Abnormal dynamic community structure of the salience network in depression

作者:Wei, Maobin; Qin, Jiaolong; Yan, Rui; Bi, Kun; Liu, Chu; Yao, Zhijian*; Lu, Qing*
来源:Journal of Magnetic Resonance Imaging, 2017, 45(4): 1135-1143.
DOI:10.1002/jmri.25429

摘要

PurposeTo detect the consecutive variations of the internetwork interactions over time, which helps to discover the underlying dysfunction of depressive disorders. Abnormal interactions of resting-state functional networks have been reported in depression. However, little is known regarding the dynamics of how these crucial networks interact and the disease-related dysfunction. Materials and MethodsFunctional magnetic resonance imaging data at 3.0T in the resting state were acquired from 20 depressed patients and 20 healthy controls. Twelve resting-state networks were extracted by group-independent component analysis, and their interactions were calculated through a sliding windowed Granger causality model analysis. The acquired effective connectivity matrices were used to construct multislice networks with modular structures that were detected via a multislice community detection method. ResultsNo significant differences were observed in the modularity and total module numbers between the depressed patients and the healthy controls. The P values were 0.133 with a confidence interval (-0.0001 0.0093) and 0.136 with a confidence interval (-0.30 0.90), respectively. However, the depressed patients exhibited decreased flexibility of the salience network (SN) compared with the controls (P=0.048, corrected, with a confidence interval 0.0068 0.066). ConclusionSN was inclined to participate less in the multiple brain functional modules across the resting time in depression, and infrequently changed its modular allegiance. These findings support the potential importance of the SN in the neuropathological mechanism of depression.