Synthetic Melanoma Image Generation and Evaluation Using Generative Adversarial Networks
Pei-Yu Lin, Yidan Shen, Neville Mathew, Renjie Hu, Siyu Huang, Courtney M. Queen, Cameron E. West, Ana Ciurea, George Zouridakis

TL;DR
This study systematically benchmarks four GAN architectures for high-resolution melanoma image synthesis, demonstrating that StyleGAN2 produces realistic images that improve melanoma detection models and could help address data scarcity and class imbalance.
Contribution
First comprehensive comparison of GAN models for melanoma image synthesis, showing StyleGAN2's superior quality and utility in augmenting training data for skin cancer detection.
Findings
StyleGAN2 achieves best FID scores among tested models.
Synthetic images recognized as melanoma by classifiers at 83%.
Adding synthetic images improves melanoma detection AUC from 0.925 to 0.945.
Abstract
Melanoma is the most lethal form of skin cancer, and early detection is critical for improving patient outcomes. Although dermoscopy combined with deep learning has advanced automated skin-lesion analysis, progress is hindered by limited access to large, well-annotated datasets and by severe class imbalance, where melanoma images are substantially underrepresented. To address these challenges, we present the first systematic benchmarking study comparing four GAN architectures-DCGAN, StyleGAN2, and two StyleGAN3 variants (T/R)-for high-resolution melanoma-specific synthesis. We train and optimize all models on two expert-annotated benchmarks (ISIC 2018 and ISIC 2020) under unified preprocessing and hyperparameter exploration, with particular attention to R1 regularization tuning. Image quality is assessed through a multi-faceted protocol combining distribution-level metrics (FID),…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · AI in cancer detection · Face recognition and analysis
