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arxiv: 2511.10367 · v2 · pith:JODX3CIOnew · submitted 2025-11-13 · 💻 cs.CV · cs.AI

DermAI: Clinical dermatology acquisition through quality-driven image collection for AI classification in mobile

classification 💻 cs.CV cs.AI
keywords dermaiclassificationclinicalcollectiondatadatasetsdermatologyimage
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AI-based dermatology adoption remains limited by biased datasets, variable image quality, and limited validation. We introduce DermAI, a lightweight, smartphone-based application that enables real-time capture, annotation, and classification of skin lesions during routine consultations. Unlike prior dermoscopy-focused tools, DermAI performs on-device quality checks, and local model adaptation. The DermAI clinical dataset, encompasses a wide range of skin tones, ethinicity and source devices. In preliminary experiments, models trained on public datasets failed to generalize to our samples, while fine-tuning with local data improved performance. These results highlight the importance of standardized, diverse data collection aligned with healthcare needs and oriented to machine learning development.

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