AdverX-Ray: Ensuring X-Ray Integrity Through Frequency-Sensitive Adversarial VAEs
Francisco Caetano, Christiaan Viviers, Lena Filatova, Peter H. N. de With, Fons van der Sommen

TL;DR
AdverX-Ray is a lightweight, frequency-sensitive adversarial VAE-based method that effectively detects covariate shifts in X-ray images, improving the reliability of medical imaging diagnostics.
Contribution
It introduces a novel adversarial VAE approach focusing on high-frequency artifacts to assess X-ray image quality and detect distribution shifts.
Findings
Achieves 96.2% AUROC in OOD detection
Outperforms existing covariate shift detection methods
Operates efficiently for real-time applications
Abstract
Ensuring the quality and integrity of medical images is crucial for maintaining diagnostic accuracy in deep learning-based Computer-Aided Diagnosis and Computer-Aided Detection (CAD) systems. Covariate shifts are subtle variations in the data distribution caused by different imaging devices or settings and can severely degrade model performance, similar to the effects of adversarial attacks. Therefore, it is vital to have a lightweight and fast method to assess the quality of these images prior to using CAD models. AdverX-Ray addresses this need by serving as an image-quality assessment layer, designed to detect covariate shifts effectively. This Adversarial Variational Autoencoder prioritizes the discriminator's role, using the suboptimal outputs of the generator as negative samples to fine-tune the discriminator's ability to identify high-frequency artifacts. Images generated by…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Nuclear Physics and Applications
MethodsFocus
