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Alternation of up and down states at a dynamical phase-transition of a neural network with spatiotemporal attractors

机译:具有时空吸引子的神经网络的动态相变上的上下状态的交替

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摘要

Complex collective activity emerges spontaneously in cortical circuits in vivo and in vitro, such as alternation of up and down states, precise spatiotemporal patterns replay, and power law scaling of neural avalanches. We focus on such critical features observed in cortical slices. We study spontaneous dynamics emerging in noisy recurrent networks of spiking neurons with sparse structured connectivity. The emerging spontaneous dynamics is studied, in presence of noise, with fixed connections. Note that no short-term synaptic depression is used. Two different regimes of spontaneous activity emerge changing the connection strength or noise intensity: a low activity regime, characterized by a nearly exponential distribution of firing rates with a maximum at rate zero, and a high activity regime, characterized by a nearly Gaussian distribution peaked at a high rate for high activity, with long-lasting replay of stored patterns. Between this two regimes, a transition region is observed, where firing rates show a bimodal distribution, with alternation of up and down states. In this region, one observes neuronal avalanches exhibiting power laws in size and duration, and a waiting time distribution between successive avalanches which shows a non-monotonic behavior. During periods of high activity (up states) consecutive avalanches are correlated, since they are part of a short transient replay initiated by noise focusing, and waiting times show a power law distribution. One can think at this critical dynamics as a reservoire of dynamical patterns for memory functions.
机译:复杂的集体活动在体内和体外自发地在皮质回路中出现,例如上下状态的交替,精确的时空模式重播以及神经雪崩的幂律定标。我们关注于在皮质切片中观察到的这些关键特征。我们研究稀疏结构化连接的尖峰神经元的噪声循环网络中出现的自发动力学。在出现噪声的情况下,使用固定连接对新兴的自发动力学进行了研究。注意,没有使用短期的突触抑制。有两种不同的自发活动状态,它们会改变连接强度或噪声强度:低活动状态,其特征是发射速率几乎为指数分布,速率为零时最大值;以及高活动状态,其特征在于接近高斯分布,峰值为零。高速率,高活动性,并且可以长期重放存储的模式。在这两种状态之间,观察到一个过渡区域,在该过渡区域,燃烧速率显示出双峰分布,上下状态交替变化。在该区域中,观察到神经元雪崩在大小和持续时间上表现出幂律,并且在连续雪崩之间表现出非单调行为的等待时间分布。在活动频繁的阶段(启动状态),连续的雪崩是相关的,因为它们是噪声集中引发的短暂瞬态重放的一部分,并且等待时间显示出幂律分布。可以将这一关键动态视为存储功能的动态模式的库。

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