论文标题

关于神经元网络中雪崩形状和活动功率谱的缩放

On the scaling of avalanche shape and activity power spectrum in neuronal networks

论文作者

Nandi, Manoj K., Sarracino, Alessandro, Herrmann, Hans J., de Arcangelis, Lucilla

论文摘要

自然界中的许多系统都表现出具有无尺度特征的雪崩动力学。已经提出了一种一般的缩放理论,该理论对于crack噪声噪声中的临界雪崩轮廓提出了预测,预测了倒塌的雪崩形状,以及活性功率谱的缩放率作为棕色噪声。最近,在体外和体内在神经元系统中测量的神经元雪崩的特征非常关注。尽管证明了普遍的特征,证实了一般缩放理论的有效性,但在相同条件下对功率谱缩放的并行研究没有进行。令人困惑的观察结果是,在大多数健康的神经元系统中,功率谱表现出接近$ 1/f $的行为,而不是棕色的噪音。在这里,我们对具有短期可塑性参数的集成和消防神经元模型的雪崩形状和功率谱的缩放行为进行数值研究,以便将系统调整为关键。我们确认,在关键时期,平均雪崩大小和雪崩概况符合一般的雪崩标度理论。但是,对于具有30 \%抑制网络的完全兴奋性网络和系统,功率谱始终表现出棕色噪声行为。相反,在系统略有偏低的系统中观察到接近$ 1/f $噪声的行为。结果表明,功率谱是确定神经元活动与关键性的良好指标。

Many systems in Nature exhibit avalanche dynamics with scale-free features. A general scaling theory has been proposed for critical avalanche profiles in crackling noise, predicting the collapse onto a universal avalanche shape, as well as the scaling behaviour of the activity power spectrum as Brown noise. Recently, much attention has been given to the profile of neuronal avalanches, measured in neuronal systems in vitro and in vivo. Although a universal profile was evidenced, confirming the validity of the general scaling theory, the parallel study of the power spectrum scaling under the same conditions was not performed. The puzzling observation is that in the majority of healthy neuronal systems the power spectrum exhibits a behaviour close to $1/f$, rather than Brown, noise. Here we perform a numerical study of the scaling behaviour of avalanche shape and power spectrum for a model of integrate and fire neurons with a short-term plasticity parameter able to tune the system to criticality. We confirm that, at criticality, the average avalanche size and the avalanche profile fulfill the general avalanche scaling theory. However, the power spectrum consistently exhibits Brown noise behaviour, for both fully excitatory networks and systems with 30\% inhibitory networks. Conversely, a behaviour closer to $1/f$ noise is observed in systems slightly off-criticality. Results suggest that the power spectrum is a good indicator to determine how close neuronal activity is to criticality.

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