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Modeling of spontaneous synchronized periodic activity observed in in vitro networks

机译:在体外网络中观察到的自发同步周期性活动的建模

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Recently Segev et al. (Phys. Rev. Lett. 88 (2002) 118102; Phys. Rev. E 64 (2001) 011920) have done long-term measurements of spontaneous activity of cortical cell neural networks placed on multi-electrode arrays. Their observations differ from predictions of current neural network models in many features. The aim of this paper is to show that the same EI network model introduced in a previous paper (Scarpetta et al., NIPS, Vol. 13, 2001) by one of us Z. Li and J. Hertz, to model driven activity and spike-timing-dependent-plasticity in cortical areas, is able to reproduce the experimental results of spontaneous activity of Segev et al. (Phys. Rev. Lett. 88 (2002) 118102; Phys. Rev. E 64 (2001) 011920) (and the observed power spectrum density (PSD) features), when we consider the model in isolation with intrinsic noise terms. Using preliminary analytical results as a guide line, we perform numerical simulations of the stochastic equations for the instantaneous firing rates. In one regime of parameters the network shows spontaneous synchronous periodic activity, and the PSD shows two peaks at the first and second harmonics, and a broad band at low frequency (indicating positive long range time correlations), in agreement with experiments. The two high peak in the PSD fades away when we increase the level of noise.
机译:最近,Segev等。 (Phys.Rev.Lett.88(2002)118102; Phys.Rev.E 64(2001)011920)已经对放置在多电极阵列上的皮质细胞神经网络的自发活性进行了长期测量。他们的观察结果在许多方面与当前神经网络模型的预测不同。本文的目的是证明我们的Z. Li和J. Hertz中的一个人在先前的论文(Scarpetta等,NIPS,第13卷,2001年)中引入了相同的EI网络模型,以模拟驱动的活动和皮层区域中与穗定时相关的可塑性,能够再现Segev等人自发活动的实验结果。 (Phys.Rev.Lett.88(2002)118102; Phys.Rev.E 64(2001)011920)(以及观察到的功率谱密度(PSD)特征),当我们将模型与固有噪声项隔离考虑时。以初步的分析结果为指导,我们对瞬时点火速率的随机方程进行了数值模拟。在一个参数范围内,网络显示出自发的同步周期性活动,并且PSD与实验一致,在一次和二次谐波处显示两个峰值,在低频处显示一个宽带(指示正的长时程相关性)。当我们增加噪声水平时,PSD中的两个高峰值逐渐消失。

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