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, Neurinfo is granted by the the European Union (FEDER), the French State, the Brittany Council, Rennes Metropole, Inria, Inserm and the University Hospital of Rennes. The project was supported by the National Research Agency in the "Investing for 540 the Future" program under reference ANR-10-LABX-07-0, and by the "Fondation, acknowledgements MRI data acquisition was supported by the Neurinfo MRI research facility from the University of Rennes I