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Hub Patterns-Based Detection of Dynamic Functional Network Metastates in Resting State: A Test-Retest Analysis

机译:基于集线器模式的静止状态动态功能网络元状态检测:重测分析

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摘要

The spontaneous dynamic characteristics of resting-state functional networks contain much internal brain physiological or pathological information. The metastate analysis of brain functional networks is an effective technique to quantify the essence of brain functional connectome dynamics. However, the widely used functional connectivity-based metastate analysis ignored the topological structure, which could be locally reflected by node centrality. In this study, 23 healthy young volunteers (21–26 years) were recruited and scanned twice with a 1-week interval. Based on the time sequences of node centrality, we promoted a node centrality-based clustering method to find metastates of functional connectome and conducted a test-retest experiment to assess the stability of those identified metastates using the described method. The hub regions of metastates were further compared with the structural networks’ organization to depict its potential relationship with brain structure. Results of extracted metastates showed repeatable dynamic features between repeated scans and high overlapping rate of hub regions with brain intrinsic sub-networks. These identified hub patterns from metastates further highly overlapped with the structural hub regions. These findings indicated that the proposed node centrality-based metastates detection method could reveal reliable and meaningful metastates of spontaneous dynamics and indicate the underlying nature of brain dynamics as well as the potential relationship between these dynamics and the organization of the brain connectome.
机译:静止状态功能网络的自发动态特征包含许多内部大脑生理或病理信息。脑功能网络的元态分析是一种有效的技术,可以量化脑功能连接体动力学的本质。但是,广泛使用的基于功能连接性的元状态分析忽略了拓扑结构,该结构可以由节点中心性局部反映。在这项研究中,招募了23名健康的年轻志愿者(21-26岁),并以1周的间隔进行了两次扫描。基于节点中心性的时间顺序,我们提出了一种基于节点中心性的聚类方法来查找功能性连接体的元态,并进行了重新测试实验,以使用所述方法评估那些鉴定出的元态的稳定性。进一步将元态的中心区域与结构网络的组织进行了比较,以描绘其与大脑结构的潜在关系。提取的元态结果显示出重复扫描之间的可重复动态特征,以及具有大脑固有子网的中枢区域高重叠率。这些从亚元态中识别出的枢纽模式与结构性枢纽区域进一步高度重叠。这些发现表明,提出的基于节点中心性的元态检测方法可以揭示自发动力学的可靠且有意义的元态,并表明脑动力学的内在本质以及这些动力学与脑连接体组织之间的潜在关系。

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