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Artificial intelligence for prostate cancer histopathology diagnostics
4
Zitationen
4
Autoren
2022
Jahr
Abstract
ecently, there has been significant interest in the application of AI technology to cancer diagnostics. In uro-oncology, this is evident by the significant growth in publications focusing on AI and prostate cancer (PCa) histopathology. (1) Recent advancements in digital and computer vision technologies have the potential to revolutionize the diagnosis and grading of PCa. In conjunction with well-designed AI models, core prostate biopsy imaging and whole slide imaging (WSI) techniques could lead to quicker, more reliable and exact diagnoses.
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