Cai Lihui, Wei Xile, Liu Jing, Zhu Lin, Wang Jiang, Deng Bin, Yu Haitao, Wang Ruofan
School of Electrical and Information Engineering, Tianjin University, Tianjin, China.
Department of Neurology, Tangshan Gongren Hospital, Tangshan, Hebei, China.
Front Neurosci. 2020 Feb 18;14:51. doi: 10.3389/fnins.2020.00051. eCollection 2020.
Growing evidence links impairment of brain functions in Alzheimer's disease (AD) with disruptions of brain functional connectivity. However, whether the AD brain shows similar changes from a dynamic or cross-frequency view remains poorly explored. This paper provides an effective framework to investigate the properties of multiplex brain networks in AD considering inter-frequency and temporal dynamics. Using resting-state EEG signals, two types of multiplex networks were reconstructed separately considering the network interactions between different frequency bands or time points. We further applied multiplex network features to characterize functional integration and segregation of the cross-frequency or time-varying networks. Finally, machine learning methods were employed to evaluate the performance of multiplex-network-based indexes for detection of AD. Results revealed that the brain networks of AD patients are disrupted with reduced segregation particularly in the left occipital area for both cross-frequency and time-varying networks. However, the alteration of integration differs among brain regions and may show an increasing trend in the frontal area of AD brain. By combining the features of integration and segregation in time-varying networks, the best classification performance was achieved with an accuracy of 92.5%. These findings suggest that our multiplex framework can be applied to explore functional integration and segregation of brain networks and characterize the abnormalities of brain function. This may shed new light on the brain network analysis and extend our understanding of brain function in patients with neurological diseases.
越来越多的证据表明,阿尔茨海默病(AD)中的脑功能损害与脑功能连接的破坏有关。然而,从动态或跨频率角度来看,AD大脑是否表现出类似的变化仍未得到充分探索。本文提供了一个有效的框架,用于研究考虑频率间和时间动态的AD中多重脑网络的特性。使用静息态脑电图信号,分别考虑不同频段或时间点之间的网络相互作用,重建了两种类型的多重网络。我们进一步应用多重网络特征来表征跨频率或时变网络的功能整合和分离。最后,采用机器学习方法评估基于多重网络的指标对AD检测的性能。结果显示,AD患者的脑网络受到破坏,分离减少,尤其是在跨频率和时变网络的左枕叶区域。然而,整合的改变在不同脑区有所不同,并且在AD大脑的额叶区域可能呈现增加趋势。通过结合时变网络中整合和分离的特征,实现了最佳分类性能,准确率为92.5%。这些发现表明,我们的多重框架可用于探索脑网络的功能整合和分离,并表征脑功能异常。这可能为脑网络分析提供新的思路,并扩展我们对神经疾病患者脑功能的理解。