论文标题
具有适应性的尖峰神经网络的确切平均场模型
Exact mean-field models for spiking neural networks with adaptation
论文作者
论文摘要
具有适应性的尖峰神经元网络已被证明能够再现广泛的神经活动,包括基于脑部疾病和正常功能的新兴种群爆发和尖峰同步。从峰值神经网络得出的确切平均场模型非常有价值,因为这些模型可用于确定单个神经元和网络参数如何相互作用以产生宏观网络行为。在本文中,我们得出并分析了具有尖峰频率适应的神经网络的一组精确的平均场方程。具体而言,我们的模型是Izhikevich神经元的网络,其中每个神经元由由二维系统组成的二维系统建模,该系统由二次集成和火方程以及实现尖峰频率适应的方程式组成。以前的工作得出了此类网络的平均场模型,依赖于适应变量足够缓慢的动力学的假设。但是,这种近似未能成功建立宏观描述与现实神经网络之间的确切对应关系,尤其是在适应时间常数不大的情况下。挑战在于如何通过包含适应变量的平均场表达来实现一组封闭的平均场方程。我们通过使用Lorentzian Ansatz与瞬间闭合方法相结合来解决这一挑战,以在热力学极限下到达平均场系统。由此产生的宏观描述能够在定性和定量上描述神经网络的集体动力学,包括滋补和爆发之间的过渡。
Networks of spiking neurons with adaption have been shown to be able to reproduce a wide range of neural activities, including the emergent population bursting and spike synchrony that underpin brain disorders and normal function. Exact mean-field models derived from spiking neural networks are extremely valuable, as such models can be used to determine how individual neuron and network parameters interact to produce macroscopic network behaviour. In the paper, we derive and analyze a set of exact mean-field equations for the neural network with spike frequency adaptation. Specifically, our model is a network of Izhikevich neurons, where each neuron is modeled by a two dimensional system consisting of a quadratic integrate and fire equation plus an equation which implements spike frequency adaptation. Previous work deriving a mean-field model for this type of network, relied on the assumption of sufficiently slow dynamics of the adaptation variable. However, this approximation did not succeeded in establishing an exact correspondence between the macroscopic description and the realistic neural network, especially when the adaptation time constant was not large. The challenge lies in how to achieve a closed set of mean-field equations with the inclusion of the mean-field expression of the adaptation variable. We address this challenge by using a Lorentzian ansatz combined with the moment closure approach to arrive at the mean-field system in the thermodynamic limit. The resulting macroscopic description is capable of qualitatively and quantitatively describing the collective dynamics of the neural network, including transition between tonic firing and bursting.