Physics-Informed Score-Based Diffusion Model for Limited-Angle Reconstruction of Cardiac Computed Tomography

Shuo Han;Yongshun Xu;Dayang Wang;Bahareh Morovati;Li Zhou;Jonathan S. Maltz;Ge Wang;Hengyong Yu
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Abstract

Cardiac computed tomography (CT) has emerged as a major imaging modality for the diagnosis and monitoring of cardiovascular diseases. High temporal resolution is essential to ensure diagnostic accuracy. Limited-angle data acquisition can reduce scan time and improve temporal resolution, but typically leads to severe image degradation and motivates for improved reconstruction techniques. In this paper, we propose a novel physics-informed score-based diffusion model (PSDM) for limited-angle reconstruction of cardiac CT. At the sampling time, we combine a data prior from a diffusion model and a model prior obtained via an iterative algorithm and Fourier fusion to further enhance the image quality. Specifically, our approach integrates the primal-dual hybrid gradient (PDHG) algorithm with score-based diffusion models, thereby enabling us to reconstruct high-quality cardiac CT images from limited-angle data. The numerical simulations and real data experiments confirm the effectiveness of our proposed approach.
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用于心脏计算机断层扫描有限角度重建的基于物理信息的评分扩散模型
心脏计算机断层扫描(CT)已成为诊断和监测心血管疾病的主要成像方式。高时间分辨率对确保诊断准确性至关重要。有限角度数据采集可以减少扫描时间,提高时间分辨率,但通常会导致严重的图像退化,并促使改进重建技术。在本文中,我们提出了一种新的基于物理的基于分数的扩散模型(PSDM),用于心脏CT的有限角度重建。在采样时,我们将来自扩散模型的数据先验与通过迭代算法和傅里叶融合获得的模型先验相结合,进一步提高了图像质量。具体来说,我们的方法将原始-对偶混合梯度(PDHG)算法与基于分数的扩散模型相结合,从而使我们能够从有限角度的数据中重建高质量的心脏CT图像。数值模拟和实际数据实验验证了该方法的有效性。
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