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Journal Article

Citation

Sacchet MD, Prasad G, Foland-Ross LC, Thompson PM, Gotlib IH. Front. Psychiatry 2015; 6: e21.

Affiliation

Neurosciences Program, Stanford University , Stanford, CA , USA ; Department of Psychology, Stanford University , Stanford, CA , USA.

Copyright

(Copyright © 2015, Frontiers Media)

DOI

10.3389/fpsyt.2015.00021

PMID

25762941

Abstract

Recently, there has been considerable interest in understanding brain networks in major depressive disorder (MDD). Neural pathways can be tracked in the living brain using diffusion-weighted imaging (DWI); graph theory can then be used to study properties of the resulting fiber networks. To date, global abnormalities have not been reported in tractography-based graph metrics in MDD, so we used a machine learning approach based on "support vector machines" to differentiate depressed from healthy individuals based on multiple brain network properties. We also assessed how important specific graph metrics were for this differentiation. Finally, we conducted a local graph analysis to identify abnormal connectivity at specific nodes of the network. We were able to classify depression using whole-brain graph metrics. Small-worldness was the most useful graph metric for classification. The right pars orbitalis, right inferior parietal cortex, and left rostral anterior cingulate all showed abnormal network connectivity in MDD. This is the first use of structural global graph metrics to classify depressed individuals. These findings highlight the importance of future research to understand network properties in depression across imaging modalities, improve classification results, and relate network alterations to psychiatric symptoms, medication, and comorbidities.


Language: en

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