to the motoneuronal pools whose activation results in the exertion of force. The model consists of a three-layered neural network connected to a two-joint-six-muscle model of the arm. The network layers represent supraspinal populations, spinal cord interneurons, and motoneuronal pools. We propose an approach to train the network so that, after the synaptic connections between the layers are adjusted, the performance of the model is consistent with experimental data obtained on different organisms using different experimental paradigms: the stiffness characteristics of human arm; the structure of force fields generated by the stimulation of the frog's spinal cord; and a correlation between motor cortical activity and force exerted by monkey against an immovable object. The model predicts a specific pattern of connections between supraspinal populations coding forces and spinal cord interneurons: the weight of connection should be correlated with directional preference of interconnected units. Finally, our simulations demonstrate that the force generated by the sum of neural signals can be nearly equal to the vector sum of forces generated by each signal independently, in spite of the complex nonlinearities intervening between supraspinal commands and forces exerted by the arm in response to these commands.
我们开发了一个模型,该模型模拟了编码力的脊髓上神经元信号在脊髓中汇聚并向运动神经元池提供持续整合信号的可能机制,运动神经元池的激活会导致力的施加。该模型由一个连接到手臂双关节六肌肉模型的三层神经网络组成。网络层分别代表脊髓上的神经元群体、脊髓中间神经元和运动神经元池。我们提出了一种训练网络的方法,以便在调整层间突触连接后,模型的性能与使用不同实验范式在不同生物体上获得的实验数据一致:人类手臂的刚度特性;青蛙脊髓刺激产生的力场结构;以及猴子运动皮层活动与猴子对固定物体施加的力之间的相关性。该模型预测了编码力的脊髓上神经元群体与脊髓中间神经元之间的特定连接模式:连接权重应与相互连接单元的方向偏好相关。最后,我们的模拟表明,尽管在脊髓上指令与手臂响应这些指令所施加的力之间存在复杂的非线性,但神经信号总和产生的力几乎可以等于每个信号独立产生的力的矢量和。