Doctor Approved: Generating Medically Accurate Skin Disease Images through AI-Expert Feedback
Janet Wang, Yunbei Zhang, Zhengming Ding, Jihun Hamm

TL;DR
This paper introduces MAGIC, a novel framework that leverages AI-expert collaboration and multimodal large language models to generate medically accurate skin disease images, enhancing data augmentation for diagnostic models.
Contribution
MAGIC creatively translates expert criteria into feedback for diffusion models, improving clinical accuracy of synthetic skin images with reduced human effort.
Findings
Enhanced clinical quality of generated images.
Improved diagnostic accuracy by +9.02%.
Further gains in few-shot learning scenarios.
Abstract
Paucity of medical data severely limits the generalizability of diagnostic ML models, as the full spectrum of disease variability can not be represented by a small clinical dataset. To address this, diffusion models (DMs) have been considered as a promising avenue for synthetic image generation and augmentation. However, they frequently produce medically inaccurate images, deteriorating the model performance. Expert domain knowledge is critical for synthesizing images that correctly encode clinical information, especially when data is scarce and quality outweighs quantity. Existing approaches for incorporating human feedback, such as reinforcement learning (RL) and Direct Preference Optimization (DPO), rely on robust reward functions or demand labor-intensive expert evaluations. Recent progress in Multimodal Large Language Models (MLLMs) reveals their strong visual reasoning…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management
