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Weakly-Supervised Self-Training for Breast Cancer Localization

Gongbo Liang, Xiaoqin Wang, Yu Zhang, Nathan Jacobs

202022 citationsDOI

Abstract

The use of deep learning methods has dramatically increased the state-of-the-art performance in image object localization. However, commonly used supervised learning methods require large training datasets with pixel-level or bounding box annotations. Obtaining such fine-grained annotations is extremely costly, especially in the medical imaging domain. In this work, we propose a novel weakly supervised method for breast cancer localization. The essential advantage of our approach is that the model only requires image-level labels and uses a self-training strategy to refine the predicted localization in a step-wise manner. We evaluated our approach on a large, clinically relevant mammogram dataset. The results show that our model significantly improves performance compared to other methods trained similarly.

Topics & Concepts

Minimum bounding boxComputer scienceArtificial intelligencePixelBounding overwatchDomain (mathematical analysis)Pattern recognition (psychology)Image (mathematics)Object (grammar)Breast cancerDeep learningMachine learningTraining setMedical imagingComputer visionCancerMathematicsMedicineMathematical analysisInternal medicineAI in cancer detectionRadiomics and Machine Learning in Medical ImagingMedical Imaging and Analysis
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