Keywords:
Neuroradiology brain, Oncology, CNS, MR-Diffusion/Perfusion, MR, Diagnostic procedure, Imaging sequences, Observer performance, Cancer, Multidisciplinary cancer care
Authors:
S. Türk1, J. Kim2, R. Lobo3, J. Bapuraj3, T. Ma3, T. Johnson3, S. Camelo Piragua3, L. R. Junck3, A. Srinivasan3; 1Izmir/TR, 2Ann Arbor/US, 3Ann Arbor, MI/US
DOI:
10.26044/ecr2019/C-0958
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