Ves-GAN: Unsupervised Vessel-Targeted Low-Dose Coronary Computed Tomography Angiography Denoising Framework
Xinyuan Xiang, Jiayue Li, Yan Yi, Yining Wang, Sixing Yin, Xiaohe Chen

TL;DR
Ves-GAN is a new unsupervised framework that improves low-dose coronary CT angiography by reducing noise while preserving important vascular details.
Contribution
Ves-GAN introduces a vessel-consistency loss and high-frequency-aware modules for better vascular structure preservation in unsupervised denoising.
Findings
Ves-GAN improves peak signal-to-noise ratio by 7.5% and structural similarity by 10.2% over existing unsupervised models.
Radiologists observed significant improvements in vascular clarity and lesion visibility in clinical validation with 50 CT scans.
Abstract
Objective: This study aims to develop an unsupervised denoising framework for low-dose coronary computed tomography (CT) angiography (LDCTA), which reduces noise while preserving vascular structures. Impact Statement: This work proposes Ves-GAN, a novel denoising framework that meets the challenges of data acquisition and assumptions about noise characteristics. By providing robust noise reduction while maintaining vascular integrity, Ves-GAN facilitates more reliable clinical evaluations and improves the overall quality of cardiovascular diagnosis. Introduction: LDCTA minimizes radiation exposure in cardiovascular imaging but introduces noise and blurring, affecting diagnostic accuracy. Existing denoising methods, such as supervised deep learning models, require paired datasets and rely on noise assumptions. Unsupervised models show promise but often fail to preserve vascular…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Cardiac Imaging and Diagnostics · Advanced MRI Techniques and Applications
