Department of Imaging, The First Affiliated Hospital of Fujian Medical University, Fuzhou, China.
Department of Imaging, The First Affiliated Hospital of Fujian Medical University, Fuzhou, China.
Brain Res. 2023 Aug 15;1813:148406. doi: 10.1016/j.brainres.2023.148406. Epub 2023 May 16.
Dynamic functional network connectivity (dFNC) patterns are successfully able to capture the time-varying features of intrinsic fluctuations throughout a scan. We explored dFNC alterations across the entire brain in patients with acute ischemic stroke (AIS) of the basal ganglia (BG).
Resting-state functional magnetic resonance imaging data were acquired from 26 patients with first-ever AIS in the BG and 26 healthy controls (HCs). Independent component analysis, the sliding window method, and the K-means clustering method were used to obtain reoccurring dynamic network connectivity patterns. Moreover, temporal features across diverse dFNC states were compared between the two groups, and the local and global efficiencies across states were analyzed to explore the characteristics of the topological networks among states.
Four dFNC states were characterized for comparison of dynamic brain network connectivity patterns. In contrast to the HC group, the AIS group spent a significantly higher fraction of time in State 1, which is characterized by a relatively weaker brain network connectome. Conversely, compared with HC, patients with AIS showed a lower mean dwell time in State 2, which was characterized by a relatively stronger brain network connectome. Additionally, functional networks exhibited variable efficiency of information transfer across 4 states.
AIS not only altered the interaction between the different dynamic networks but also promoted characteristic alterations in the temporal and topological features of large-scale dynamic network connectivity.
动态功能网络连接(dFNC)模式能够成功地捕捉整个扫描过程中内在波动的时变特征。我们探索了基底节(BG)急性缺血性中风(AIS)患者整个大脑的 dFNC 变化。
从 26 名首次出现 BG AIS 的患者和 26 名健康对照(HC)中获取静息状态功能磁共振成像数据。使用独立成分分析、滑动窗口方法和 K-均值聚类方法获得重复出现的动态网络连接模式。此外,比较了两组之间不同 dFNC 状态下的时间特征,并分析了状态之间的局部和全局效率,以探索状态之间拓扑网络的特征。
为了比较动态脑网络连接模式,我们对四个 dFNC 状态进行了特征描述。与 HC 组相比,AIS 组在状态 1 中花费的时间明显更长,这一状态的特征是相对较弱的脑网络连接图。相反,与 HC 相比,AIS 患者在状态 2 中的平均停留时间较短,这一状态的特征是相对较强的脑网络连接图。此外,功能网络在 4 个状态之间表现出可变的信息传递效率。
AIS 不仅改变了不同动态网络之间的相互作用,还促进了大规模动态网络连接的时间和拓扑特征的特征性改变。