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Research ArticleAdult Brain
Open Access

Deep Learning Enables 60% Accelerated Volumetric Brain MRI While Preserving Quantitative Performance: A Prospective, Multicenter, Multireader Trial

S. Bash, L. Wang, C. Airriess, G. Zaharchuk, E. Gong, A. Shankaranarayanan and L.N. Tanenbaum
American Journal of Neuroradiology December 2021, 42 (12) 2130-2137; DOI: https://doi.org/10.3174/ajnr.A7358
S. Bash
aFrom the RadNet Inc (S.B., L.N.T.), Los Angeles, California
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L. Wang
bSubtle Medical (L.W., E.G., A.S.), Menlo Park, California
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C. Airriess
cCortechs.ai. (C.A.), San Diego, California.
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G. Zaharchuk
dStanford University Medical Center (G.Z.), Stanford, California
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E. Gong
bSubtle Medical (L.W., E.G., A.S.), Menlo Park, California
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A. Shankaranarayanan
bSubtle Medical (L.W., E.G., A.S.), Menlo Park, California
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L.N. Tanenbaum
aFrom the RadNet Inc (S.B., L.N.T.), Los Angeles, California
eLenox Hill Radiolog (L.N.T.), New York, New York
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American Journal of Neuroradiology: 42 (12)
American Journal of Neuroradiology
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1 Dec 2021
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S. Bash, L. Wang, C. Airriess, G. Zaharchuk, E. Gong, A. Shankaranarayanan, L.N. Tanenbaum
Deep Learning Enables 60% Accelerated Volumetric Brain MRI While Preserving Quantitative Performance: A Prospective, Multicenter, Multireader Trial
American Journal of Neuroradiology Dec 2021, 42 (12) 2130-2137; DOI: 10.3174/ajnr.A7358

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Deep Learning Enables 60% Accelerated Volumetric Brain MRI While Preserving Quantitative Performance: A Prospective, Multicenter, Multireader Trial
S. Bash, L. Wang, C. Airriess, G. Zaharchuk, E. Gong, A. Shankaranarayanan, L.N. Tanenbaum
American Journal of Neuroradiology Dec 2021, 42 (12) 2130-2137; DOI: 10.3174/ajnr.A7358
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