National institute of Mental Health Intramural Program, NIH, Bethesda, MD, USA.
Department of Neurobiology, Duke University, Durham, NC, USA.
PLoS Comput Biol. 2020 Sep 17;16(9):e1008165. doi: 10.1371/journal.pcbi.1008165. eCollection 2020 Sep.
Combining information from multiple sources is a fundamental operation performed by networks of neurons in the brain, whose general principles are still largely unknown. Experimental evidence suggests that combination of inputs in cortex relies on nonlinear summation. Such nonlinearities are thought to be fundamental to perform complex computations. However, these non-linearities are inconsistent with the balanced-state model, one of the most popular models of cortical dynamics, which predicts networks have a linear response. This linearity is obtained in the limit of very large recurrent coupling strength. We investigate the stationary response of networks of spiking neurons as a function of coupling strength. We show that, while a linear transfer function emerges at strong coupling, nonlinearities are prominent at finite coupling, both at response onset and close to saturation. We derive a general framework to classify nonlinear responses in these networks and discuss which of them can be captured by rate models. This framework could help to understand the diversity of non-linearities observed in cortical networks.
整合来自多个来源的信息是大脑神经元网络执行的一项基本操作,但其基本原理在很大程度上仍不清楚。实验证据表明,皮质中的输入组合依赖于非线性求和。这些非线性被认为是执行复杂计算的基础。然而,这些非线性与平衡态模型不一致,平衡态模型是皮质动力学最流行的模型之一,该模型预测网络具有线性响应。这种线性性是在非常大的递归耦合强度的极限下获得的。我们研究了作为耦合强度函数的尖峰神经元网络的静态响应。我们表明,虽然在强耦合下出现线性传递函数,但在有限耦合下,无论是在响应开始时还是接近饱和时,非线性都很明显。我们得出了一个一般的框架来对这些网络中的非线性响应进行分类,并讨论了它们中的哪些可以用率模型来捕捉。该框架有助于理解在皮质网络中观察到的多种非线性。