Ke Ming, Hou Yaru, Zhang Li, Liu Guangyao
School of Computer and Communication, Lanzhou University of Technology, Lanzhou, China.
Hospital of Lanzhou University of Technology, Lanzhou University of Technology, Lanzhou, China.
Front Neurosci. 2024 May 7;18:1363255. doi: 10.3389/fnins.2024.1363255. eCollection 2024.
Many resting-state functional magnetic resonance imaging (rs-fMRI) studies have shown that the brain networks are disrupted in adolescent patients with juvenile myoclonic epilepsy (JME). However, previous studies have mainly focused on investigating brain connectivity disruptions from the perspective of static functional connections, overlooking the dynamic causal characteristics between brain network connections. In our study involving 37 JME patients and 35 Healthy Controls (HC), we utilized rs-fMRI to construct whole-brain functional connectivity network. By applying graph theory, we delved into the altered topological structures of the brain functional connectivity network in JME patients and identified abnormal regions as key regions of interest (ROIs). A novel aspect of our research was the application of a combined approach using the sliding window technique and Granger causality analysis (GCA). This method allowed us to delve into the dynamic causal relationships between these ROIs and uncover the intricate patterns of dynamic effective connectivity (DEC) that pervade various brain functional networks. Graph theory analysis revealed significant deviations in JME patients, characterized by abnormal increases or decreases in metrics such as nodal betweenness centrality, degree centrality, and efficiency. These findings underscore the presence of widespread disruptions in the topological features of the brain. Further, clustering analysis of the time series data from abnormal brain regions distinguished two distinct states indicative of DEC patterns: a state of strong connectivity at a lower frequency (State 1) and a state of weak connectivity at a higher frequency (State 2). Notably, both states were associated with connectivity abnormalities across different ROIs, suggesting the disruption of local properties within the brain functional connectivity network and the existence of widespread multi-functional brain functional networks damage in JME patients. Our findings elucidate significant disruptions in the local properties of whole-brain functional connectivity network in patients with JME, revealing causal impairments across multiple functional networks. These findings collectively suggest that JME is a generalized epilepsy with localized abnormalities. Such insights highlight the intricate network dysfunctions characteristic of JME, thereby enriching our understanding of its pathophysiological features.
许多静息态功能磁共振成像(rs-fMRI)研究表明,青少年肌阵挛癫痫(JME)患者的脑网络存在破坏。然而,以往的研究主要集中在从静态功能连接的角度研究脑连接性破坏,而忽略了脑网络连接之间的动态因果特征。在我们纳入37例JME患者和35名健康对照(HC)的研究中,我们利用rs-fMRI构建全脑功能连接网络。通过应用图论,我们深入研究了JME患者脑功能连接网络的拓扑结构变化,并将异常区域确定为关键感兴趣区域(ROI)。我们研究的一个新方面是应用了一种结合滑动窗口技术和格兰杰因果分析(GCA)的方法。这种方法使我们能够深入研究这些ROI之间的动态因果关系,并揭示遍及各种脑功能网络的复杂动态有效连接(DEC)模式。图论分析显示JME患者存在显著偏差,其特征是节点中介中心性、度中心性和效率等指标出现异常增加或减少。这些发现强调了脑拓扑特征中存在广泛的破坏。此外,对来自异常脑区的时间序列数据进行聚类分析,区分出两种不同的状态,表明了DEC模式:低频下的强连接状态(状态1)和高频下的弱连接状态(状态2)。值得注意的是,这两种状态都与不同ROI之间的连接异常有关,表明JME患者脑功能连接网络内局部特性的破坏以及广泛的多功能脑功能网络损伤的存在。我们的研究结果阐明了JME患者全脑功能连接网络局部特性的显著破坏,揭示了多个功能网络之间的因果损伤。这些发现共同表明JME是一种具有局部异常的全身性癫痫。这些见解突出了JME特有的复杂网络功能障碍,从而丰富了我们对其病理生理特征的理解。