Rapid artificial intelligence solutions in a pandemic—The COVID-19-20 Lung CT Lesion Segmentation Challenge
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Klaus H. Maier-Hein | Mona G. Flores | V. Kovalev | V. Liauchuk | Ziyue Xu | M. Linguraru | A. Husch | H. Roth | E. Turkbey | Sheng Xu | B. Wood | F. Isensee | B. Turkbey | J. Moltz | Nicola Rieke | Yong Xia | Daguang Xu | Dong Yang | J. Vilaça | Wenqi Li | Ziqi Zhou | A. Harouni | C. Díez | J. Zember | Shishuai Hu | Claire Tang | Qinji Yu | J. Sölter | T. Zheng | Qikai Li | Luyang Zhang | Alessa Hering | Ramon Sanchez Jacob | Jose Molto | Bruno Oliveira | Li Kang | K. Maier-Hein | C. Tang
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