Evaluating the Performance of StyleGAN2-ADA on Medical Images
McKell Woodland, John Wood, Brian M. Anderson, Suprateek Kundu, Ethan, Lin, Eugene Koay, Bruno Odisio, Caroline Chung, Hyunseon Christine Kang,, Aradhana M. Venkatesan, Sireesha Yedururi, Brian De, Yuan-Mao Lin, Ankit B., Patel, Kristy K. Brock

TL;DR
This study applies StyleGAN2-ADA to high-resolution medical images, demonstrating high-quality image generation with reduced training complexity and data requirements, validated through quantitative metrics and clinician assessments.
Contribution
It is the first comprehensive evaluation of StyleGAN2-ADA on diverse medical imaging datasets, highlighting its effectiveness and stability with transfer learning and data augmentation.
Findings
Achieved low FID scores across multiple datasets.
Clinicians rated generated images as real 42% of the time.
Transfer learning and data augmentation improve training stability.
Abstract
Although generative adversarial networks (GANs) have shown promise in medical imaging, they have four main limitations that impeded their utility: computational cost, data requirements, reliable evaluation measures, and training complexity. Our work investigates each of these obstacles in a novel application of StyleGAN2-ADA to high-resolution medical imaging datasets. Our dataset is comprised of liver-containing axial slices from non-contrast and contrast-enhanced computed tomography (CT) scans. Additionally, we utilized four public datasets composed of various imaging modalities. We trained a StyleGAN2 network with transfer learning (from the Flickr-Faces-HQ dataset) and data augmentation (horizontal flipping and adaptive discriminator augmentation). The network's generative quality was measured quantitatively with the Fr\'echet Inception Distance (FID) and qualitatively with a visual…
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Taxonomy
MethodsAdaptive Discriminator Augmentation · StyleGAN2
