achine learning provides a framework for non-invasively extracting more information from a clinical prostate scan by leveraging aligned post-surgical tissue samples with in-vivo imaging to create predictive models of histological characteristics. Many of these algorithms rely on a pathological diagnosis as the ground truth for the classification or regression task. This study aims to investigate the effects of varying the ground truth label in generating voxel-wise radio-pathomic maps of epithelium and lumen density in prostate cancer.
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