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Abnormal Dynamic Functional Network Connectivity and Graph Theoretical Analysis in Major Depressive Disorder

机译:严重抑郁症患者异常动态功能网络的连通性和图论分析

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Major depressive disorder (MDD) is a complex mood disorder characterized by persistent and overwhelming depression. Previous studies have identified abnormalities in large scale functional brain networks in MDD, yet most of them were based on static functional connectivity. By contrast, here we explored disrupted topological organization of dynamic functional network connectivity (dFNC) in MDD based on graph theory. 182 MDD patients and 218 healthy controls were included in this study, all Chinese Han people. By applying group information guided independent component analysis (GIG-ICA) on resting-state fMRI data, the dFNCs of each subject were estimated using a sliding window method and k-means clustering. Five dynamic functional states were identified, three of which demonstrated significant group difference on the percentage of state occurrence. Interestingly, MDD patients spent much more time in a weakly-connected state 2, which is associated with self-focused thinking, a representative feature of depression. In addition, the abnormal FNCs in MDD were observed connecting different networks, especially among prefrontal, sensorimotor and cerebellum networks. As to network properties, MDD patients exhibited increased node efficiency in prefrontal and cerebellum. Moreover, three dFNCs with disrupted node properties were commonly identified in different states, which are also correlated with depressive symptom severity and cognitive performance. This study is the first attempt to investigate the dynamic functional abnormalities in Chinese MDD using a relatively large sample size, which provides new evidence on aberrant time-varying brain activity and its network disruptions in MDD, which might underscore the impaired cognitive functions in this mental disorder.
机译:重度抑郁症(MDD)是一种复杂的情绪障碍,其特征是持续性和压倒性抑郁。先前的研究已经确定了MDD中大规模功能性大脑网络的异常,但是其中大多数是基于静态功能连接性的。相比之下,在这里我们基于图论探索了MDD中动态功能网络连接(dFNC)的中断拓扑组织。这项研究包括182名MDD患者和218名健康对照者,均为中国汉族。通过将组信息指导的独立成分分析(GIG-ICA)应用于静止状态fMRI数据,使用滑动窗方法和k-均值聚类估计了每个受试者的dFNC。确定了五个动态功能状态,其中三个在状态发生百分比上显示出显着的组差异。有趣的是,MDD患者在弱连接状态2上花费的时间更多,这与自我专注的思维有关,这是抑郁症的典型特征。另外,观察到MDD中的异常FNC连接不同的网络,尤其是前额,感觉运动和小脑网络之间。至于网络特性,MDD患者在前额叶和小脑中显示出更高的结节效率。此外,通常在不同的状态下识别出三种具有节点性质被破坏的dFNC,它们也与抑郁症状的严重程度和认知能力有关。这项研究是首次尝试使用相对较大的样本量来研究中国MDD的动态功能异常,这为大脑随时间变化的大脑活动及其在MDD中的网络破坏提供了新的证据,这可能强调了这种心理障碍的认知功能受损紊乱。

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