Author:
Xia Cedric Huchuan,Ma Zongming,Ciric Rastko,Gu Shi,Betzel Richard F.,Kaczkurkin Antonia N.,Calkins Monica E.,Cook Philip A.,la Garza Angel Garcia de,Vandekar Simon,Moore Tyler M.,Roalf David R.,Ruparel Kosha,Wolf Daniel H.,Davatzikos Christos,Gur Ruben C.,Gur Raquel E.,Shinohara Russell T.,Bassett Danielle S.,Satterthwaite Theodore D.
Abstract
ABSTRACTNeurobiological abnormalities associated with psychiatric disorders do not map well to existing diagnostic categories. High co-morbidity and overlapping symptom domains suggest dimensional circuit-level abnormalities that cut across clinical diagnoses. Here we sought to identify brain-based dimensions of psychopathology using multivariate sparse canonical correlation analysis (sCCA) in a sample of 663 youths imaged as part of the Philadelphia Neurodevelopmental Cohort. This analysis revealed highly correlated patterns of functional connectivity and psychiatric symptoms. We found that four dimensions of psychopathology — mood, psychosis, fear, and externalizing behavior — were highly associated (r=0.68-0.71) with distinct patterns of functional dysconnectivity. Loss of network segregation between the default mode network and executive networks (e.g. fronto-parietal and salience) emerged as a common feature across all dimensions. Connectivity patterns linked to mood and psychosis became more prominent with development, and significant sex differences were present for connectivity patterns related to mood and fear. Critically, findings replicated in an independent dataset (n=336). These results delineate connectivity-guided dimensions of psychopathology that cut across traditional diagnostic categories, which could serve as a foundation for developing network-based biomarkers in psychiatry.
Publisher
Cold Spring Harbor Laboratory
Cited by
3 articles.
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