Optimizing Neuro-Fuzzy and Colonial Competition Algorithms for Skin Cancer Diagnosis in Dermatoscopic Images
Journal:
arXiv
Published Date:
May 13, 2025
Abstract
The rising incidence of skin cancer, coupled with limited public awareness
and a shortfall in clinical expertise, underscores an urgent need for advanced
diagnostic aids. Artificial Intelligence (AI) has emerged as a promising tool
in this domain, particularly for distinguishing malignant from benign skin
lesions. Leveraging publicly available datasets of skin lesions, researchers
have been developing AI-based diagnostic solutions. However, the integration of
such computer systems in clinical settings is still nascent. This study aims to
bridge this gap by employing a fusion of image processing techniques and
machine learning algorithms, specifically neuro-fuzzy and colonial competition
approaches. Applied to dermoscopic images from the ISIC database, our method
achieved a notable accuracy of 94% on a dataset of 560 images. These results
underscore the potential of our approach in aiding clinicians in the early
detection of melanoma, thereby contributing significantly to skin cancer
diagnostics.