An overview of deep learning in medical imaging focusing on MRI

Zeitschrift für Medizinische Physik - Tập 29 Số 2 - Trang 102-127 - 2019
Alexander Selvikvåg Lundervold1,2, Arvid Lundervold3,2,4
1Department of Computing, Mathematics, and Physics, Western Norway University of Applied Sciences, Norway
2Mohn Medical Imaging and Visualization Centre (MMIV), Haukeland University Hospital, Norway
3Department of Health and Functioning, Western Norway University of Applied Sciences, Norway
4Neuroinformatics and Image Analysis Laboratory, Department of Biomedicine, University of Bergen, Norway

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