Early breast cancer detection via infrared thermography using a CNN enhanced with particle swarm optimization.

Journal: Scientific reports
Published Date:

Abstract

Breast cancer remains the most prevalent cause of cancer-related mortality among women worldwide, with an estimated incidence exceeding 500,000 new cases annually. Timely diagnosis is vital for enhancing therapeutic outcomes and increasing survival probabilities. Although conventional diagnostic tools such as mammography are widely used and generally effective, they are often invasive, costly, and exhibit reduced efficacy in patients with dense breast tissue. Infrared thermography, by contrast, offers a non-invasive and economical alternative; however, its clinical adoption has been limited, largely due to difficulties in accurate thermal image interpretation and the suboptimal tuning of machine learning algorithms. To overcome these limitations, this study proposes an automated classification framework that employs convolutional neural networks (CNNs) for distinguishing between malignant and benign thermographic breast images. An Enhanced Particle Swarm Optimization (EPSO) algorithm is integrated to automatically fine-tune CNN hyperparameters, thereby minimizing manual effort and enhancing computational efficiency. The methodology also incorporates advanced image preprocessing techniques-including Mamdani fuzzy logic-based edge detection, Contrast-Limited Adaptive Histogram Equalization (CLAHE) for contrast enhancement, and median filtering for noise suppression-to bolster classification performance. The proposed model achieves a superior classification accuracy of 98.8%, significantly outperforming conventional CNN implementations in terms of both computational speed and predictive accuracy. These findings suggest that the developed system holds substantial potential for early, reliable, and cost-effective breast cancer screening in real-world clinical environments.

Authors

  • Riyadh M Alzahrani
    Department of Medical Equipment Technology, College of Applied Medical Sciences, Majmaah University, Al Majmaah, 11952, Saudi Arabia.
  • Mohamed Yacin Sikkandar
    Department of Medical Equipment Technology, College of Applied Medical Sciences, Majmaah University, Al Majmaah 11952, Saudi Arabia.
  • S Sabarunisha Begum
    Department of Biotechnology, P.S.R. Engineering College, Sivakasi 626140, India.
  • Ahmed Farag Salem Babetat
    Dr. Mohammad Alfagih Hospital, Riyadh, 13223, Saudi Arabia.
  • Maryam Alhashim
    Department of Radiology, College of Medicine, Imam Abdulrahman Bin Faisal University, Dammam, 34212, Saudi Arabia.
  • Abdulrahman Alduraywish
    Department of Medical Equipment Technology, College of Applied Medical Sciences, Majmaah University, Al Majmaah, 11952, Saudi Arabia.
  • N B Prakash
    Department of Department of Electrical and Electronics Engineering, National Engineering College, Kovilpatti, 628503, Tamilnadu, India.
  • Eddie Y K Ng
    School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore.