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Divergent topological architecture of the default mode network as a pretreatment predictor of early antidepressant response in major depressive disorder
Hou, Zhenghua ; Wang, Zan ; Jiang, Wenhao ; Yin, Yingying ; Yue, Yingying ; Zhang, Yuqun ; Song, Xiaopeng ; Yuan, Yonggui
刊名SCIENTIFIC REPORTS
2016
关键词GRAPH-THEORETICAL ANALYSIS LATE-ONSET DEPRESSION LATE-LIFE DEPRESSION FUNCTIONAL CONNECTIVITY EARLY IMPROVEMENT BRAIN NETWORKS ORGANIZATION DYSFUNCTION CINGULATE DISEASE
DOI10.1038/srep39243
英文摘要Identifying a robust pretreatment neuroimaging marker would be helpful for the selection of an optimal therapy for major depressive disorder (MDD). We recruited 82 MDD patients [n = 42 treatment-responsive depression (RD) and n = 40 non-responding depression (NRD)] and 50 healthy controls (HC) for this study. Based on the thresholded partial correlation matrices of 58 specific brain regions, a graph theory approach was applied to analyse the topological properties. When compared to HC, both RD and NRD patients exhibited a lower nodal degree (D-nodal) in the left anterior cingulate gyrus; as for RD, the Dnodal of the left superior medial orbitofrontal gyrus was significantly reduced, but the right inferior orbitofrontal gyrus was increased (all P < 0.017, FDR corrected). Moreover, the nodal degree in the right dorsolateral superior frontal cortex (SFGdor) was significantly lower in RD than in NRD. Receiver operating characteristic curve analysis demonstrated that the. and nodal degree in the right SFGdor exhibited a good ability to distinguish nonresponding patients from responsive patients, which could serve as a specific maker to predict an early response to antidepressants. The disrupted topological configurations in the present study extend the understanding of pretreatment neuroimaging predictors for antidepressant medication.; National Natural Science Foundation of China [81371488]; MR Centre, Affiliated Zhongda Hospital of Southeast University; SCI(E); SSCI; ARTICLE; yygylh2000@sina.com; 6
语种英语
内容类型期刊论文
源URL[http://ir.pku.edu.cn/handle/20.500.11897/458059]  
专题工学院
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GB/T 7714
Hou, Zhenghua,Wang, Zan,Jiang, Wenhao,et al. Divergent topological architecture of the default mode network as a pretreatment predictor of early antidepressant response in major depressive disorder[J]. SCIENTIFIC REPORTS,2016.
APA Hou, Zhenghua.,Wang, Zan.,Jiang, Wenhao.,Yin, Yingying.,Yue, Yingying.,...&Yuan, Yonggui.(2016).Divergent topological architecture of the default mode network as a pretreatment predictor of early antidepressant response in major depressive disorder.SCIENTIFIC REPORTS.
MLA Hou, Zhenghua,et al."Divergent topological architecture of the default mode network as a pretreatment predictor of early antidepressant response in major depressive disorder".SCIENTIFIC REPORTS (2016).
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