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Grey matter networks in people at increased familial risk for schizophrenia

Authors :
Betty M. Tijms
Peggy Seriès
David Willshaw
Stephen M. Lawrie
Emma Sprooten
David G. C. Owens
Dominic Job
Eve C. Johnstone
Neurology
NCA - neurodegeneration
Source :
Tijms, B M, Sprooten, E, Job, D, Johnstone, E C, Owens, D G C, Willshaw, D, Series, P & Lawrie, S M 2015, ' Grey matter networks in people at increased familial risk for schizophrenia ', Schizophrenia Research, vol. 168, no. 1-2, pp. 1-8 . https://doi.org/10.1016/j.schres.2015.08.025, Schizophrenia Research, 168(1-2), 1-8. Elsevier
Publication Year :
2015

Abstract

Grey matter brain networks are disrupted in schizophrenia, but it is still unclear at which point during the development of the illness these disruptions arise and whether these can be associated with behavioural predictors of schizophrenia. We investigated if single-subject grey matter networks were disrupted in a sample of people at familial risk of schizophrenia. Single-subject grey matter networks were extracted from structural MRI scans of 144 high risk subjects, 32 recent-onset patients and 36 healthy controls. The following network properties were calculated: size, connectivity density, degree, path length, clustering coefficient, betweenness centrality and small world properties. People at risk of schizophrenia showed decreased path length and clustering in mostly prefrontal and temporal areas. Within the high risk sample, the path length of the posterior cingulate cortex and the betweenness centrality of the left inferior frontal operculum explained 81% of the variance in schizotypal cognitions, which was previously shown to be the strongest behavioural predictor of schizophrenia in the study. In contrast, local grey matter volume measurements explained 48% of variance in schizotypy. The present results suggest that single-subject grey matter networks can quantify behaviourally relevant biological alterations in people at increased risk for schizophrenia before disease onset.

Details

ISSN :
15732509 and 09209964
Volume :
168
Issue :
1-2
Database :
OpenAIRE
Journal :
Schizophrenia research
Accession number :
edsair.doi.dedup.....67dae2af980d3651a94a9e33bde57114