Northwestern University Medical School.
J Cogn Neurosci. 1993 Winter;5(1):14-33. doi: 10.1162/jocn.1993.5.1.14.
Abstract A neural network model that produces many of the directional and spatial response properties that have been observed for cortical neurons in monkeys moving toward targets in space is described. These include motor cortex units with broad tuning in a single preferred direction, approximately linear variation in activity for different hold positions, and approximate invariance in preferred direction for different starting points in space. Association cortex units in the model are sometimes irregular and reminiscent of neurons observed in visually responsive brain areas such as the posterior parietal cortex. The model is also compatible with population analyses performed on motor cortical neurons. Across network units, the distribution of preferred directions is uniformly distributed in directional space, and the degree of tuning and response magnitude vary from unit to unit. A population code used to predict accurately the direction of arm movements from a large population of coarsely tuned individual neurons allows predictions using a simulated population of unit responses obtained from the neural network model. This code works for different starting locations in space using the same parameters.
摘要 本文描述了一种神经网络模型,该模型产生了许多在猴子朝向空间目标移动时观察到的皮层神经元的方向和空间反应特性。这些特性包括在单个最佳方向上具有广泛调谐的运动皮层单元、对于不同的保持位置,活动的近似线性变化以及对于空间中不同起点的最佳方向的近似不变性。模型中的联合皮层单元有时是不规则的,让人联想到在视觉反应脑区(如后顶叶皮层)中观察到的神经元。该模型也与对运动皮层神经元进行的群体分析兼容。在网络单元中,最佳方向的分布在方向空间中是均匀分布的,调谐程度和响应幅度因单元而异。一种用于从大量粗调个体神经元准确预测手臂运动方向的群体编码,允许使用从神经网络模型获得的模拟单元响应群体进行预测。该编码使用相同的参数,适用于空间中不同的起始位置。