arXiv Open Access 2025

Toward Accessible Dermatology: Skin Lesion Classification Using Deep Learning Models on Mobile-Acquired Images

Asif Newaz Masum Mushfiq Ishti A Z M Ashraful Azam Asif Ur Rahman Adib
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Abstrak

Skin diseases are among the most prevalent health concerns worldwide, yet conventional diagnostic methods are often costly, complex, and unavailable in low-resource settings. Automated classification using deep learning has emerged as a promising alternative, but existing studies are mostly limited to dermoscopic datasets and a narrow range of disease classes. In this work, we curate a large dataset of over 50 skin disease categories captured with mobile devices, making it more representative of real-world conditions. We evaluate multiple convolutional neural networks and Transformer-based architectures, demonstrating that Transformer models, particularly the Swin Transformer, achieve superior performance by effectively capturing global contextual features. To enhance interpretability, we incorporate Gradient-weighted Class Activation Mapping (Grad-CAM), which highlights clinically relevant regions and provides transparency in model predictions. Our results underscore the potential of Transformer-based approaches for mobile-acquired skin lesion classification, paving the way toward accessible AI-assisted dermatological screening and early diagnosis in resource-limited environments.

Topik & Kata Kunci

Penulis (4)

A

Asif Newaz

M

Masum Mushfiq Ishti

A

A Z M Ashraful Azam

A

Asif Ur Rahman Adib

Format Sitasi

Newaz, A., Ishti, M.M., Azam, A.Z.M.A., Adib, A.U.R. (2025). Toward Accessible Dermatology: Skin Lesion Classification Using Deep Learning Models on Mobile-Acquired Images. https://arxiv.org/abs/2509.04800

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2025
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en
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arXiv
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