Multiparametric MRI-based radiomics model to predict pelvic lymph node invasion for patients with prostate cancer
Haoxin Zheng(University of California, Los Angeles), Kyunghyun Sung(University of California, Los Angeles), Sohrab Afshari Mirak(University of California, Los Angeles), Fabien Scalzo(Pepperdine University), Steven S. Raman(University of California, Los Angeles), Melina Hosseiny(University of California, Los Angeles), Qi Miao(University of California, Los Angeles), Yongkai Liu(Université de Montpellier)
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