Deep learning improves utility of tau PET in the study of Alzheimer's disease
Alzheimer s & Dementia Diagnosis Assessment & Disease Monitoring2021Vol. 13(1), pp. e12264–e12264
Citations Over TimeTop 21% of 2021 papers
James Zou, David S. Park, Aubrey S. Johnson, Xinyang Feng, Michelle Pardo, Jeanelle France, Zeljko Tomljanovic, Adam M. Brickman, Devangere Devanand, José A. Luchsinger, William Charles Kreisl, Frank A. Provenzano, for the Alzheimer's Disease Neuroimaging Initiative
Abstract
CNNs could improve tau PET's role in early disease and extend the utility of tau PET across generations of radioligands.
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