C054
CT TEXTURE ANALYSIS WITH MACHINE LEARNING FOR THE PREDICTION OF DISEASE SITE ASSOCIATED FEATURES AND NODAL STATUS FOR HEAD AND NECK SQUAMOUS CELL CARCINOMA
Pharynx / Larynx Cancer
Xiaoyang Liu1, Eugene Yu1, Behzad Forghani2, Almudena Perez-Lara2, Shao Hui Huang1, John Waldron1, Brian O'Sullivan1, Eric Bartlett1, Mark Levental2, Thomas Ong2, Maryam Bayat2, Reza Forghani2
1University of Toronto, 2McGill University
AHNS Annual Meeting
Held during the Combined Otolaryngology Spring Meetings (COSM)
April 18–19, 2018 Gayloard National Resortand Convention CenterNational Harbor, MD
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