Cui Dong, Li Han, Shao Hongyuan, Gu Guanghua, Guo Xiaonan, Li Xiaoli
Hebei Key Laboratory of Information Transmission and Signal Processing, Yanshan University, Qinhuangdao 066004, China.
School of Information Science and Engineering, Yanshan University, Qinhuangdao 066004, China.
Brain Sci. 2024 Feb 29;14(3):240. doi: 10.3390/brainsci14030240.
Mathematical modeling and computer simulation are important methods for understanding complex neural systems. The whole-brain network model can help people understand the neurophysiological mechanisms of brain cognition and functional diseases of the brain.
In this study, we constructed a resting-state whole-brain network model (WBNM) by using the Wendling neural mass model as the node and a real structural connectivity matrix as the edge of the network. By analyzing the correlation between the simulated functional connectivity matrix in the resting state and the empirical functional connectivity matrix, an optimal global coupling coefficient was obtained. Then, the waveforms and spectra of simulated EEG signals and four commonly used measures from graph theory and small-world network properties of simulated brain networks under different thresholds were analyzed.
The results showed that the correlation coefficient of the functional connectivity matrix of the simulated WBNM and empirical brain networks could reach a maximum value of 0.676 when the global coupling coefficient was set to 20.3. The simulated EEG signals showed rich waveform and frequency-band characteristics. The commonly used graph-theoretical measures and small-world properties of the constructed WBNM were similar to those of empirical brain networks. When the threshold was set to 0.22, the maximum correlation between the simulated WBNM and empirical brain networks was 0.709.
The constructed resting-state WBNM is similar to a real brain network to a certain extent and can be used to study the neurophysiological mechanisms of complex brain networks.
数学建模和计算机模拟是理解复杂神经系统的重要方法。全脑网络模型有助于人们理解大脑认知的神经生理机制以及大脑的功能性疾病。
在本研究中,我们构建了一个静息态全脑网络模型(WBNM),使用温德林神经团块模型作为节点,以真实的结构连接矩阵作为网络的边。通过分析静息态下模拟功能连接矩阵与经验功能连接矩阵之间的相关性,获得了最优全局耦合系数。然后,分析了模拟脑电信号的波形和频谱以及在不同阈值下模拟脑网络的图论和小世界网络特性的四个常用指标。
结果表明,当全局耦合系数设置为20.3时,模拟WBNM的功能连接矩阵与经验脑网络的相关系数可达最大值0.676。模拟脑电信号呈现出丰富的波形和频段特征。构建的WBNM的常用图论指标和小世界特性与经验脑网络相似。当阈值设置为0.22时,模拟WBNM与经验脑网络之间的最大相关性为0.709。
构建的静息态WBNM在一定程度上类似于真实脑网络,可用于研究复杂脑网络的神经生理机制。