DermaLite - Multi Modal Evidential Deep Learning for Skin Lesion Classification
DOI:
https://doi.org/10.47392/IRJAEH.2026.0589Keywords:
Skin lesion classification, dermoscopy, evidential deep learning, uncertainty quantification, GAN augmentation, multi-modal fusion, Grad-CAMAbstract
Automated skin lesion classification from dermoscopic images is challenging due to class imbalance and the need for reliable confidence estimates in clinical settings. This paper proposes DermaLite, a multi-modal evidential deep learning framework for skin lesion classification. We use StyleGAN2-ADA to generate synthetic dermoscopic images that balance the HAM10000 dataset, which originally has severe imbalance (melanocytic nevi comprise 67% of samples while vascular lesions are under 2%). The model combines EfficientNet-B3 visual features with clinical metadata such as patient age and lesion location through a cross-attention fusion layer. An evidential classification head outputs Dirichlet-distributed probability, providing explicit uncertainty scores alongside predictions. Grad-CAM is used for visual explanation. On the HAM10000 test set, DermaLite achieves 96.17% accuracy. The evidential head gives well-calibrated uncertainty (ECE = 0.023), and ablation experiments confirm that each component contributes meaningfully to performance.
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