Default-mode and fronto-parietal network connectivity during rest distinguishes asymptomatic patients with bipolar disorder and major depressive disorder

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作者
Sabina Rai
Kristi R. Griffiths
Isabella A. Breukelaar
Ana R. Barreiros
Wenting Chen
Philip Boyce
Philip Hazell
Sheryl L. Foster
Gin S. Malhi
Anthony W. F. Harris
Mayuresh S. Korgaonkar
机构
[1] Brain Dynamics Centre,Discipline of Psychiatry
[2] Westmead Institute for Medical Research,Department of Radiology
[3] The University of Sydney,CADE Clinic, Department of Psychiatry
[4] Westmead,undefined
[5] School of Psychology,undefined
[6] University of New South Wales,undefined
[7] Faculty of Medicine and Health,undefined
[8] The University of Sydney,undefined
[9] Westmead Hospital,undefined
[10] Sydney School of Health Sciences,undefined
[11] Faculty of Medicine and Health,undefined
[12] The University of Sydney,undefined
[13] Royal North Shore Hospital,undefined
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摘要
Bipolar disorder (BD) is commonly misdiagnosed as major depressive disorder (MDD). This is understandable, as depression often precedes mania and is otherwise indistinguishable in both. It is therefore imperative to identify neural mechanisms that can differentiate the two disorders. Interrogating resting brain neural activity may reveal core distinguishing abnormalities. We adopted an a priori approach, examining three key networks documented in previous mood disorder literature subserving executive function, salience and rumination that may differentiate euthymic BD and MDD patients. Thirty-eight patients with BD, 39 patients with MDD matched for depression severity, and 39 age-gender matched healthy controls, completed resting-state fMRI scans. Seed-based and data-driven Independent Component analyses (ICA) were implemented to examine group differences in resting-state connectivity (pFDR < 0.05). Seed analysis masks were target regions identified from the fronto-parietal (FPN), salience (SN) and default-mode (DMN) networks. Seed-based analyses identified significantly greater connectivity between the subgenual cingulate cortex (DMN) and right dorsolateral prefrontal cortex (FPN) in BD relative to MDD and controls. The ICA analyses also found greater connectivity between the DMN and inferior frontal gyrus, an FPN region in BD relative to MDD. There were also significant group differences across the three networks in both clinical groups relative to controls. Altered DMN–FPN functional connectivity is thought to underlie deficits in the processing, management and regulation of affective stimuli. Our results suggest that connectivity between these networks could potentially distinguish the two disorders and could be a possible trait mechanism in BD persisting even in the absence of symptoms.
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