Automatic Prostate Zonal Segmentation Using Fully Convolutional Network With Feature Pyramid Attention
Yongkai Liu(Université de Montpellier), Steven S. Raman(University of California, Los Angeles), Yeejin Lee(University of California, Los Angeles), Sohrab Afshari Mirak(University of California, Los Angeles), Xinran Zhong(University of California, Los Angeles), Kyunghyun Sung(University of California, Los Angeles), Robert E. Reiter(University of California, Los Angeles), Melina Hosseiny(University of California, Los Angeles), Guang Yang(Shanghai University of Traditional Chinese Medicine), Afshin Azadikhah(University of California, Los Angeles)
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