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Noise-Induced Precursors of State Transitions in the Stochastic Wilson–Cowan Model

机译:随机Wilson-Cowan模型中状态转变的噪声诱导前体

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摘要

The Wilson–Cowan neural field equations describe the dynamical behavior of a 1-D continuum of excitatory and inhibitory cortical neural aggregates, using a pair of coupled integro-differential equations. Here we use bifurcation theory and small-noise linear stochastics to study the range of a phase transitions—sudden qualitative changes in the state of a dynamical system emerging from a bifurcation—accessible to the Wilson–Cowan network. Specifically, we examine saddle-node, Hopf, Turing, and Turing–Hopf instabilities. We introduce stochasticity by adding small-amplitude spatio-temporal white noise, and analyze the resulting subthreshold fluctuations using an Ornstein–Uhlenbeck linearization. This analysis predicts divergent changes in correlation and spectral characteristics of neural activity during close approach to bifurcation from below. We validate these theoretical predictions using numerical simulations. The results demonstrate the role of noise in the emergence of critically slowed precursors in both space and time, and suggest that these early-warning signals are a universal feature of a neural system close to bifurcation. In particular, these precursor signals are likely to have neurobiological significance as early warnings of impending state change in the cortex. We support this claim with an analysis of the in vitro local field potentials recorded from slices of mouse-brain tissue. We show that in the period leading up to emergence of spontaneous seizure-like events, the mouse field potentials show a characteristic spectral focusing toward lower frequencies concomitant with a growth in fluctuation variance, consistent with critical slowing near a bifurcation point. This observation of biological criticality has clear implications regarding the feasibility of seizure prediction.
机译:Wilson-Cowan神经场方程使用一对耦合的积分微分方程描述了一维连续的兴奋性和抑制性皮质神经聚集体的动力学行为。在这里,我们使用分叉理论和小噪声线性随机数研究Wilson-Cowan网络可访问的相变范围(从分叉处出现的动力学系统状态突然发生质变)。具体来说,我们研究了鞍节点,Hopf,Turing和Turing-Hopf不稳定性。我们通过添加小幅度的时空白噪声来引入随机性,并使用Ornstein-Uhlenbeck线性化分析由此产生的亚阈值波动。该分析预测了从下面接近分叉过程中神经活动的相关性和频谱特性的变化。我们使用数值模拟来验证这些理论预测。结果表明,噪声在空间和时间上都显着减慢了前体的出现,并表明这些预警信号是接近分叉的神经系统的普遍特征。特别地,这些前体信号可能具有神经生物学意义,作为即将发生的皮质状态改变的预警。我们通过对小鼠脑组织切片中记录的体外局部场电位进行分析来支持这一主张。我们表明,在导致自发性癫痫样事件出现的时期内,小鼠场电位显示出一个特征频谱,该频谱集中于低频,并伴随着波动方差的增长,与分叉点附近的临界减慢相一致。这种对生物学危险性的观察对于癫痫发作预测的可行性具有明确的含义。

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