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Functional Magnetic Resonance Imaging Connectivity Accurately Distinguishes Cases With Psychotic Disorders From Healthy Controls, Based on Cortical Features Associated With Brain Network Development

Authors :
Therese van Amelsvoort
Sarah E. Morgan
Martijn P. van den Heuvel
Celso Arango
David Mothersill
Andrea Mechelli
Philip McGuire
Michael Brammer
Kirstie Whitaker
Jim van Os
Machteld Marcelis
Gary Donohoe
Ameera X. Patel
Edward T. Bullmore
Jonathan Young
Aiden Corvin
Cristina Scarpazza
René S. Kahn
Complex Trait Genetics
Amsterdam Neuroscience - Cellular & Molecular Mechanisms
Amsterdam Neuroscience - Complex Trait Genetics
Morgan, Sarah [0000-0002-1261-5884]
Bullmore, Edward [0000-0002-8955-8283]
Apollo - University of Cambridge Repository
RS: MHeNs - R2 - Mental Health
Psychiatrie & Neuropsychologie
MUMC+: MA Med Staf Spec Psychiatrie (9)
MUMC+: MA Psychiatrie (3)
MUMC+: Hersen en Zenuw Centrum (3)
Source :
Biological Psychiatry : Cognitive Neuroscience and Neuroimaging, 6(12), 1125-1134. Elsevier, Morgan, S E, Young, J, Patel, A X, Whitaker, K J, Scarpazza, C, van Amelsvoort, T, Marcelis, M, van Os, J, Donohoe, G, Mothersill, D, Corvin, A, Arango, C, Mechelli, A, van den Heuvel, M, Kahn, R S, McGuire, P, Brammer, M & Bullmore, E T 2021, ' Functional Magnetic Resonance Imaging Connectivity Accurately Distinguishes Cases With Psychotic Disorders From Healthy Controls, Based on Cortical Features Associated With Brain Network Development ', Biological Psychiatry : Cognitive Neuroscience and Neuroimaging, vol. 6, no. 12, pp. 1125-1134 . https://doi.org/10.1016/j.bpsc.2020.05.013, Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, 6(12), 1125-1134. Elsevier
Publication Year :
2020

Abstract

BACKGROUND: Machine learning (ML) can distinguish cases with psychotic disorder from healthy controls based on magnetic resonance imaging (MRI) data, but it is not yet clear which MRI metrics are the most informative for case-control ML, or how ML algorithms relate to the underlying biology.METHODS: We analyzed multimodal MRI data from 2 independent case-control studies of psychotic disorders (cases, n = 65, 28; controls, n = 59, 80) and compared ML accuracy across 5 selected MRI metrics from 3 modalities. Cortical thickness, mean diffusivity, and fractional anisotropy were estimated at each of 308 cortical regions, as well as functional and structural connectivity between each pair of regions. Functional connectivity data were also used to classify nonpsychotic siblings of cases (n = 64) and to distinguish cases from controls in a third independent study (cases, n = 67; controls, n = 81).RESULTS: In both principal studies, the most informative metric was functional MRI connectivity: The areas under the receiver operating characteristic curve were 88% and 76%, respectively. The cortical map of diagnostic connectivity features (ML weights) was replicable between studies (r = .27, p < .001); correlated with replicable case-control differences in functional MRI degree centrality and with a prior cortical map of adolescent development of functional connectivity; predicted intermediate probabilities of psychosis in siblings; and was replicated in the third case-control study.CONCLUSIONS: ML most accurately distinguished cases from controls by a replicable pattern of functional MRI connectivity features, highlighting abnormal hubness of cortical nodes in an anatomical pattern consistent with the concept of psychosis as a disorder of network development.

Details

ISSN :
24519030 and 24519022
Volume :
6
Issue :
12
Database :
OpenAIRE
Journal :
Biological psychiatry. Cognitive neuroscience and neuroimaging
Accession number :
edsair.doi.dedup.....19d1f72271bbe93b089a8eb2e5d6d55d
Full Text :
https://doi.org/10.1016/j.bpsc.2020.05.013