Vision transformer-convolution for breast cancer classification using mammography images: A comparative study

Author:

Abimouloud Mouhamed Laid12,Bensid Khaled3,Elleuch Mohamed42,Aiadi Oussama5,Kherallah Monji62

Affiliation:

1. National Engineering School of Sfax, University of Sfax, Sfax, Tunisia

2. Advanced Technologies for Environment and Smart Cities (ATES Unit), University of Sfax, Sfax, Tunisia

3. Laboratory of Electrical Engineering (LAGE), University of KASDI Merbah Ouargla, Ouargla, Algeria

4. National School of Computer Science (ENSI), University of Manouba, Manouba, Tunisia

5. Artifcial Intelligence and Information Technology Laboratory (LINATI), Kasdi Merbah University, Ouargla, Algeria

6. Faculty of Sciences, University of Sfax, Sfax, Tunisia

Abstract

Breast cancer is a significant global health concern, highlighting the critical importance of early detection for effective treatment of women’s health. While convolutional networks (CNNs) have been the best for analysing medical images, recent interest has emerged in leveraging vision transformers (ViTs) for medical data analysis. This study aimed to conduct a comprehensive comparison of three systems a self-attention transformer (VIT), a compact convolution transformer (CCT), and a tokenlearner (TVIT) for binary classification of mammography images into benign and cancerous tissue. Thorough experiments were performed using the DDSM dataset, which consists of 5970 benign and 7158 malignant images. The performance accuracy of the proposed models was evaluated, yielding results of 99.81% for VIT, 99.92% for CCT, and 99.05% for TVIT. Additionally, the study compared these results with the current state-of-the-art performance metrics. The findings demonstrate how convolution-attention mechanisms can effectively contribute to the development of robust computer-aided systems for diagnosing breast cancer. Notably, the proposed approach achieves high-performance results while also minimizing the computational resources required and reducing decision time.

Publisher

IOS Press

Reference26 articles.

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2. R. Maalej, A. Mezghani, M. Elleuch, M. Kherallah et al., Transfer learning and data augmentation for improved breast cancer histopathological images classifier, International Journal of Computer Information Systems & Industrial Management Applications 15, (2023).

3. Soft computing and image processing techniques for COVID-19 prediction in lung CT scan images;Appari;Int. J. Hybrid Intell. Syst,2022

4. Z. Rustam, V. Hapsari and M. Solihin, Optimal cervical cancer classification using gauss-newton representation based algorithm, Vol. 2168 (AIP Publishing, 2019).

5. S. Bharati, P. Podder and M. Mondal, Artificial neural network based breast cancer screening: a comprehensive review, International Journal of Computer Information Systems & Industrial Management Applications 12 (2020).

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