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An Adaptive Reconstruction Algorithm for Spectral CT Regularized by a Reference Image

机译:参考图像正则化的光谱CT自适应重建算法

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摘要

The photon counting detector based spectral CT system is attracting increasing attention in the CT field. However, the spectral CT is still premature in terms of both hardware and software. To reconstruct high quality spectral images from low-dose projections, an adaptive image reconstruction algorithm is proposed that assumes a known reference image (RI). The idea is motivated by the fact that the reconstructed images from different spectral channels are highly correlated. If a high quality image of the same object is known, it can be used to improve the low-dose reconstruction of each individual channel. This is implemented by maximizing the patch-wise correlation between the object image and the RI. Extensive numerical simulations and preclinical mouse study demonstrate the feasibility and merits of the proposed algorithm. It also performs well for truncated local projections, and the surrounding area of the region-of-interest (ROI) can be more accurately reconstructed. Furthermore, a method is introduced to adaptively choose the step length, making the algorithm more feasible and easier for applications.
机译:基于光子计数检测器的光谱CT系统在CT领域引起了越来越多的关注。但是,就硬件和软件而言,光谱CT仍为时过早。为了从低剂量投影重建高质量光谱图像,提出了一种自适应图像重建算法,该算法假设已知参考图像(RI)。来自不同光谱通道的重建图像高度相关的事实激发了这种想法。如果已知同一对象的高质量图像,则可以使用它来改善每个单独通道的低剂量重建。这是通过最大化对象图像和RI之间的逐块相关性来实现的。广泛的数值模拟和临床前的小鼠研究证明了该算法的可行性和优点。它对于截断的局部投影也表现良好,并且可以更准确地重建关注区域(ROI)的周围区域。此外,介绍了一种自适应选择步长的方法,使算法更可行,更易于应用。

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