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Abstract #4122

Machine learning on resting state fMRI classifies the prevalent underlying disease in subjects with mixed dementia

Gloria Castellazzi1,2, Letizia Casiraghi2,3, Giovanni Savini2,4, Fulvia Palesi2,5, Paolo Vitali6, Nicoletta Anzalone7, Elena Sinforiani8, Giovanni Magenes1, Cristina Cereda9, Claudia AM Gandini Wheeler-Kingshott3,6,10, Giuseppe Micieli11, and Egidio D'Angelo2,3

1Department of Electrical, Computer and Biomedical Engineering, University of Pavia, Pavia, Italy, 2Brain Connectivity Center, C. Mondino National Neurological Institute, Pavia, Italy, 3Department of Brain and Behavioral Sciences, University of Pavia, Pavia, Italy, 4Department of Physics, University of Milan, Mialn, Italy, 5Department of Physics, University of Pavia, Pavia, Italy, 6Brain MRI 3T research center, C. Mondino National Neurological Institute, Pavia, Italy, 7Scientific Institute H.S. Raffaele, Milan, Italy, 8Neurology Unit, C. Mondino National Neurological Institute, Pavia, Italy, 9Genomic and Post-Genomic Center, C. Mondino National Neurological Institute, Pavia, Italy, 10Queen Square MS Centre Department of Neuroinflammation, UCL Institute of Neurology, London, United Kingdom, 11Department of Emergency Neurology, C. Mondino National Neurological Institute, Pavia, Italy

Evidence from recent studies suggests that machine learning applied on MRI can be used to reliably differentiate Alzheimer disease from other major dementia diseases, e.g. Vascular Dementia (VD). In this work we used a machine learning approach applied on features derived from resting state fMRI (rs-fMRI) to build a model that is able not only to differentiate AD from VD, but also to classify the prevalent underlying disease (AD or VD) in a group of early dementia patients for whom clinical profile presented major overlap between symptoms of AD and symptoms of VD (i.e. mixed dementia subjects, MXD).

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