Improving the generalization of deep learning models in the segmentation of mammography images
Journal:
arXiv
Published Date:
Mar 28, 2025
Abstract
Mammography stands as the main screening method for detecting breast cancer
early, enhancing treatment success rates. The segmentation of landmark
structures in mammography images can aid the medical assessment in the
evaluation of cancer risk and the image acquisition adequacy. We introduce a
series of data-centric strategies aimed at enriching the training data for deep
learning-based segmentation of landmark structures. Our approach involves
augmenting the training samples through annotation-guided image intensity
manipulation and style transfer to achieve better generalization than standard
training procedures. These augmentations are applied in a balanced manner to
ensure the model learns to process a diverse range of images generated by
different vendor equipments while retaining its efficacy on the original data.
We present extensive numerical and visual results that demonstrate the superior
generalization capabilities of our methods when compared to the standard
training. For this evaluation, we consider a large dataset that includes
mammography images generated by different vendor equipments. Further, we
present complementary results that show both the strengths and limitations of
our methods across various scenarios. The accuracy and robustness demonstrated
in the experiments suggest that our method is well-suited for integration into
clinical practice.