Multi-View Mammographic Density Classification by Dilated and Attention-Guided Residual Learning | IEEE Journals & Magazine | IEEE Xplore

Multi-View Mammographic Density Classification by Dilated and Attention-Guided Residual Learning


Abstract:

Breast density is widely adopted to reflect the likelihood of early breast cancer development. Existing methods of mammographic density classification either require step...Show More

Abstract:

Breast density is widely adopted to reflect the likelihood of early breast cancer development. Existing methods of mammographic density classification either require steps of manual operations or achieve only moderate classification accuracy due to the limited model capacity. In this study, we present a radiomics approach based on dilated and attention-guided residual learning for the task of mammographic density classification. The proposed method was instantiated with two datasets, one clinical dataset and one publicly available dataset, and classification accuracies of 88.7 and 70.0 percent were obtained, respectively. Although the classification accuracy of the public dataset was lower than the clinical dataset, which was very likely related to the dataset size, our proposed model still achieved a better performance than the naive residual networks and several recently published deep learning-based approaches. Furthermore, we designed a multi-stream network architecture specifically targeting at analyzing the multi-view mammograms. Utilizing the clinical dataset, we validated that multi-view inputs were beneficial to the breast density classification task with an increase of at least 2.0 percent in accuracy and the different views lead to different model classification capacities. Our method has a great potential to be further developed and applied in computer-aided diagnosis systems. Our code is available at https://github.com/lich0031/Mammographic_Density_Classification.
Published in: IEEE/ACM Transactions on Computational Biology and Bioinformatics ( Volume: 18, Issue: 3, 01 May-June 2021)
Page(s): 1003 - 1013
Date of Publication: 03 February 2020

ISSN Information:

PubMed ID: 32012021

Funding Agency:


Contact IEEE to Subscribe

References

References is not available for this document.