Breast Cancer Detection and Analytics Using Hybrid CNN and Extreme Learning Machine

Author:

Sureshkumar Vidhushavarshini1ORCID,Prasad Rubesh Sharma Navani2,Balasubramaniam Sathiyabhama3,Jagannathan Dhayanithi3,Daniel Jayanthi4,Dhanasekaran Seshathiri5ORCID

Affiliation:

1. Department of Computer Science and Engineering, SRM Institute of Science and Technology, Vadapalani, Chennai 600026, India

2. Department of Community Medicine, Government Mohan Kumaramangalam Medical College, Salem 636030, India

3. Department of Computer Science and Engineering, Sona College of Technology, Salem 636005, India

4. Department of Electronics and Communication Engineering, Rajalakshmi Engineering College, Chennai 602105, India

5. Department of Computer Science, UiT The Arctic University of Norway, 9037 Tromsø, Norway

Abstract

Early detection of breast cancer is essential for increasing survival rates, as it is one of the primary causes of death for women globally. Mammograms are extensively used by physicians for diagnosis, but selecting appropriate algorithms for image enhancement, segmentation, feature extraction, and classification remains a significant research challenge. This paper presents a computer-aided diagnosis (CAD)-based hybrid model combining convolutional neural networks (CNN) with a pruned ensembled extreme learning machine (HCPELM) to enhance breast cancer detection, segmentation, feature extraction, and classification. The model employs the rectified linear unit (ReLU) activation function to enhance data analytics after removing artifacts and pectoral muscles, and the HCPELM hybridized with the CNN model improves feature extraction. The hybrid elements are convolutional and fully connected layers. Convolutional layers extract spatial features like edges, textures, and more complex features in deeper layers. The fully connected layers take these features and combine them in a non-linear manner to perform the final classification. ELM performs classification and recognition tasks, aiming for state-of-the-art performance. This hybrid classifier is used for transfer learning by freezing certain layers and modifying the architecture to reduce parameters, easing cancer detection. The HCPELM classifier was trained using the MIAS database and evaluated against benchmark methods. It achieved a breast image recognition accuracy of 86%, outperforming benchmark deep learning models. HCPELM is demonstrating superior performance in early detection and diagnosis, thus aiding healthcare practitioners in breast cancer diagnosis.

Publisher

MDPI AG

Reference43 articles.

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2. Deep Learning to Improve Breast Cancer Detection on Screening Mammography;Shen;Sci. Rep.,2019

3. Classification of Mammograms Using Texture and CNN Based Extracted Features;Debelee;J. Biomim. Biomater. Biomed. Eng.,2019

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