Song Deying, Ruff Douglas, Cohen Marlene, Huang Chengcheng
Joint Program in Neural Computation and Machine Learning, Neuroscience Institute, and Machine Learning Department, Carnegie Mellon University, Pittsburgh, PA.
Center for the Neural Basis of Cognition, Pittsburgh, PA.
bioRxiv. 2024 Nov 22:2024.11.22.624903. doi: 10.1101/2024.11.22.624903.
The size of a neuron's receptive field increases along the visual hierarchy. Neurons in higher-order visual areas integrate information through a canonical computation called normalization, where neurons respond sublinearly to multiple stimuli in the receptive field. Neurons in the visual cortex exhibit highly heterogeneous degrees of normalization. Recent population recordings from visual cortex find that the interactions between neurons, measured by spike count correlations, depend on their normalization strengths. However, the circuit mechanism underlying the heterogeneity of normalization is unclear. In this work, we study normalization in a spiking neuron network model of visual cortex. The model produces a range of neuronal heterogeneity of normalization strength and the heterogeneity is highly correlated with the inhibitory current each neuron receives. Our model reproduces the dependence of spike count correlations on normalization as observed in experimental data, which is explained by the covariance with the inhibitory current. We find that neurons with stronger normalization are more sensitive to contrast differences in images and encode information more efficiently. In addition, networks with more heterogeneity in normalization encode more information about visual stimuli. Together, our model provides a mechanistic explanation of heterogeneous normalization strengths in the visual cortex, and sheds new light on the computational benefits of neuronal heterogeneity.
神经元感受野的大小沿视觉层级递增。高阶视觉区域的神经元通过一种称为归一化的典型计算来整合信息,在此过程中,神经元对感受野内的多个刺激呈亚线性反应。视觉皮层中的神经元表现出高度异质的归一化程度。近期对视觉皮层的群体记录发现,通过峰电位计数相关性衡量的神经元之间的相互作用取决于它们的归一化强度。然而,归一化异质性背后的电路机制尚不清楚。在这项工作中,我们在视觉皮层的脉冲神经元网络模型中研究归一化。该模型产生了一系列归一化强度的神经元异质性,并且这种异质性与每个神经元接收的抑制性电流高度相关。我们的模型再现了实验数据中观察到的峰电位计数相关性对归一化的依赖性,这可以通过与抑制性电流的协方差来解释。我们发现,归一化更强的神经元对图像中的对比度差异更敏感,并且能更有效地编码信息。此外,归一化异质性更高的网络能编码更多关于视觉刺激的信息。总之,我们的模型为视觉皮层中异质归一化强度提供了一种机制解释,并为神经元异质性的计算优势提供了新的见解。