CVLGMLSep 21, 2018

Classifying Mammographic Breast Density by Residual Learning

arXiv:1809.10241v11 citations
Originality Incremental advance
AI Analysis

This work addresses breast cancer risk assessment for medical diagnosis, presenting a strong incremental improvement over existing methods.

The authors tackled mammographic breast density classification using a residual learning radiomics approach, achieving 92.6% accuracy for four BI-RADS categories and 96.8% for two categories on the INbreast dataset.

Mammographic breast density, a parameter used to describe the proportion of breast tissue fibrosis, is widely adopted as an evaluation characteristic of the likelihood of breast cancer incidence. In this study, we present a radiomics approach based on residual learning for the classification of mammographic breast densities. Our method possesses several encouraging properties such as being almost fully automatic, possessing big model capacity and flexibility. It can obtain outstanding classification results without the necessity of result compensation using mammographs taken from different views. The proposed method was instantiated with the INbreast dataset and classification accuracies of 92.6% and 96.8% were obtained for the four BI-RADS (Breast Imaging and Reporting Data System) category task and the two BI-RADS category task,respectively. The superior performances achieved compared to the existing state-of-the-art methods along with its encouraging properties indicate that our method has a great potential to be applied as a computer-aided diagnosis tool.

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