School of Information Science and Engineering, Changzhou University, Changzhou 213164, China,and Changzhou Key Laboratory of Biomedical Information Technology, Changzhou University, Changzhou 213164, China.
School of Information Science and Engineering, Changzhou University, Changzhou 213164, China.
Front Biosci (Landmark Ed). 2017 Jun 1;22(10):1634-1643. doi: 10.2741/4562.
Nowadays, there is a lot of interest in assessing functional interactions between key brain regions. In this paper, Granger causality analysis (GCA) and motif structure are adopted to study directed connectivity of brain default mode networks (DMNs) in resting state. Firstly, the time series of functional magnetic resonance imaging (fMRI) data in resting state were extracted, and the causal relationship values of the nodes representing related brain regions are analyzed in time domain to construct a default network. Then, the network structures were searched from the default networks of controls and patients to determine the fixed connection mode in the networks. The important degree of motif structures in directed connectivity of default networks was judged according to p-value and Z-score. Both node degree and average distance were used to analyze the effect degree an information transfer rate of brain regions in motifs and default networks, and efficiency of the network. Finally, activity and functional connectivity strength of the default brain regions are researched according to the change of energy distributions between the normals and the patients' brain regions. Experimental results demonstrate that, both normal subjects and stroke patients have some corresponding fixed connection mode of three nodes, and the efficiency and power spectrum of the patient's default network is somewhat lower than that of the normal person. In particular, the Right Posterior Cingulate Gyrus (PCG.R) has a larger change in functional connectivity and its activity. The research results verify the feasibility of the application of GCA and motif structure to study the functional connectivity of default networks in resting state.
如今,人们对评估大脑关键区域之间的功能交互非常感兴趣。在本文中,采用格兰杰因果分析(GCA)和模体结构来研究静息状态下大脑默认模式网络(DMN)的有向连通性。首先,从静息状态的功能磁共振成像(fMRI)数据中提取时间序列,并在时域中分析代表相关脑区的节点的因果关系值,以构建默认网络。然后,从对照组和患者的默认网络中搜索网络结构,以确定网络中的固定连接模式。根据 p 值和 Z 分数判断模体结构在默认网络有向连通性中的重要程度。根据节点度和平均距离分析模体和默认网络中脑区的信息传递率和网络效率。最后,根据正常人和患者大脑区域之间的能量分布变化,研究默认脑区的活动和功能连接强度。实验结果表明,正常人和中风患者都有一些对应的三个节点的固定连接模式,患者的默认网络的效率和功率谱稍低于正常人。特别是右后扣带回(PCG.R)的功能连接和活动有较大变化。研究结果验证了 GCA 和模体结构应用于研究静息状态下默认网络功能连通性的可行性。