CVAIAug 10, 2025

Perceptual Evaluation of GANs and Diffusion Models for Generating X-rays

arXiv:2508.07128v11 citationsh-index: 6HAIC@MICCAI
Originality Synthesis-oriented
AI Analysis

This addresses the problem of data scarcity for low-prevalence anomalies in medical imaging, which can impair AI diagnostic tools, though it is incremental as it compares existing methods on new data.

The study evaluated GANs and diffusion models for generating synthetic chest X-rays with four abnormalities, finding that diffusion models produce more visually realistic images overall, but GANs achieve better accuracy for specific conditions like the absence of enlarged cardiac silhouette.

Generative image models have achieved remarkable progress in both natural and medical imaging. In the medical context, these techniques offer a potential solution to data scarcity-especially for low-prevalence anomalies that impair the performance of AI-driven diagnostic and segmentation tools. However, questions remain regarding the fidelity and clinical utility of synthetic images, since poor generation quality can undermine model generalizability and trust. In this study, we evaluate the effectiveness of state-of-the-art generative models-Generative Adversarial Networks (GANs) and Diffusion Models (DMs)-for synthesizing chest X-rays conditioned on four abnormalities: Atelectasis (AT), Lung Opacity (LO), Pleural Effusion (PE), and Enlarged Cardiac Silhouette (ECS). Using a benchmark composed of real images from the MIMIC-CXR dataset and synthetic images from both GANs and DMs, we conducted a reader study with three radiologists of varied experience. Participants were asked to distinguish real from synthetic images and assess the consistency between visual features and the target abnormality. Our results show that while DMs generate more visually realistic images overall, GANs can report better accuracy for specific conditions, such as absence of ECS. We further identify visual cues radiologists use to detect synthetic images, offering insights into the perceptual gaps in current models. These findings underscore the complementary strengths of GANs and DMs and point to the need for further refinement to ensure generative models can reliably augment training datasets for AI diagnostic systems.

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