Accurate Measles Rash Detection via Vision Transformer Fine-Tuning
This work addresses the need for fast and reliable diagnostic systems for measles, a resurgent contagious disease, but is incremental as it applies an existing method to a specific medical domain.
The researchers tackled the problem of detecting measles rashes from skin images to aid outbreak control, achieving an average classification accuracy of 95.17% by fine-tuning a pretrained Vision Transformer model.
Measles, a highly contagious disease declared eliminated in the United States in 2000 after decades of successful vaccination campaigns, resurged in 2025, with 1,356 confirmed cases reported as of August 5, 2025. Given its rapid spread among susceptible individuals, fast and reliable diagnostic systems are critical for early prevention and containment. In this work, we applied transfer learning to fine-tune a pretrained Data-efficient Image Transformer (DeiT) model for distinguishing measles rashes from other skin conditions. After tuning the classification head on a diverse, curated skin rash image dataset, the DeiT model achieved an average classification accuracy of 95.17%, precision of 95.06%, recall of 95.17%, and an F1-score of 95.03%, demonstrating high effectiveness in accurate measles detection to aid outbreak control. We also compared the DeiT model with a convolutional neural network and discussed the directions for future research.