Using Computer Vision for Skin Disease Diagnosis in Bangladesh Enhancing Interpretability and Transparency in Deep Learning Models for Skin Cancer Classification
Journal:
arXiv
Published Date:
Jan 30, 2025
Abstract
With over 2 million new cases identified annually, skin cancer is the most
prevalent type of cancer globally and the second most common in Bangladesh,
following breast cancer. Early detection and treatment are crucial for
enhancing patient outcomes; however, Bangladesh faces a shortage of
dermatologists and qualified medical professionals capable of diagnosing and
treating skin cancer. As a result, many cases are diagnosed only at advanced
stages. Research indicates that deep learning algorithms can effectively
classify skin cancer images. However, these models typically lack
interpretability, making it challenging to understand their decision-making
processes. This lack of clarity poses barriers to utilizing deep learning in
improving skin cancer detection and treatment. In this article, we present a
method aimed at enhancing the interpretability of deep learning models for skin
cancer classification in Bangladesh. Our technique employs a combination of
saliency maps and attention maps to visualize critical features influencing the
model's diagnoses.