AI-Powered Eczema Severity Assessment from Smartphone Images
Researchers in Japan have developed an artificial intelligence (AI) tool that objectively evaluates the severity of atopic dermatitis (AD) using photographs uploaded by users through their smartphones. This innovation, published in the journal Allergy, represents a significant advancement in applying AI to chronic inflammatory dermatoses.
Development of the AI Model
The AI model was developed by integrating three algorithms: body part detection, skin lesion detection, and severity assessment. The severity assessment is based on the Three-Item Severity (TIS) score, a localized measure ranging from 0 to 9 that evaluates erythema, edema or papulation, and excoriation. The training process utilized an extensive database from Atopiyo, the largest online AD platform, which contains over 57,000 photos and comments from more than 28,000 users.
Training and Validation
The AI was trained on 880 images and tested using 220 images. A total of 9,656 images with itch scores were used to establish and validate the AI-TIS in patients aged between 2 and 71 years (median age: 33 years). The trained model accurately detected 98% of body parts and 100% of eczema areas. The AI’s outputs were compared with established clinical scoring systems, including the Scoring Atopic Dermatitis (SCORAD) index.
Clinical Correlation and Implications
In a subgroup of 15 participants who underwent in-person evaluations by a dermatologist, the Pearson correlation between clinical scores and AI results was robust, with R = 0.73 for test images. This study demonstrated that AI-TIS can effectively identify body parts, eczema-affected areas, and TIS scores from smartphone images in non-clinical settings. The strong correlation between AI-TIS and objective measures supports its clinical utility in assessing disease severity and patient perception.
Limitations and Future Directions
While the AI tool showed significant promise in quantifying objective disease signs from home photographs, it has limitations. The model needs to be expanded to cover a wider age range and diverse skin types and incorporate elements from other established clinical scales. Nonetheless, this development represents a meaningful step forward in dermatology and AD care, potentially enhancing patient monitoring and treatment.
The AI model’s ability to objectively assess eczema severity could help patients monitor their condition more effectively and facilitate timely treatment. This innovation lays the groundwork for future advancements in AI-driven dermatological assessments, potentially improving patient care and clinical research.