Prostate Cancer Differentiation and Aggressiveness: Assessment With a Radiomic‐Based Model vs. PI‐RADS v2

Multiparametric MRI (mp‐MRI) combined with machine‐aided approaches have shown high accuracy and sensitivity in prostate cancer (PCa) diagnosis. However, radiomics‐based analysis has not been thoroughly compared with Prostate Imaging and Reporting and Data System version 2 (PI‐RADS v2) scores.

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