Zhang Luxiao, Shen Xiao, Chu Chunguang, Liu Shang, Wang Jiang, Wang Yanlin, Zhang Jinghui, Cao Tingyu, Wang Fei, Zhu Xiaodong, Liu Chen
School of Electrical and Information Engineering, Tianjin University, Tianjin, 300072 China.
Department of Neurology, Tianjin Neurological Institute, Tianjin Medical University General Hospital, Tianjin, 300052 China.
Cogn Neurodyn. 2024 Oct;18(5):2589-2604. doi: 10.1007/s11571-023-10016-6. Epub 2024 Apr 18.
Graph-theory-based topological impairment of the whole-brain network has been verified to be one of the characteristics of mild cognitive impairment (MCI). However, two major challenges impede the further understanding of topological features for the personalized functional connectivity network of early Parkinson's disease (ePD) with MCI. The uncertain of characteristic frequency band reflecting the abnormality of ePD-MCI and the setting of fixed length of sliding window at a second level in the construction of conventional brain network both limit a deeper exploration of network characteristics for ePD-MCI. Thus, a convolutional neural network is constructed first and the gradient-weighted class activation mapping method is used to determine the characteristic frequency band of the ePD-MCI. It is found that 1-4 Hz is a characteristic frequency band for recognizing MCI in ePD. Then, we propose a microstate window construction method based on electroencephalography microstate sequences to build brain functional network. By exploring the graph-theory-based topological features and their clinical correlations with cognitive impairment, it is shown that the clustering coefficient, global efficiency, and local efficiency of the occipital lobe significantly decrease in ePD-MCI, which reflects the low degree of nodes interconnection, low efficiency of parallel information transmission and low communication efficiency among the nodes in the brain network of the occipital lobe may be the neural marker of ePD-MCI. The finding of personalized topological impairments of the brain network may be a potential characteristic of early PD-MCI.
The online version contains supplementary material available at 10.1007/s11571-023-10016-6.
基于图论的全脑网络拓扑损伤已被证实是轻度认知障碍(MCI)的特征之一。然而,两个主要挑战阻碍了对早期帕金森病(ePD)合并MCI的个性化功能连接网络拓扑特征的进一步理解。反映ePD-MCI异常的特征频段不确定以及传统脑网络构建中二级滑动窗口固定长度的设置,都限制了对ePD-MCI网络特征的深入探索。因此,首先构建卷积神经网络,并使用梯度加权类激活映射方法来确定ePD-MCI的特征频段。发现1-4Hz是识别ePD中MCI的特征频段。然后,我们提出一种基于脑电图微状态序列的微状态窗口构建方法来构建脑功能网络。通过探索基于图论的拓扑特征及其与认知障碍的临床相关性,结果表明,ePD-MCI患者枕叶的聚类系数、全局效率和局部效率显著降低,这反映了枕叶脑网络中节点互连程度低、并行信息传输效率低以及节点间通信效率低,可能是ePD-MCI的神经标志物。脑网络个性化拓扑损伤的发现可能是早期PD-MCI的一个潜在特征。
在线版本包含可在10.1007/s11571-023-10016-6获取的补充材料。