TL;DR
AngioMoCo is a learning-based method that effectively corrects motion artifacts in cerebral DSA images, improving image quality and clinical usability by differentiating motion from contrast flow.
Contribution
It introduces a novel framework that combines contrast extraction with motion correction, outperforming traditional iterative methods in speed and accuracy.
Findings
Produces high-quality motion-compensated DSA images
Removes motion artifacts while preserving contrast flow
Faster than existing iterative registration methods
Abstract
Cerebral X-ray digital subtraction angiography (DSA) is the standard imaging technique for visualizing blood flow and guiding endovascular treatments. The quality of DSA is often negatively impacted by body motion during acquisition, leading to decreased diagnostic value. Time-consuming iterative methods address motion correction based on non-rigid registration, and employ sparse key points and non-rigidity penalties to limit vessel distortion. Recent methods alleviate subtraction artifacts by predicting the subtracted frame from the corresponding unsubtracted frame, but do not explicitly compensate for motion-induced misalignment between frames. This hinders the serial evaluation of blood flow, and often causes undesired vasculature and contrast flow alterations, leading to impeded usability in clinical practice. To address these limitations, we present AngioMoCo, a learning-based…
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