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在方形感觉控制下丘脑-皮质神经网络中非线性波形转变的动态预测

Dynamic prediction of nonlinear waveform transitions in a thalamo-cortical neural network under a square sensory control.

作者信息

Xu Yeyin, Wu Ying

机构信息

State Key Laboratory for Strength and Vibration of Mechanical Structures, Xi'an Jiaotong University, Xi'an, 710049 People's Republic of China.

School of Aerospace Engineering, Xi'an Jiaotong University, Xi'an, 710049 Shaanxi People's Republic of China.

出版信息

Cogn Neurodyn. 2024 Dec;18(6):3647-3661. doi: 10.1007/s11571-023-10060-2. Epub 2024 Jan 29.

Abstract

Waveform transitions have high correlation to spike wave discharges and polyspike wave discharges in seizure dynamics. This research adopts nonlinear dynamics to study the waveform transitions in a cerebral thalamo-coritcal neural network subjected to a square sensory control via discretization and mappings. The continuous non-smooth network outputs are discretized to establish implicit mapping chains or loops for stable and unstable waveform solutions. Bifurcation trees of period-1 to period-2 waveforms as well as independent bifurcation tree of period-3 to period-6 waveforms are obtained theoretically. The independent bifurcation tree should be taken much care during the control since it coexists with global stable waveforms but contains more spikes. Stability and bifurcations of the nonlinear waveform transitions are predicted by eigenvalue analysis of the discretized model. The transient process from unstable waveform to stable waveform is illustrated. The spike adding and period-doubling phenomenon are presented for illustration of the network response after control. The dominant frequency components and the detailed quantity levels of the corresponding amplitudes are exhibited in the harmonic spectrums which can be implemented to controller design for reduction and elimination of the absence seizures. This research presents new perspectives for the waveform transitions and provides theories and data for seizure prediction and regulation.

摘要

在癫痫发作动力学中,波形转换与棘波放电和多棘波放电高度相关。本研究采用非线性动力学,通过离散化和映射来研究受方形感觉控制的丘脑 - 皮质神经网络中的波形转换。对连续的非光滑网络输出进行离散化,以建立稳定和不稳定波形解的隐式映射链或环。从理论上获得了周期1到周期2波形的分岔树以及周期3到周期6波形的独立分岔树。在控制过程中应特别关注独立分岔树,因为它与全局稳定波形共存,但包含更多的尖峰。通过对离散模型的特征值分析来预测非线性波形转换的稳定性和分岔。说明了从不稳定波形到稳定波形的瞬态过程。给出了尖峰添加和倍周期现象,以说明控制后网络的响应。谐波频谱中展示了主导频率成分和相应幅度的详细数量级,可用于设计控制器以减少和消除失神发作。本研究为波形转换提供了新的视角,并为癫痫发作的预测和调控提供了理论和数据。

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