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Research ArticleAdult Brain

Tissue at Risk and Ischemic Core Estimation Using Deep Learning in Acute Stroke

Y. Yu, Y. Xie, T. Thamm, E. Gong, J. Ouyang, S. Christensen, M.P. Marks, M.G. Lansberg, G.W. Albers and G. Zaharchuk
American Journal of Neuroradiology June 2021, 42 (6) 1030-1037; DOI: https://doi.org/10.3174/ajnr.A7081
Y. Yu
aFrom the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California
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Y. Xie
aFrom the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California
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T. Thamm
aFrom the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California
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E. Gong
bElectrical Engineering Department (E.G., J.O.), Stanford University, California
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J. Ouyang
bElectrical Engineering Department (E.G., J.O.), Stanford University, California
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S. Christensen
cNeurology Department (S.C., M.G.L., G.W.A.), Stanford University, California
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M.P. Marks
aFrom the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California
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M.G. Lansberg
cNeurology Department (S.C., M.G.L., G.W.A.), Stanford University, California
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G.W. Albers
cNeurology Department (S.C., M.G.L., G.W.A.), Stanford University, California
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G. Zaharchuk
aFrom the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California
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Cite this article
Y. Yu, Y. Xie, T. Thamm, E. Gong, J. Ouyang, S. Christensen, M.P. Marks, M.G. Lansberg, G.W. Albers, G. Zaharchuk
Tissue at Risk and Ischemic Core Estimation Using Deep Learning in Acute Stroke
American Journal of Neuroradiology Jun 2021, 42 (6) 1030-1037; DOI: 10.3174/ajnr.A7081

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Tissue at Risk and Ischemic Core Estimation Using Deep Learning in Acute Stroke
Y. Yu, Y. Xie, T. Thamm, E. Gong, J. Ouyang, S. Christensen, M.P. Marks, M.G. Lansberg, G.W. Albers, G. Zaharchuk
American Journal of Neuroradiology Jun 2021, 42 (6) 1030-1037; DOI: 10.3174/ajnr.A7081
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