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关于尖峰的运动:人类基底神经节中类似湍流的神经元活动。

On the Motion of Spikes: Turbulent-Like Neuronal Activity in the Human Basal Ganglia.

作者信息

Andres Daniela

机构信息

Science and Technology School, National University of San Martin, Buenos Aires, Argentina.

出版信息

Front Hum Neurosci. 2018 Oct 24;12:429. doi: 10.3389/fnhum.2018.00429. eCollection 2018.

Abstract

Neuronal signals are usually characterized in terms of their discharge rate, a description inadequate to account for the complex temporal organization of spike trains. Complex temporal properties, which are characteristic of neuronal systems, can only be described with the appropriate, complex mathematical tools. Here, I apply high order structure functions to the analysis of neuronal signals recorded from parkinsonian patients during functional neurosurgery, recovering multifractal properties. To achieve an accurate model of such multifractality is critical for understanding the basal ganglia, since other non-linear properties, such as entropy, depend on the fractal properties of complex systems. I propose a new approach to the study of neuronal signals: to study spiking activity in terms of the velocity of spikes, defining it as the inverse function of the instantaneous frequency. I introduce a neural field model that includes a non-linear gradient field, representing neuronal excitability, and a diffusive term to consider the physical properties of the electric field. Multifractality is present in the model for a range of diffusion coefficients, and multifractal temporal properties are mirrored into space. The model reproduces the behavior of human basal ganglia neurons and shows that it is like that of turbulent fluids. The results obtained from the model predict that passive electric properties of neuronal activity, including ephaptic coupling, are far more relevant to the human brain than what is usually considered: passive electric properties determine the temporal and spatial organization of neuronal activity in the neural tissue.

摘要

神经元信号通常根据其放电率来表征,然而这种描述不足以解释尖峰序列复杂的时间组织。复杂的时间特性是神经元系统的特征,只能用适当的复杂数学工具来描述。在此,我将高阶结构函数应用于对帕金森病患者在功能神经外科手术期间记录的神经元信号的分析,以恢复多重分形特性。建立这样一个多重分形的精确模型对于理解基底神经节至关重要,因为其他非线性特性,如熵,取决于复杂系统的分形特性。我提出了一种研究神经元信号的新方法:根据尖峰的速度来研究尖峰活动,并将其定义为瞬时频率的反函数。我引入了一个神经场模型,该模型包括一个表示神经元兴奋性的非线性梯度场和一个考虑电场物理特性的扩散项。在一系列扩散系数的模型中存在多重分形,并且多重分形时间特性反映到了空间中。该模型再现了人类基底神经节神经元的行为,并表明其类似于湍流流体。从该模型获得的结果预测,神经元活动的被动电学特性,包括电突触耦合,对人类大脑的相关性远比通常认为的要高:被动电学特性决定了神经组织中神经元活动的时间和空间组织。

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