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Resting state networks in major depressive disorder.

Dutta, Arpan; McKie, Shane; Deakin, J F William

Psychiatry research. 2014;224(3):139-51.

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Abstract

Resting state functional magnetic resonance imaging (fMRI) examines the spontaneous low frequency neural activity of the brain to reveal networks of correlated neural activity. A number of different methodologies, each with its own advantages and disadvantages, have been used to examine networks of neural activity that may be related to clinical presentation. Major depressive disorder (MDD) research has largely focused on the default mode network (DMN), which is most active at rest and may relate to negative rumination. However, other networks can be discerned in the resting state such as salience and affective and cognitive control networks, all of which may be relevant to MDD psychopathology. This article reviews the rapidly increasing literature on resting state networks. A number of state- and trait-dependent abnormalities have been reported in MDD in a wide variety of regions including the cerebellum, lingual gyrus, anterior cingulate cortex (ACC), middle frontal gyrus (MFG), dorsolateral prefrontal cortex (dlPFC), amygdala and insula. Current and chronic medication is often a potential confound. Few trials have examined the immediate or delayed effects of antidepressants on resting state networks. This article presents a novel approach to the analysis of drug effects, the identification of signatures of efficacy, and thus for drug development.

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Type of resource:
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Published date:
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Place of publication:
Ireland
Volume:
224
Issue:
3
Pagination:
139-51
Digital Object Identifier:
10.1016/j.pscychresns.2014.10.003
Pubmed Identifier:
25456520
Pii Identifier:
S0925-4927(14)00255-8
Access state:
Active

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Record metadata

Manchester eScholar ID:
uk-ac-man-scw:253939
Created by:
Deakin, Bill
Created:
27th January, 2015, 15:52:16
Last modified by:
Deakin, Bill
Last modified:
27th January, 2015, 15:52:16

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