论文标题

金属伪像还原的优质方法

Superiorized method for metal artifact reduction

论文作者

Humphries, T., Wang, J.

论文摘要

金属伪影(MAR)是计算机断层扫描(CT)成像中的一个具有挑战性的问题。流行的MAR方法取代了用人工数据损坏的曲构测量。尽管这些``投影完成''方法成功地消除了严重的人工制品,但人工数据可能会引入次要伪影。在本文中,我们提出了一种使用投影完成来生成先验图像的方法,然后将其根据卓越框架合并到迭代重建算法中。先前的图像是使用标准化金属伪影(NMAR)重建的,这是一种流行的投影完成方法。迭代算法是同时代数重建技术(SART)的修改版本,它通过结合了多能向前模型,最小二乘加权和优越性来减少伪影。用于卓越的惩罚函数是总差异(电视)项和促进与先前图像相似性的术语之间的加权平均值,类似于先前图像约束压缩感应中使用的惩罚功能。由于先验主要没有严重的金属伪像,因此这些伪影灰心于在迭代重建过程中产生。此外,由于迭代方法使用原始投影数据,因此它能够恢复在NMAR过程中丢失的信息。我们执行对简单几何对象进行建模的数值实验,以及一些更现实的场景,例如金属销,双侧髋关节植入物和放置在解剖幻影中的牙齿填充物。拟议的迭代算法在很大程度上成功地消除了NMAR工艺引入的严重金属伪像以及次要伪影,尤其是金属区域附近的骨结构边缘丢失。

Metal artifact reduction (MAR) is a challenging problem in computed tomography (CT) imaging. A popular class of MAR methods replace sinogram measurements that are corrupted by metal with artificial data. While these ``projection completion'' approaches are successful in eliminating severe artifacts, secondary artifacts may be introduced by the artificial data. In this paper, we propose an approach which uses projection completion to generate a prior image, which is then incorporated into an iterative reconstruction algorithm based on the superiorization framework. The prior image is reconstructed using normalized metal artifact reduction (NMAR), a popular projection completion approach. The iterative algorithm is a modified version of the simultaneous algebraic reconstruction technique (SART), which reduces artifacts by incorporating a polyenergetic forward model, least-squares weighting, and superiorization. The penalty function used for superiorization is a weighted average between a total variation (TV) term and a term promoting similarity with the prior image, similar to penalty functions used in prior image constrained compressive sensing. Because the prior is largely free of severe metal artifacts, these artifacts are discouraged from arising during iterative reconstruction; additionally, because the iterative approach uses the original projection data, it is able to recover information that is lost during the NMAR process. We perform numerical experiments modeling a simple geometric object, as well as several more realistic scenarios such as metal pins, bilateral hip implants, and dental fillings placed within an anatomical phantom. The proposed iterative algorithm is largely successful at eliminating severe metal artifacts as well as secondary artifacts introduced by the NMAR process, especially lost edges of bone structures in the neighborhood of the metal regions.

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