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A multiview boosting approach to tissue segmentation., , , , , , и . Medical Imaging: Digital Pathology, том 9041 из SPIE Proceedings, стр. 90410R. SPIE, (2014)Ultrasound-Based Predication of Prostate Cancer in MRI-guided Biopsy., , , , , , , , , и 6 other автор(ы). CLIP@MICCAI, том 8680 из Lecture Notes in Computer Science, стр. 142-150. Springer, (2014)Domain Generalization in Computational Pathology: Survey and Guidelines., , , , , , , , , и 1 other автор(ы). CoRR, (2023)Deep dense multi-path neural network for prostate segmentation in magnetic resonance imaging., , , , и . Int. J. Comput. Assist. Radiol. Surg., 13 (11): 1687-1696 (2018)Order-ViT: Order Learning Vision Transformer for Cancer Classification in Pathology Images., и . ICCV (Workshops), стр. 2485-2494. IEEE, (2023)Ultrasound-Based Detection of Prostate Cancer Using Automatic Feature Selection with Deep Belief Networks., , , , , , , , , и 4 other автор(ы). MICCAI (2), том 9350 из Lecture Notes in Computer Science, стр. 70-77. Springer, (2015)IMPaSh: A Novel Domain-Shift Resistant Representation for Colorectal Cancer Tissue Classification., , , , , и . ECCV Workshops (3), том 13803 из Lecture Notes in Computer Science, стр. 543-555. Springer, (2022)Micro and Macro Breast Histology Image Analysis by Partial Network Re-use., , , и . ICIAR, том 10882 из Lecture Notes in Computer Science, стр. 895-902. Springer, (2018)Learning from Noisy Label Statistics: Detecting High Grade Prostate Cancer in Ultrasound Guided Biopsy., , , , , , , , , и 1 other автор(ы). MICCAI (4), том 11073 из Lecture Notes in Computer Science, стр. 21-29. Springer, (2018)High-definition Fourier transform infrared spectroscopic imaging of prostate tissue., , , и . Medical Imaging: Digital Pathology, том 9791 из SPIE Proceedings, стр. 97911D. SPIE, (2016)