DeepEdit: Deep Editable Learning for Interactive Segmentation of 3D Medical Images
Andres Diaz‐Pinto, M. Jorge Cardoso(King's College London), Prerna Dogra(Moffitt Cancer Center), Csaba Pintér, Steve Pieper, Tom Vercauteren(KU Leuven), Dániel Palkovics(Semmelweis University), Richard Brown, Vishwesh Nath, Holger R. Roth(Nvidia (United States)), Daguang Xu(Nvidia (United States)), Sachidanand Alle, Andrew Feng(Nvidia (United States)), Abood Quraini, Sébastien Ourselin(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Ron N. Alkalay(Beth Israel Deaconess Medical Center), Muhammad Asad(King's College London), Alvin Ihsani(Nvidia (United States)), Pritesh Mehta(King's College London), Michela Antonelli(King's College London)
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