| Literature DB >> 33048435 |
George Gifford1, Nicolas Crossley1,2, Sarah Morgan3,4, Matthew J Kempton1, Paola Dazzan5,6, Gemma Modinos1,7, Matilda Azis1, Carly Samson1, Ilaria Bonoldi1,6, Beverly Quinn8, Sophie E Smart1,9, Mathilde Antoniades1,10, Matthijs G Bossong11, Matthew R Broome12, Jesus Perez8, Oliver D Howes1,6, James M Stone1,6,7, Paul Allen1,13, Anthony A Grace14, Philip McGuire1,6.
Abstract
The ability to identify biomarkers of psychosis risk is essential in defining effective preventive measures to potentially circumvent the transition to psychosis. Using samples of people at clinical high risk for psychosis (CHR) and Healthy controls (HC) who were administered a task fMRI paradigm, we used a framework for labelling time windows of fMRI scans as 'integrated' FC networks to provide a granular representation of functional connectivity (FC). Periods of integration were defined using the 'cartographic profile' of time windows and k-means clustering, and sub-network discovery was carried out using Network Based Statistics (NBS). There were no network differences between CHR and HC groups. Within the CHR group, using integrated FC networks, we identified a sub-network negatively associated with longitudinal changes in the severity of psychotic symptoms. This sub-network comprised brain areas implicated in bottom-up sensory processing and in integration with motor control, suggesting it may be related to the demands of the fMRI task. These data suggest that extracting integrated FC networks may be useful in the investigation of biomarkers of psychosis risk.Entities:
Keywords: cartographic profile; clinical high-risk for psychosis; network analysis; network based statistics; network integration; task fMRI
Mesh:
Year: 2020 PMID: 33048435 PMCID: PMC7775992 DOI: 10.1002/hbm.25235
Source DB: PubMed Journal: Hum Brain Mapp ISSN: 1065-9471 Impact factor: 5.399