Zhou Xia, Huang Chaojuan, Li Zhiwei, Li Mingxu, Yin Wenwen, Ren Mengmeng, Tang Yating, Yin Jiabin, Zheng Wenhui, Zhang Chao, Li Xueying, Wan Ke, Zhu Xiaoqun, Sun Zhongwu
Department of Neurology, the First Affiliated Hospital of Anhui Medical University, Hefei, China.
Department of Neurology, the First Affiliated Hospital of USTC, Hefei, China.
Brain Connect. 2024 Aug;14(6):327-339. doi: 10.1089/brain.2023.0092. Epub 2024 Jul 12.
Previous research has focused on static functional connectivity in gait disorders caused by cerebral small vessel disease (CSVD), neglecting dynamic functional connections and network attribution. This study aims to investigate alterations in dynamic functional network connectivity (dFNC) and topological organization variance in CSVD-related gait disorders. A total of 85 patients with CSVD, including 41 patients with CSVD and gait disorders (CSVD-GD), 44 patients with CSVD and non-gait disorders (CSVD-NGD), and 32 healthy controls (HC), were enrolled in this study. Five networks composed of 10 independent components were selected using independent component analysis. Sliding time window and -means clustering methods were used for dFNC analysis. The relationship between alterations in the dFNC properties and gait metrics was further assessed. Three reproducible dFNC states were determined (State 1: sparsely connected, State 2: intermediate pattern, and State 3: strongly connected). CSVD-GD showed significantly higher fractional windows (FW) and mean dwell time (MDT) in State 1 compared with CSVD-NGD. Higher local efficiency variance was observed in the CSVD-GD group compared with HC, but no differences were found in the global efficiency comparison. Both the FW and MDT in State 1 were negatively correlated with gait speed and step length, and the relationship between MDT of State 1 and gait speed was mediated by overall cognition, information processing speed, and executive function. Our study uncovered abnormal dFNC indicators and variations in topological organization in CSVD-GD, offering potential early prediction indicators and freshening insights into the underlying pathogenesis of gait disturbances in CSVD.
先前的研究集中在脑小血管病(CSVD)所致步态障碍中的静态功能连接,而忽略了动态功能连接和网络归属。本研究旨在调查CSVD相关步态障碍中动态功能网络连接性(dFNC)的改变以及拓扑组织方差。本研究共纳入85例CSVD患者,包括41例患有CSVD且有步态障碍的患者(CSVD-GD)、44例患有CSVD但无步态障碍的患者(CSVD-NGD)以及32名健康对照(HC)。使用独立成分分析选择了由10个独立成分组成的5个网络。采用滑动时间窗口和K均值聚类方法进行dFNC分析。进一步评估dFNC属性改变与步态指标之间的关系。确定了三种可重复的dFNC状态(状态1:稀疏连接,状态2:中间模式,状态3:强连接)。与CSVD-NGD相比,CSVD-GD在状态1下显示出显著更高的分数窗口(FW)和平均停留时间(MDT)。与HC相比,CSVD-GD组观察到更高的局部效率方差,但在全局效率比较中未发现差异。状态1下的FW和MDT均与步态速度和步长呈负相关,状态1的MDT与步态速度之间的关系由整体认知、信息处理速度和执行功能介导。我们的研究揭示了CSVD-GD中异常的dFNC指标和拓扑组织变化,提供了潜在的早期预测指标,并为CSVD中步态障碍的潜在发病机制提供了新的见解。