TL;DR
This paper introduces WeGleNet, a weakly-supervised deep learning model that accurately segments Gleason grades in prostate histology images using only global labels, reducing annotation effort while maintaining high performance.
Contribution
WeGleNet is a novel weakly-supervised CNN that performs accurate Gleason pattern segmentation without pixel-level annotations, advancing prostate cancer diagnosis tools.
Findings
Achieved pixel-level Cohen's kappa of 0.61 in segmentation.
Matched fully-supervised methods in segmentation performance.
Obtained core-level Gleason score correlation of 0.76 with pathologists.
Abstract
Prostate cancer is one of the main diseases affecting men worldwide. The Gleason scoring system is the primary diagnostic tool for prostate cancer. This is obtained via the visual analysis of cancerous patterns in prostate biopsies performed by expert pathologists, and the aggregation of the main Gleason grades in a combined score. Computer-aided diagnosis systems allow to reduce the workload of pathologists and increase the objectivity. Recently, efforts have been made in the literature to develop algorithms aiming the direct estimation of the global Gleason score at biopsy/core level with global labels. However, these algorithms do not cover the accurate localization of the Gleason patterns into the tissue. In this work, we propose a deep-learning-based system able to detect local cancerous patterns in the prostate tissue using only the global-level Gleason score during training. The…
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