多层螺旋 CT 迭代重建实现方法的比较。

Zsolt Adam Balogh, Zsofia Barna, Eva Majoros
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引用次数: 0

摘要

多层螺旋计算机断层扫描中最成熟的图像重建算法是基于分析和迭代方法。在过去几十年中,已开发出多种迭代重建方法,通过减少噪声和伪影提高图像质量。在迭代重建的正则化步骤中,可以显著降低噪声,从而实现低剂量 CT。使用基于模型的重建可进一步提高重建图像的质量。在这些重建中,重点是对数据采集过程进行建模,包括光子束的行为、系统的几何形状等。在本文中,我们提出了两种基于模型的重建算法,使用虚拟探测器进行多层螺旋 CT 重建。本研究的目的是比较使用虚拟探测器与使用原始探测器模型的基于模型迭代重建两种算法对图像质量的影响。由于这些算法是使用多个 GPU 实现的,因此合并单独重建的体量会严重影响图像质量。这个问题通常被称为 "长物体 "问题,我们也提出了一个解决方案,它在拟议的重建过程中发挥了重要作用。我们使用数学和物理模型以及患者病例对这些算法进行了评估。我们利用 SSIM、MS-SSIM 和 L1 指标来评估数学模型的图像质量。为了证明算法的有效性,我们使用了 CatPhan 600 模型。此外,我们还使用匿名患者扫描数据来展示真实扫描数据对图像质量的改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of iterative reconstruction implementations for multislice helical CT.

The most mature image reconstruction algorithms in multislice helical computed tomography are based on analytical and iterative methods. Over the past decades, several methods have been developed for iterative reconstructions that improve image quality by reducing noise and artifacts. In the regularization step of iterative reconstruction, noise can be significantly reduced, thereby making low-dose CT. The quality of the reconstructed image can be further improved by using model-based reconstructions. In these reconstructions, the main focus is on modeling the data acquisition process, including the behavior of the photon beams, the geometry of the system, etc. In this article, we propose two model-based reconstruction algorithms using a virtual detector for multislice helical CT. The aim of this study is to compare the effect of using a virtual detector on image quality for the two proposed algorithms with a model-based iterative reconstruction using the original detector model. Since the algorithms are implemented using multiple GPUs, the merging of separately reconstructed volumes can significantly affect image quality. This issue is often referred to as the "long object" problem, for which we also present a solution that plays an important role in the proposed reconstruction processes. The algorithms were evaluated using mathematical and physical phantoms, as well as patient cases. The SSIM, MS-SSIM and L1 metrics were utilized to evaluate the image quality of the mathematical phantom case. To demonstrate the effectiveness of the algorithms, we used the CatPhan 600 phantom. Additionally, anonymized patient scans were used to showcase the improvements in image quality on real scan data.

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