Head and neck tumor segmentation in PET/CT: The HECKTOR challenge
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John O. Prior | M. Hatt | A. Rahmim | Yading Yuan | Lisheng Wang | V. Andrearczyk | A. Depeursinge | Xiaoping Yang | M. Vallières | J. Castelli | Valentin Oreiller | H. Elhalawani | M. Naser | C. Fuller | Jun Ma | Mario Jreige | Simeng Zhu | Juanying Xie | F. Yousefirizi | Huai Chen | S. Boughdad | Xuejing Feng | Suraj Pai | C. Rao | Andrei Iantsen | Ying-ji Peng | Kanchan Ghimire | A. Iantsen
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