Disease prediction using graph convolutional networks: Application to Autism Spectrum Disorder and Alzheimer’s disease

Medical Image Analysis - Tập 48 - Trang 117-130 - 2018
Sarah Parisot1, Sofia Ira Ktena2, Enzo Ferrante3, Matthew Lee2, Ricardo Guerrero4, Ben Glocker2, Daniel Rueckert2
1AimBrain Solutions Ltd, London, UK
2Biomedical Image Analysis Group, Imperial College London, UK
3Research Institute for Signals, Systems and Computational Intelligence sinc(i) (FICH-UNL/CONICET), Santa Fe, Argentina
4StoryStream Ltd., London, UK

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