A CNN-based methodology for breast cancer diagnosis using thermal images

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TitreA CNN-based methodology for breast cancer diagnosis using thermal images
Type de publicationJournal Article
Year of Publication2021
AuteursZuluaga-Gomez J., Z. Masry A, Benaggoune K., Meraghni S., Zerhouni N.
JournalCOMPUTER METHODS IN BIOMECHANICS AND BIOMEDICAL ENGINEERING-IMAGING AND VISUALIZATION
Volume9
Pagination131-145
Date PublishedMAR 4
Type of ArticleArticle
ISSN2168-1163
Mots-clésBreast cancer, breast thermography, computer aided diagnosis system, convolutional neural network, hyper-parameters optimisation
Résumé

A recent study from GLOBOCAN disclosed that during 2018 two million women worldwide had been diagnosed with breast cancer. Currently, mammography, magnetic resonance imaging, ultrasound, and biopsies are the main screening techniques, which require either, expensive devices or personal qualified; but some countries still lack access due to economic, social, or cultural issues. As an alternative diagnosis methodology for breast cancer, this study presents a computer-aided diagnosis system based on convolutional neural networks (CNN) using thermal images. We demonstrate that CNNs are faster, reliable and robust when compared with different techniques. We study the influence of data pre-processing, data augmentation and database size on several CAD models. Among the 57 patients database, our CNN models obtained a higher accuracy (92%) and F1-score (92%) that outperforms several state-of-the-art architectures such as ResNet50, SeResNet50, and Inception. This study exhibits that a CAD system that implements data-augmentation techniques reach identical performance metrics in comparison with a system that uses a bigger database (up to 33%) but without data-augmentation. Finally, this study proposes a computer-aided system for breast cancer diagnosis but also, it stands as baseline research on the influence of data-augmentation and database size for breast cancer diagnosis from thermal images with CNNs

DOI10.1080/21681163.2020.1824685