2023
DOI: 10.3390/cancers15082335
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Classifying Malignancy in Prostate Glandular Structures from Biopsy Scans with Deep Learning

Abstract: Histopathological classification in prostate cancer remains a challenge with high dependence on the expert practitioner. We develop a deep learning (DL) model to identify the most prominent Gleason pattern in a highly curated data cohort and validate it on an independent dataset. The histology images are partitioned in tiles (14,509) and are curated by an expert to identify individual glandular structures with assigned primary Gleason pattern grades. We use transfer learning and fine-tuning approaches to compa… Show more

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