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Sukhdeep Singh
Mayo Clinic - Department of Radiology
Phoeniz, AZ
United States
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SCHOLARLY PAPERS
1
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71
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Scholarly Papers (1)
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1.
Differentiation of Low and High Grade Renal Cell Carcinoma on Routine MR with an Externally Validated Automatic Machine Learning Algorithm
Number of pages: 23
Posted: 17 Aug 2020
Subhanik Purkayastha
,
Yijun Zhao
,
Chengzhang Zhu
,
Jing Wu
,
Rong Hu
,
Aidan McGirr
, Sukhdeep Singh,
Ken Chang
,
Raymond Y. Huang
,
Paul J. Zhang
,
Alvin Silva
,
Michael C. Soulen
,
S. William Stavropoulos
,
Yang Li
,
Zishu Zhang
and
Harrison X. Bai
Brown University - Department of Diagnostic Imaging, Central South University - Department of Radiology, Central South University - School of Computer Science and Engineering, Central South University - Department of Radiology, Central South University - Department of Radiology, Mayo Clinic - Department of Radiology, Mayo Clinic - Department of Radiology, Harvard University - Athinoula A. Martinos Center for Biomedical Imaging, Harvard University - Department of Radiology, University of Pennsylvania - Department of Pathology and Laboratory Medicine, Mayo Clinic Hospital - Department of Radiology, University of Pennsylvania - Division of Interventional Radiology, University of Pennsylvania - Division of Interventional Radiology, Central South University - Department of Neurology, Central South University - Department of Radiology and Brown University - Department of Diagnostic Imaging
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Abstract:
renal cell carcinoma; Fuhrman grade; radiomics; automatic machine learning
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