Improving Breast Cancer Detection Using Symmetry Information with Deep Learning
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Titre | Improving Breast Cancer Detection Using Symmetry Information with Deep Learning |
Type de publication | Conference Paper |
Year of Publication | 2018 |
Auteurs | Hagos YBrhane, Merida AGubern, Teuwen J |
Editor | Stoyanov D, Taylor Z, Kainz B, Maicas G, Beichel RR |
Conference Name | IMAGE ANALYSIS FOR MOVING ORGAN, BREAST, AND THORACIC IMAGES |
Publisher | SPRINGER INTERNATIONAL PUBLISHING AG |
Conference Location | GEWERBESTRASSE 11, CHAM, CH-6330, SWITZERLAND |
ISBN Number | 978-3-030-00946-5; 978-3-030-00945-8 |
Mots-clés | Breast cancer, convolutional neural networks, Deep learning, Digital mammography, Mass detection, symmetry |
Résumé | Convolutional Neural Networks (CNN) have had a huge success in many areas of computer vision and medical image analysis. However, there is still an immense potential for performance improvement in mammogram breast cancer detection Computer-Aided Detection (CAD) systems by integrating all the information that radiologist utilizes, such as symmetry and temporal data. In this work, we proposed a patch based multi-input CNN that learns symmetrical difference to detect breast masses. The network was trained on a large-scale dataset of 28294 mammogram images. The performance was compared to a baseline architecture without symmetry context using Area Under the ROC Curve (AUC) and Competition Performance Metric (CPM). At candidate level, AUC value of 0.933 with 95% confidence interval of [0.920, 0.954] was obtained when symmetry information is incorporated in comparison with baseline architecture which yielded AUC value of 0.929 with [0.919, 0.947] confidence interval. By incorporating symmetrical information, although there was no a significant candidate level performance again (p = 0.111), we have found a compelling result at exam level with CPM value of 0.733 (p = 0.001). We believe that including temporal data, and adding benign class to the dataset could improve the detection performance. |
DOI | 10.1007/978-3-030-00946-5_10 |