Attend what matters: Leveraging vision foundational models for breast cancer classification using mammograms

Abstract

Vision Transformers (ViT) have become the architecture of choice for many computer vision tasks, yet their performance in computer-aided diagnostics remains limited. Focusing on breast cancer detection from mammograms, we identify two main causes for this shortfall. First, medical images are high-resolution with small abnormalities, leading to an excessive number of tokens and making it difficult for the softmax-based attention to localize and attend to relevant regions. Second, medical image classification is inherently fine-grained, with low inter-class and high intra-class variability, where standard cross-entropy training is insufficient. To overcome these challenges, we propose a framework with three key components: (1) Region of interest (RoI) based token reduction using an object detection model to guide attention; (2) contrastive learning between selected RoI to enhance fine-grained discrimination through hard-negative based training; and (3) a DINOv2 pretrained ViT that captures localization-aware, fine-grained features instead of global CLIP representations. Experiments on public mammography datasets demonstrate that our method achieves superior performance over existing baselines, establishing its effectiveness and potential clinical utility for large-scale breast cancer screening. Our code is available for reproducibility here: https://aih-iitd.github.io/publications/attend-what-matters

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