Angio-Diff: Learning a Self-Supervised Adversarial Diffusion Model for Angiographic Geometry Generation
Zhifeng Wang, Renjiao Yi, Xin Wen, Chenyang Zhu, Kai Xu, Kunlun He

TL;DR
Angio-Diff introduces a self-supervised diffusion model that synthesizes realistic angiographic X-ray images from non-angiographic X-rays, improving vascular structure accuracy and addressing data scarcity in medical imaging.
Contribution
It presents a novel diffusion-based framework with a vascular shape model for high-quality angiography synthesis and provides a synthetic dataset for further research.
Findings
Achieves state-of-the-art image quality in synthetic angiography.
More accurately captures blood vessel geometry.
Outperforms existing methods in vascular structure fidelity.
Abstract
Vascular diseases pose a significant threat to human health, with X-ray angiography established as the gold standard for diagnosis, allowing for detailed observation of blood vessels. However, angiographic X-rays expose personnel and patients to higher radiation levels than non-angiographic X-rays, which are unwanted. Thus, modality translation from non-angiographic to angiographic X-rays is desirable. Data-driven deep approaches are hindered by the lack of paired large-scale X-ray angiography datasets. While making high-quality vascular angiography synthesis crucial, it remains challenging. We find that current medical image synthesis primarily operates at pixel level and struggles to adapt to the complex geometric structure of blood vessels, resulting in unsatisfactory quality of blood vessel image synthesis, such as disconnections or unnatural curvatures. To overcome this issue, we…
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Taxonomy
TopicsData Visualization and Analytics · 3D Shape Modeling and Analysis · Remote Sensing and LiDAR Applications
MethodsDiffusion
