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脑淀粉样血管病的皮质厚度和结构协方差网络改变:一项图论分析。

Cortical thickness and structural covariance network alterations in cerebral amyloid angiopathy: A graph theoretical analysis.

作者信息

Lin Yijun, Gao Bin, Du Yang, Li Mengyao, Liu Yanfang, Zhao Xingquan

机构信息

Department of Neurology, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.

Department of Neurology, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.

出版信息

Neurobiol Dis. 2025 Jun 15;210:106911. doi: 10.1016/j.nbd.2025.106911. Epub 2025 Apr 14.

Abstract

AIMS

This study investigates large-scale brain network alterations in cerebral amyloid angiopathy (CAA) using structural covariance network (SCN) analysis and graph theory based on 7 T MRI.

METHODS

We employed structural covariance network (SCN) analysis based on cortical thickness data from ultra-high field 7 T MRI to investigate network alterations in CAA patients. Graph theoretical analysis was applied to quantify topological properties, including small-worldness, nodal centrality, and network efficiency. Between-group differences were assessed using permutation tests and false discovery rate (FDR) correction.

RESULTS

CAA patients exhibited significant alterations in small-world properties, with decreased Gamma (p = 0.002) and Sigma (p < 0.001), suggesting a shift toward a less optimal network configuration. Local efficiency was significantly different between groups (p = 0.045), while global efficiency remained unchanged (p = 0.127), indicating regionally disrupted rather than globally impaired network efficiency. At the nodal level, the right superior frontal gyrus exhibited increased betweenness centrality (p = 0.013), whereas the right banks of the superior temporal sulcus, left postcentral gyrus, and left superior temporal gyrus showed significantly reduced centrality (all p < 0.05). Additionally, nodal degree and efficiency were altered in key memory-related and association regions, including the entorhinal cortex, fusiform gyrus, and temporal pole.

CONCLUSION

SCN analysis combined with graph theory offers a valuable approach for understanding disease-related connectivity disruptions and may contribute to the development of network-based biomarkers for CAA.

摘要

目的

本研究基于7T磁共振成像(MRI),采用结构协方差网络(SCN)分析和图论,研究脑淀粉样血管病(CAA)中大规模脑网络的改变。

方法

我们采用基于超高场7T MRI皮质厚度数据的结构协方差网络(SCN)分析,来研究CAA患者的网络改变。应用图论分析来量化拓扑特性,包括小世界特性、节点中心性和网络效率。使用置换检验和错误发现率(FDR)校正评估组间差异。

结果

CAA患者在小世界特性方面表现出显著改变,Gamma值降低(p = 0.002),Sigma值降低(p < 0.001),表明向不太优化的网络配置转变。组间局部效率有显著差异(p = 0.045),而全局效率保持不变(p = 0.127),表明网络效率是局部而非全局受损。在节点水平上,右侧额上回的中间中心性增加(p = 0.013),而颞上沟右侧脑回、左侧中央后回和左侧颞上回的中心性显著降低(均p < 0.05)。此外,关键记忆相关和联合区域,包括内嗅皮质、梭状回和颞极的节点度和效率发生了改变。

结论

SCN分析结合图论为理解疾病相关的连接中断提供了一种有价值的方法,可能有助于开发基于网络的CAA生物标志物。

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