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皮质网络中侧向和共调抑制性结构的共存。

Coexistence of lateral and co-tuned inhibitory configurations in cortical networks.

机构信息

Center for Neural Science, New York University, New York, New York, United States of America.

出版信息

PLoS Comput Biol. 2011 Oct;7(10):e1002161. doi: 10.1371/journal.pcbi.1002161. Epub 2011 Oct 6.

Abstract

The responses of neurons in sensory cortex depend on the summation of excitatory and inhibitory synaptic inputs. How the excitatory and inhibitory inputs scale with stimulus depends on the network architecture, which ranges from the lateral inhibitory configuration where excitatory inputs are more narrowly tuned than inhibitory inputs, to the co-tuned configuration where both are tuned equally. The underlying circuitry that gives rise to lateral inhibition and co-tuning is yet unclear. Using large-scale network simulations with experimentally determined connectivity patterns and simulations with rate models, we show that the spatial extent of the input determined the configuration: there was a smooth transition from lateral inhibition with narrow input to co-tuning with broad input. The transition from lateral inhibition to co-tuning was accompanied by shifts in overall gain (reduced), output firing pattern (from tonic to phasic) and rate-level functions (from non-monotonic to monotonically increasing). The results suggest that a single cortical network architecture could account for the extended range of experimentally observed response types between the extremes of lateral inhibitory versus co-tuned configurations.

摘要

感觉皮层神经元的反应取决于兴奋性和抑制性突触输入的总和。兴奋性和抑制性输入与刺激的比例取决于网络架构,其范围从兴奋性输入比抑制性输入更窄调谐的侧向抑制配置,到两者同等调谐的共调配置。产生侧向抑制和共调的基础电路尚不清楚。使用具有实验确定的连接模式的大规模网络模拟和具有速率模型的模拟,我们表明输入的空间范围决定了配置:从具有窄输入的侧向抑制到具有宽输入的共调有一个平滑的过渡。从侧向抑制到共调的转变伴随着整体增益(降低)、输出点火模式(从紧张到突发)和比率-水平函数(从非单调到单调增加)的转变。结果表明,单个皮质网络架构可以解释实验观察到的响应类型在侧向抑制与共调配置之间的极端之间的广泛范围。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7158/3188483/b9c5bf1fa719/pcbi.1002161.g001.jpg

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