Title A structured review of deep learning approaches and image-preprocessing techniques for automated contact allergy patch test interpretation
Authors Stragyte, Dominyka ; Mikalauskas, Gvidas ; Gaidulevic, Katrina ; Paukstaitiene, Renata ; Stasaitis, Kestutis ; Raudonis, Vidas ; Valiukeviciene, Skaidra
DOI 10.3390/medsci14020322
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Is Part of Medical sciences.. Basel : MDPI. 2026, vol. 14, iss. 2, art. no. 322, p. 1-20.. ISSN 2076-3271
Keywords [eng] allergic contact dermatitis ; artificial intelligence ; contact dermatitis ; convolutional neural network ; deep learning ; machine learning ; patch test
Abstract [eng] Background: Allergic contact dermatitis (ACD) is a common inflammatory skin disease and patch testing (PT) remains the gold standard for its diagnosis; however, PT interpretation is time-consuming and prone to inter-observer variability. Growing advances in digital imaging and artificial intelligence (AI) have encouraged the development of automated PT evaluation systems. This review aimed to summarize the use of deep learning networks (DNNs) and image-preprocessing techniques for PT classification. Methods: A literature review was conducted to identify original research published between 2020 and 2025 that applied deep learning algorithms to PT image analysis. Included studies were assessed with respect to model architecture, dataset characteristics, preprocessing strategies, and diagnostic performance. Results: Six original studies employing deep learning for PT image classification met the inclusion criteria. They employed a range of architectures, including YOLOv5x, EfficientNetB0, Xception, and custom CNN models. Reported diagnostic performance varied, with accuracy values ranging from 90% to 99.5%, F1-scores from 0.37 to 0.98, and AUROC values up to 0.94. Despite promising results, models remain unreliable for ICDRG grading, especially for severe reactions, and methodological variability in dataset composition, imaging conditions, preprocessing pipelines, and classification tasks limits comparability across studies. Conclusions: Deep learning shows promise for automated PT interpretation, but further standardized and multicenter studies with detailed preprocessing protocols and comprehensive ICDRG grading are required for clinical implementation.
Published Basel : MDPI
Type Journal article
Language English
Publication date 2026
CC license CC license description