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The dynamic properties of a brain network during working memory based on the algorithm of cross-frequency coupling

机译:基于跨频耦合算法的工作记忆中脑网络的动态特性

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Working memory (WM) refers to a memory system with limited energy for short-term maintenance and plays an important role in cognitive functions. At present, research regarding WM mostly focuses on the coordination between neural signals in the signal microelectrode channel. However, how neural signals coordinate the coding of WM at the network level is rarely studied. Cross-frequency coupling (CFC) reflects the coordinated effect between different frequency components (e.g., theta and gamma) of local field potentials (LFPs) during WM. In this study, we try to map the changes that occur in the brain networks during WM at the level of CFC between theta-gamma of LFPs. First, a 16-channel brain network by using the CFC between theta-gamma of LFPs during WM was constructed. Then, the dynamic properties of the brain network during WM were analyzed based on graph theory. Experimental results show that the LFPs power increased at the WM state than at resting stat, but decreased across learning; the CFC between theta-gamma increased with learning days and phase-amplitude coupling (PAC) in the WM state was higher than that in free choice state and rest state; the changes of average degree, average shortest path length and global efficiency had significant difference on learning days. We can indicate that the CFC between theta-gamma in the network plays an important role in the WM formation. Furthermore, correct storage of WM information will not change local information transmission and the small-world attribute, while, it can increase the network connection and efficiency of information transmission.
机译:工作存储器(WM)是指用于短期维护的能量有限的内存系统,并在认知功能中发挥重要作用。目前,关于WM的研究主要侧重于信号微电极通道中神经信号之间的协调。然而,很少研究如何在网络级别协调WM编码的神经信号。横频耦合(CFC)反映了在WM期间局部场电位(例如,LFP)的不同频率分量(例如,THETA和伽马)之间的协调效果。在这项研究中,我们尝试在WM期间映射大脑网络中的更改在LFPS之间的CFC水平的WM期间。首先,构建了通过在WM期间使用的LFPS之间使用CFC的16通道脑网络。然后,基于图论分析了WM期间脑网络的动态特性。实验结果表明,LFPS功率在WM态增加而不是休息统计数据,但在学习中减少;在WM状态下与学习日和相位幅度耦合(PAC)增加的CFC高于自由选择状态和休息状态;平均程度,平均最短路径长度和全球效率的变化对学习日具有显着差异。我们可以表明,网络中Theta-Gamma之间的CFC在WM地层中起重要作用。此外,正确存储WM信息不会改变本地信息传输和小世界属性,而它可以提高网络连接和信息传输效率。

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