Lehky S R, Sejnowski T J, Desimone R
Laboratory of Neuropsychology, National Institute of Mental Health, Bethesda, Maryland 20892.
J Neurosci. 1992 Sep;12(9):3568-81. doi: 10.1523/JNEUROSCI.12-09-03568.1992.
The overwhelming majority of neurons in primate visual cortex are nonlinear. For those cells, the techniques of linear system analysis, used with some success to model retinal ganglion cells and striate simple cells, are of limited applicability. As a start toward understanding the properties of nonlinear visual neurons, we have recorded responses of striate complex cells to hundreds of images, including both simple stimuli (bars and sinusoids) as well as complex stimuli (random textures and 3-D shaded surfaces). The latter set tended to give the strongest response. We created a neural network model for each neuron using an iterative optimization algorithm. The recorded responses to some stimulus patterns (the training set) were used to create the model, while responses to other patterns were reserved for testing the networks. The networks predicted recorded responses to training set patterns with a median correlation of 0.95. They were able to predict responses to test stimuli not in the training set with a correlation of 0.78 overall, and a correlation of 0.65 for complex stimuli considered alone. Thus, they were able to capture much of the input/output transfer function of the neurons, even for complex patterns. Examining connection strengths within each network, different parts of the network appeared to handle information at different spatial scales. To gain further insights, the network models were inverted to construct "optimal" stimuli for each cell, and their receptive fields were mapped with high-resolution spots. The receptive field properties of complex cells could not be reduced to any simpler mathematical formulation than the network models themselves.
灵长类动物视觉皮层中的绝大多数神经元都是非线性的。对于这些细胞,线性系统分析技术在用于模拟视网膜神经节细胞和纹状简单细胞时取得了一定成功,但适用性有限。作为理解非线性视觉神经元特性的第一步,我们记录了纹状复杂细胞对数百张图像的反应,这些图像包括简单刺激(条形和正弦波)以及复杂刺激(随机纹理和三维阴影表面)。后者往往会产生最强的反应。我们使用迭代优化算法为每个神经元创建了一个神经网络模型。对某些刺激模式(训练集)的记录反应用于创建模型,而对其他模式的反应则留作测试网络之用。这些网络预测对训练集模式的记录反应,中位数相关性为0.95。它们能够预测对训练集中未出现的测试刺激的反应,总体相关性为0.78,单独考虑复杂刺激时相关性为0.65。因此,即使对于复杂模式,它们也能够捕捉神经元的大部分输入/输出传递函数。检查每个网络内的连接强度,网络的不同部分似乎在不同空间尺度上处理信息。为了获得进一步的见解,对网络模型进行反演以构建每个细胞的“最佳”刺激,并使用高分辨率斑点绘制它们的感受野。复杂细胞的感受野特性无法简化为比网络模型本身更简单的数学公式。