Lu Lulu, Gao Zhuoheng, Wei Zhouchao, Yi Ming
School of Mathematics and Physics, China University of Geosciences, Wuhan 430074, China.
Chaos. 2023 Jan;33(1):013127. doi: 10.1063/5.0126890.
Previous studies have shown that astrocytes are involved in information processing and working memory (WM) in the central nervous system. Here, the neuron-astrocyte network model with biological properties is built to study the effects of excitatory-inhibitory balance and neural network structures on WM tasks. It is found that the performance metrics of WM tasks under the scale-free network are higher than other network structures, and the WM task can be successfully completed when the proportion of excitatory neurons in the network exceeds 30%. There exists an optimal region for the proportion of excitatory neurons and synaptic weight that the memory performance metrics of the WM tasks are higher. The multi-item WM task shows that the spatial calcium patterns for different items overlap significantly in the astrocyte network, which is consistent with the formation of cognitive memory in the brain. Moreover, complex image tasks show that cued recall can significantly reduce systematic noise and maintain the stability of the WM tasks. The results may contribute to understand the mechanisms of WM formation and provide some inspirations into the dynamic storage and recall of memory.
先前的研究表明,星形胶质细胞参与中枢神经系统的信息处理和工作记忆(WM)。在此,构建具有生物学特性的神经元 - 星形胶质细胞网络模型,以研究兴奋性 - 抑制性平衡和神经网络结构对WM任务的影响。研究发现,无标度网络下WM任务的性能指标高于其他网络结构,且当网络中兴奋性神经元的比例超过30%时,WM任务能够成功完成。兴奋性神经元比例和突触权重存在一个最优区域,在此区域内WM任务的记忆性能指标更高。多项目WM任务表明,不同项目的空间钙模式在星形胶质细胞网络中显著重叠,这与大脑中认知记忆的形成一致。此外,复杂图像任务表明,线索回忆可以显著降低系统噪声并维持WM任务的稳定性。这些结果可能有助于理解WM形成的机制,并为记忆的动态存储和回忆提供一些启示。