IEEE Trans Neural Syst Rehabil Eng. 2022;30:2097-2106. doi: 10.1109/TNSRE.2022.3191809. Epub 2022 Aug 4.
Rhythmic oscillation is crucial for information transmission and neural communication among different brain areas. Stochastic resonance (SR) can evoke different patterns of neural oscillation. However, the characteristics of network resonance and underlying dynamical mechanisms are still unclear. In this paper, a biological model of cortical network is established and its dynamical response to external periodic stimulation is investigated. We explore the oscillatory resonance of excitatory and inhibitory populations in cortical network. It is found that the intrinsic parameters of neural populations determine the extent of resonant activity, indicating that the firing rate exhibits coherent oscillation when the frequency of external stimulation is close to intrinsic frequency of neural population. In addition, the nonlinear dynamics of cortical network in oscillatory resonance can be represented by helical manifolds in low-dimensional state space. The geometry of neural manifolds reveals the periodic dynamics and state transition in oscillatory resonance. Moreover, time delay in chemical synapses can induce multiple resonances, which appear intermittently at integer multiples of the period of input signal. The dynamical response of neural population achieves maximal periodically, due to the transition of network states induced by time delay. Furthermore, mean-field theory is applied to analyze theoretical dynamic of cortical networks with time delay and demonstrate the effective transmission of stimulation information via oscillatory resonance in the brain. Consequently, the obtained results contribute to the improvement of neuromodulation for neurological disease from the viewpoint of the neural basis.
节律性振荡对于不同脑区之间的信息传递和神经通讯至关重要。随机共振(Stochastic Resonance,SR)可以引发不同的神经振荡模式。然而,网络共振的特征和潜在的动力学机制尚不清楚。本文建立了一个皮质网络的生物模型,并研究了其对外部周期性刺激的动力学响应。我们探讨了皮质网络中兴奋性和抑制性群体的振荡共振。结果发现,神经群体的固有参数决定了共振活动的程度,表明当外部刺激的频率接近神经群体的固有频率时,放电率会表现出相干振荡。此外,在振荡共振中,皮质网络的非线性动力学可以用低维状态空间中的螺旋流形来表示。神经流形的几何形状揭示了振荡共振中的周期性动力学和状态转变。此外,化学突触中的时滞可以诱导多个共振,这些共振在输入信号周期的整数倍处间歇出现。由于时滞引起的网络状态的转变,神经元群体的动力学响应达到了周期性的最大值。此外,平均场理论被应用于分析具有时滞的皮质网络的理论动力学,并通过大脑中的振荡共振来证明刺激信息的有效传递。因此,这些结果从神经基础的角度为神经调节治疗神经疾病提供了参考。