Comparative performance of deep learning models and non-dermatologists in diagnosing psoriasis, dermatophytosis, and eczema

dc.contributor.authorNutcha Yodrabum
dc.contributor.authorChanisada Wongpraparut
dc.contributor.authorTaravichet Titijaroonroj
dc.contributor.authorLeena Chularojanamontri
dc.contributor.authorSumanas Bunyaratavej
dc.contributor.authorNarumol Silpa‐archa
dc.contributor.authorChayada Chaiyabutr
dc.contributor.authorThanapon Noraset
dc.contributor.authorTeerapat Paringkarn
dc.contributor.authorThrit Hutachoke
dc.contributor.authorPrameyuda Watchirakaeyoon
dc.contributor.authorPantaree Kobkurkul
dc.contributor.authorSirin Apichonbancha
dc.contributor.authorPraveena Chiowchanwisawakit
dc.date.accessioned2026-05-08T19:25:45Z
dc.date.issued2025-12-4
dc.description.abstractAccurately differentiating scaly erythematous rashes among psoriasis, eczema, and dermatophytosis remains a clinical challenge, particularly for non-dermatologists. This study aimed to develop and evaluate deep learning models using macroscopic clinical images to classify these conditions and compare their performance with that of non-specialists. A total of 2940 images were sourced from public datasets, the Siriraj Dermatology databank, and newly collected images from Thai participants. Among sixteen evaluated models, the Swin demonstrated the best performance and interpretability. Gradient-weighted Class Activation Mapping (Grad-CAM) visualizations confirmed that the model focused on clinically relevant lesion features. Most importantly, in a pilot comparison, the Swin outperformed non-specialists in diagnostic accuracy. However, given the limited sample size of 30 images and 30 evaluators, these results should be interpreted as exploratory. Future studies with larger datasets and diverse clinician cohorts are warranted to confirm these findings and to support clinical integration.
dc.identifier.doi10.1038/s41598-025-29562-6
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/20266
dc.publisherScientific Reports
dc.subjectDermatology and Skin Diseases
dc.subjectPsoriasis: Treatment and Pathogenesis
dc.subjectCutaneous Melanoma Detection and Management
dc.titleComparative performance of deep learning models and non-dermatologists in diagnosing psoriasis, dermatophytosis, and eczema
dc.typeArticle

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