Deep Interpretable Classification and Weakly-Supervised Segmentation of Histology Images via Max-Min Uncertainty
Soufiane Belharbi, J\'er\^ome Rony, Jose Dolz, Ismail Ben Ayed, Luke, McCaffrey, Eric Granger

TL;DR
This paper introduces a novel weakly-supervised learning approach for histology image segmentation that uses uncertainty modeling to improve accuracy and reduce false positives, especially in challenging cases.
Contribution
The authors propose new regularization techniques based on high uncertainty to explicitly model non-discriminative regions in weakly-supervised histology image segmentation.
Findings
Significant performance improvements over state-of-the-art methods.
Effective reduction of false-positive segmentation in challenging images.
Validated on GlaS colon cancer and Camelyon16 breast cancer datasets.
Abstract
Weakly-supervised learning (WSL) has recently triggered substantial interest as it mitigates the lack of pixel-wise annotations. Given global image labels, WSL methods yield pixel-level predictions (segmentations), which enable to interpret class predictions. Despite their recent success, mostly with natural images, such methods can face important challenges when the foreground and background regions have similar visual cues, yielding high false-positive rates in segmentations, as is the case in challenging histology images. WSL training is commonly driven by standard classification losses, which implicitly maximize model confidence, and locate the discriminative regions linked to classification decisions. Therefore, they lack mechanisms for modeling explicitly non-discriminative regions and reducing false-positive rates. We propose novel regularization terms, which enable the model to…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Digital Imaging for Blood Diseases
