Lu Yanjing, Li Yifan, Feng Qian, Shen Rong, Zhu Hao, Zhou Hua, Zhao Zhong
Department of Neurology, The Affiliated Suzhou Hospital of Nanjing Medical University, Suzhou, China.
Cerebrovasc Dis. 2022;51(1):92-101. doi: 10.1159/000517243. Epub 2021 Sep 17.
Altered white matter brain networks have been extensively studied in cerebral small vessel disease (SVD). However, there exists currently a deficiency of comprehending the performance of changes within the structural networks of the brain in cases with cerebral SVD and depression symptoms. The main aim of the present research is to study the network topology behaviors and features of rich-club organization in SVD patients using graph theory and diffusion tensor imaging (DTI) to characterize changes in the microstructure of the brain.
DTI datasets were acquired from 26 SVD patients with symptoms of depression (SVD + D) and 26 SVD patients without symptoms of depression (SVD - D), and a series of neuropsychological assessments were completed. A structural network was created using a deterministic fiber tracking method. The analysis of rich-club was performed in company with analysis of the global network features of the network to characterize the topological properties of all subjects.
DTI data were obtained from SVD patients who manifested symptoms of depression (SVD + D) and from control SVD patients (SVD - D). In comparison with SVD - D patients, SVD + D cases demonstrated a diminished coefficient of clustering along with lower global efficiencies and longer path length characteristics. Rich-club analysis showed SVD + D patients had decreased feeder connectivity and local connectivity strengths compared to SVD - D patients. Our data also showed that the feeder connections in the brain correlated significantly with the severity of depression in SVD + D patients.
Our study revealed that SVD patients with depressive symptoms have disrupted white matter networks that characteristically have reduced network efficiency compared to the networks in other SVD patients. Disrupted information interactions among the regions of nonrich-club and rich-club in SVD cases are related to the severity of depression. Our data suggest that DTI may be utilized as an appropriate biomarker for the diagnosis of depression in comorbid SVD patients.
脑白质网络改变在脑小血管病(SVD)中已得到广泛研究。然而,目前对于合并脑SVD及抑郁症状的病例中脑结构网络内变化的表现仍缺乏了解。本研究的主要目的是利用图论和扩散张量成像(DTI)来研究SVD患者脑网络拓扑行为和富俱乐部组织特征,以表征脑微观结构的变化。
从26例有抑郁症状的SVD患者(SVD + D)和26例无抑郁症状的SVD患者(SVD - D)获取DTI数据集,并完成一系列神经心理学评估。使用确定性纤维追踪方法创建结构网络。在对网络的全局网络特征进行分析的同时进行富俱乐部分析,以表征所有受试者的拓扑特性。
从有抑郁症状的SVD患者(SVD + D)和对照SVD患者(SVD - D)获取了DTI数据。与SVD - D患者相比,SVD + D病例的聚类系数降低,同时具有较低的全局效率和较长的路径长度特征。富俱乐部分析显示,与SVD - D患者相比,SVD + D患者的馈线连接性和局部连接强度降低。我们的数据还表明,SVD + D患者脑中的馈线连接与抑郁严重程度显著相关。
我们的研究表明,有抑郁症状的SVD患者的白质网络遭到破坏,与其他SVD患者的网络相比,其网络效率显著降低。SVD病例中非富俱乐部和富俱乐部区域之间信息交互的破坏与抑郁严重程度相关。我们的数据表明,DTI可作为合并SVD患者抑郁诊断的合适生物标志物。