Deep learning based time-to-event analysis with PET, CT and joint PET/CT for head and neck cancer prognosis
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N. Albert | G. Landry | C. Belka | M. Riboldi | S. Corradini | M. Avanzo | J. Stancanello | M. Niyazi | C. Kurz | G. Franchin | S. Marschner | F. Walter | J. Lang | G. Fanetti | A. Holzgreve | Yiling Wang | E. Lombardo | S. Zschaek | J. Weingärtner
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