作者
Richard Gast, Sara A Solla, Ann Kennedy
发表日期
2024/1/16
期刊
Proceedings of the National Academy of Sciences
卷号
121
期号
3
页码范围
e2311885121
出版商
National Academy of Sciences
简介
The brain is composed of complex networks of interacting neurons that express considerable heterogeneity in their physiology and spiking characteristics. How does this neural heterogeneity influence macroscopic neural dynamics, and how might it contribute to neural computation? In this work, we use a mean-field model to investigate computation in heterogeneous neural networks, by studying how the heterogeneity of cell spiking thresholds affects three key computational functions of a neural population: the gating, encoding, and decoding of neural signals. Our results suggest that heterogeneity serves different computational functions in different cell types. In inhibitory interneurons, varying the degree of spike threshold heterogeneity allows them to gate the propagation of neural signals in a reciprocally coupled excitatory population. Whereas homogeneous interneurons impose synchronized dynamics that …
引用总数
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R Gast, SA Solla, A Kennedy - Proceedings of the National Academy of Sciences, 2024