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Abstract #2840

Automatic classification of early-onset neurodegenerative dementia patients using artificial neural networks

Camilla Cividini1, Federica Agosta1, Silvia Basaia1, Luca Wagner1, Maura Cosseddu2, Elisa Canu1, Stefano Gazzina2, Giuseppe Magnani3, Elka Stefanova4, Vladimir S. Kostic4, Roberto Gasparotti5, Alessandro Padovani2, Barbara Borroni2, and Massimo Filippi1,3

1Neuroimaging Research Unit, Institute of Experimental Neurology, Division of Neuroscience, San Raffaele Scientific Institute, Vita-Salute San Raffaele University, Milan, Italy, 2Neurology Unit, Department of Clinical and Experimental Sciences, University of Brescia, Brescia, Italy, 3Department of Neurology, Institute of Experimental Neurology, Division of Neuroscience, San Raffaele Scientific Institute, Vita-Salute San Raffaele University, Milan, Italy, 4Clinic of Neurology, Faculty of Medicine, University of Belgrade, Belgrade, Yugoslavia, 5Neuroradiology Unit, Department of Clinical and Experimental Sciences, University of Brescia, Brescia, Italy

We built and validated a convolutional neural network (CNN) to predict the individual diagnosis of early-onset Alzheimer’s disease (EOAD) and behavioral variant of frontotemporal dementia (bvFTD) based on a single T1-weighted image. The analysis showed that CNN procedure was able to discriminate EOAD from healthy controls with an accuracy of 83% (sensitivity=85% and specificity=80%). CNNs differentiated bvFTD patients from controls with an accuracy of 73% (sensitivity=63% and specificity=83%). CNNs provide a powerful tool for the automatic classification of early-onset neurodegenerative dementia and perform well without any prior feature engineering and regardless the variability of imaging protocols and scanners.

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