Enhanced Lung Cancer Survival Prediction Using Semi-Supervised Pseudo-Labeling and Learning from Diverse PET/CT Datasets
Mohammad R. Salmanpour(University of British Columbia), Arman Rahmim(BC Cancer Agency), Cheryl Ho, Ren Yuan(University of British Columbia), Mehdi Maghsudi, Arman Gorji(Hamedan University of Medical Sciences), Amin Mousavi, Bonnie Leung, Nima Sanati(Hamedan University of Medical Sciences), Ali Fathi Jouzdani(Hamedan University of Medical Sciences)
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