Disease quantification on PET/CT images without explicit object delineation

Medical Image Analysis - Tập 51 - Trang 169-183 - 2019
Yubing Tong1, Jayaram K. Udupa1, Dewey Odhner1, Caiyun Wu1, Stephen J. Schuster2, Drew A. Torigian1,2
1Medical Image Processing group, Department of Radiology, 3710 Hamilton Walk, Goddard Building, 6th Floor, Philadelphia, PA 19104, United States
2Abramson Cancer Center, Perelman Center for Advanced Medicine, University of Pennsylvania, Philadelphia, PA 19104, United States

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