Li Yao, Li Qifan, Li Tao, Zhou Zijing, Xu Yong, Yang Yanli, Chen Junjie, Guo Hao
College of Information and Computer, Taiyuan University of Technology, Taiyuan, China.
College of Software, Taiyuan University of Technology, Taiyuan, China.
Front Neurosci. 2022 Apr 13;16:848363. doi: 10.3389/fnins.2022.848363. eCollection 2022.
Resting-state functional connectivity hypernetworks, in which multiple nodes can be connected, are an effective technique for diagnosing brain disease and performing classification research. Conventional functional hypernetworks can characterize the complex interactions within the human brain in a static form. However, an increasing body of evidence demonstrates that even in a resting state, neural activity in the brain still exhibits transient and subtle dynamics. These dynamic changes are essential for understanding the basic characteristics underlying brain organization and may correlate significantly with the pathological mechanisms of brain diseases. Therefore, considering the dynamic changes of functional connections in the resting state, we proposed methodology to construct resting state high-order functional hyper-networks (rs-HOFHNs) for patients with depression and normal subjects. Meanwhile, we also introduce a novel property (the shortest path) to extract local features with traditional local properties (cluster coefficients). A subgraph feature-based method was introduced to characterize information relating to global topology. Two features, local features and subgraph features that showed significant differences after feature selection were subjected to multi-kernel learning for feature fusion and classification. Compared with conventional hyper network models, the high-order hyper network obtained the best classification performance, 92.18%, which indicated that better classification performance can be achieved if we needed to consider multivariate interactions and the time-varying characteristics of neural interaction simultaneously when constructing a network.
静息态功能连接超网络是一种诊断脑部疾病和进行分类研究的有效技术,其中多个节点可以相互连接。传统的功能超网络能够以静态形式表征人类大脑内部的复杂相互作用。然而,越来越多的证据表明,即使在静息状态下,大脑中的神经活动仍表现出短暂而微妙的动态变化。这些动态变化对于理解大脑组织的基本特征至关重要,并且可能与脑部疾病的病理机制显著相关。因此,考虑到静息状态下功能连接的动态变化,我们提出了为抑郁症患者和正常受试者构建静息态高阶功能超网络(rs-HOFHNs)的方法。同时,我们还引入了一种新特性(最短路径),以便与传统局部特性(聚类系数)一起提取局部特征。引入了一种基于子图特征的方法来表征与全局拓扑相关的信息。对特征选择后显示出显著差异的局部特征和子图特征这两个特征进行多核学习,以进行特征融合和分类。与传统超网络模型相比,高阶超网络获得了最佳分类性能,即92.18%,这表明在构建网络时,如果我们需要同时考虑多变量相互作用和神经相互作用的时变特征,就能实现更好的分类性能。