NeRF-CA: Dynamic Reconstruction of X-ray Coronary Angiography with Extremely Sparse-views.

IF 6.5
Kirsten W H Maas, Danny Ruijters, Anna Vilanova, Nicola Pezzotti
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Abstract

Dynamic three-dimensional (4D) reconstruction from two-dimensional X-ray coronary angiography (CA) remains a significant clinical problem. Existing CA reconstruction methods often require extensive user interaction or large training datasets. Recently, Neural Radiance Field (NeRF) has successfully reconstructed high-fidelity scenes in natural and medical contexts without these requirements. However, challenges such as sparse-views, intra-scan motion, and complex vessel morphology hinder its direct application to CA data. We introduce NeRF-CA, a first step toward a fully automatic 4D CA reconstruction that achieves reconstructions from sparse coronary angiograms. To the best of our knowledge, we are the first to address the challenges of sparse-views and cardiac motion by decoupling the scene into the moving coronary artery and the static background, effectively translating the problem of motion into a strength. NeRF-CA serves as a first stepping stone for solving the 4D CA reconstruction problem, achieving adequate 4D reconstructions from as few as four angiograms, as required by clinical practice, while significantly outperforming state-of-the-art sparse-view X-ray NeRF. We validate our approach quantitatively and qualitatively using representative 4D phantom datasets and ablation studies. To accelerate research in this domain, we made our codebase public: https://github.com/kirstenmaas/NeRF-CA.

NeRF-CA:极其稀疏的x线冠状动脉造影动态重建。
二维x线冠状动脉造影(CA)的动态三维(4D)重建仍然是一个重要的临床问题。现有的CA重建方法通常需要大量的用户交互或大型训练数据集。最近,神经辐射场(NeRF)在没有这些要求的情况下成功地重建了自然和医疗环境中的高保真场景。然而,诸如稀疏视图、扫描内运动和复杂的血管形态等挑战阻碍了其直接应用于CA数据。我们介绍NeRF-CA,这是全自动四维CA重建的第一步,可以从稀疏的冠状动脉造影中实现重建。据我们所知,我们是第一个通过将场景解耦到移动的冠状动脉和静态背景中来解决稀疏视图和心脏运动挑战的人,有效地将运动问题转化为力量。NeRF-CA是解决四维CA重建问题的第一块垫脚石,根据临床实践的需要,只需四张血管造影就可以获得足够的四维重建,同时显著优于最先进的稀疏视图x射线NeRF。我们使用具有代表性的4D幻影数据集和消融研究,定量和定性地验证了我们的方法。为了加速这一领域的研究,我们公开了我们的代码库:https://github.com/kirstenmaas/NeRF-CA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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