Breast Cancer Detection from Multi-View Screening Mammograms with Visual Prompt Tuning
Journal:
arXiv
Published Date:
Apr 28, 2025
Abstract
Accurate detection of breast cancer from high-resolution mammograms is
crucial for early diagnosis and effective treatment planning. Previous studies
have shown the potential of using single-view mammograms for breast cancer
detection. However, incorporating multi-view data can provide more
comprehensive insights. Multi-view classification, especially in medical
imaging, presents unique challenges, particularly when dealing with
large-scale, high-resolution data. In this work, we propose a novel Multi-view
Visual Prompt Tuning Network (MVPT-NET) for analyzing multiple screening
mammograms. We first pretrain a robust single-view classification model on
high-resolution mammograms and then innovatively adapt multi-view feature
learning into a task-specific prompt tuning process. This technique selectively
tunes a minimal set of trainable parameters (7\%) while retaining the
robustness of the pre-trained single-view model, enabling efficient integration
of multi-view data without the need for aggressive downsampling. Our approach
offers an efficient alternative to traditional feature fusion methods,
providing a more robust, scalable, and efficient solution for high-resolution
mammogram analysis. Experimental results on a large multi-institution dataset
demonstrate that our method outperforms conventional approaches while
maintaining detection efficiency, achieving an AUROC of 0.852 for
distinguishing between Benign, DCIS, and Invasive classes. This work highlights
the potential of MVPT-NET for medical imaging tasks and provides a scalable
solution for integrating multi-view data in breast cancer detection.