Scaling of causal neural avalanches in a neutral model

Sakib Matin, T. Tenzin, W. Klein
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引用次数: 2

Abstract

Neural avalanches are collective firings of neurons that exhibit emergent scale-free behavior. Understanding the nature and distribution of these avalanches is an important element in understanding how the brain functions. We study a model of the brain for which the dynamics are governed by neutral theory. The neural avalanches are defined using causal connections between the firing neurons. We analyze the scaling of causal neural avalanches as the critical point is approached from the absorbing phase. By using cluster analysis tools from percolation theory, we characterize the critical properties of the neural avalanches. We identify the tuning parameters consistent with experiments. The scaling hypothesis provides a unified explanation of the power laws which characterize the critical point. The critical exponents characterizing the avalanche distributions and divergence of the response functions are consistent with the predictions of the scaling hypothesis. We use an universal scaling function for the avalanche profile to find that the firing rate for avalanches of different sizes shows data collapse after appropriate rescaling. We also find data collapse for the avalanche distribution functions, which is a stronger evidence of criticality than just the existence of power laws. Critical slowing-down and power law relaxation of avalanches is observed as the system is tuned to its critical point. We discuss how our results motivate future empirical studies of criticality in the brain.
中性模型中因果神经雪崩的标度
神经雪崩是神经元的集体放电,表现出紧急的无标度行为。了解这些雪崩的性质和分布是理解大脑如何运作的一个重要因素。我们研究了一个大脑模型,它的动力学是由中性理论控制的。神经雪崩是用放电神经元之间的因果联系来定义的。我们分析了从吸收阶段接近临界点时因果神经雪崩的尺度。利用渗流理论中的聚类分析工具,对神经雪崩的关键性质进行了表征。我们确定了与实验相符的调谐参数。标度假设为表征临界点的幂律提供了统一的解释。表征雪崩分布和响应函数散度的临界指数与标度假设的预测一致。我们使用雪崩剖面的通用缩放函数,发现不同规模雪崩的发射率在适当的重新缩放后显示数据崩溃。我们还发现雪崩分布函数的数据崩溃,这比幂律的存在更有力地证明了临界性。当系统调整到临界点时,观察到雪崩的临界减速和幂律松弛。我们讨论了我们的结果如何激励未来对大脑临界性的实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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