Department of Physics, Centre for Nonlinear Studies and Beijing-Hong Kong-Singapore Joint Centre for Nonlinear and Complex Systems (Hong Kong), Institute of Computational and Theoretical Studies, Hong Kong Baptist University, Kowloon Tong, Hong Kong SAR, China.
Centre for Integrative Neuroscience, Eberhard Karls University of Tübingen, Tübingen, Germany.
PLoS Comput Biol. 2022 Jan 31;18(1):e1009848. doi: 10.1371/journal.pcbi.1009848. eCollection 2022 Jan.
Cortical neural networks exhibit high internal variability in spontaneous dynamic activities and they can robustly and reliably respond to external stimuli with multilevel features-from microscopic irregular spiking of neurons to macroscopic oscillatory local field potential. A comprehensive study integrating these multilevel features in spontaneous and stimulus-evoked dynamics with seemingly distinct mechanisms is still lacking. Here, we study the stimulus-response dynamics of biologically plausible excitation-inhibition (E-I) balanced networks. We confirm that networks around critical synchronous transition states can maintain strong internal variability but are sensitive to external stimuli. In this dynamical region, applying a stimulus to the network can reduce the trial-to-trial variability and shift the network oscillatory frequency while preserving the dynamical criticality. These multilevel features widely observed in different experiments cannot simultaneously occur in non-critical dynamical states. Furthermore, the dynamical mechanisms underlying these multilevel features are revealed using a semi-analytical mean-field theory that derives the macroscopic network field equations from the microscopic neuronal networks, enabling the analysis by nonlinear dynamics theory and linear noise approximation. The generic dynamical principle revealed here contributes to a more integrative understanding of neural systems and brain functions and incorporates multimodal and multilevel experimental observations. The E-I balanced neural network in combination with the effective mean-field theory can serve as a mechanistic modeling framework to study the multilevel neural dynamics underlying neural information and cognitive processes.
皮质神经网络在自发动态活动中表现出高度的内部可变性,它们可以以多层次的特征(从神经元的微观不规则尖峰到宏观的局部场电位振荡)对外部刺激做出稳健可靠的反应。然而,目前仍然缺乏对自发和刺激诱发动力学中这些多层次特征进行综合研究,这些特征涉及到看似不同的机制。在这里,我们研究了具有生物合理性的兴奋-抑制(E-I)平衡网络的刺激-反应动力学。我们证实,处于临界同步转变状态的网络可以保持强大的内部可变性,但对外界刺激敏感。在这个动态区域,向网络施加刺激可以减少试验间的变异性,并在保持动力学临界性的同时改变网络的振荡频率。这些在不同实验中广泛观察到的多层次特征不能同时出现在非临界动力学状态中。此外,我们使用半解析平均场理论揭示了这些多层次特征的动力学机制,该理论从微观神经元网络推导出宏观网络场方程,从而可以通过非线性动力学理论和线性噪声逼近进行分析。这里揭示的通用动力学原理有助于更综合地理解神经系统和大脑功能,并将多模态和多层次的实验观察结果整合在一起。E-I 平衡神经网络与有效的平均场理论相结合,可以作为一种机制建模框架,用于研究神经信息和认知过程背后的多层次神经动力学。