CVApr 21

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

arXiv:2604.1935072.9Has Code
Predicted impact top 39% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For medical imaging researchers, this work improves ViT-based breast cancer classification by tackling high-resolution and fine-grained challenges, though it is an incremental improvement over existing methods.

The paper addresses the limited performance of Vision Transformers in breast cancer detection from mammograms by proposing a framework that combines ROI-based token reduction, contrastive learning, and DINOv2 pretraining, achieving superior results over existing baselines on public datasets.

Vision Transformers $(\texttt{ViT})$ 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 $(\texttt{RoI})$ based token reduction using an object detection model to guide attention; (2) contrastive learning between selected $\texttt{RoI}$ to enhance fine-grained discrimination through hard-negative based training; and (3) a $\texttt{DINOv2}$ pretrained $\texttt{ViT}$ that captures localization-aware, fine-grained features instead of global $\texttt{CLIP}$ 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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