Textured-Based Deep Learning in Prostate Cancer Classification with 3T Multiparametric MRI: Comparison with PI-RADS-Based Classification
Yongkai Liu(Université de Montpellier), Kyunghyun Sung(University of California, Los Angeles), Wayne Brisbane(University of California, Los Angeles), Robert E. Reiter(University of California, Los Angeles), Guang Yang(Shanghai University of Traditional Chinese Medicine), Qi Miao(University of California, Los Angeles), Leonard S. Marks(University of California, Los Angeles), Haoxin Zheng(University of California, Los Angeles), Zhengrong Liang(Stony Brook University), Steven S. Raman(University of California, Los Angeles)
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