Integrating quantitative morphological and intratumoural textural characteristics in FDG-PET for the prediction of prognosis in pharynx squamous cell carcinoma patients.
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Ruijiang Li | R. Onimaru | H. Shirato | T. Shiga | K. Hirata | K. Tsuchiya | K. Kudo | N. Fujima | A. Homma | R. Li | K. Yasuda | S. Kano | T. Mizumachi | H. Shirato
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