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CLIMAR:基于分类线性插值的金属伪影减少技术,用于 X 射线 CT 成像中的严重金属伪影减少。

CLIMAR: classified linear interpolation based metal artifact reduction for severe metal artifact reduction in x-ray CT imaging.

机构信息

Health & Medical Equipment Business, Samsung Electronics Co., Ltd, 152, Pangyoyeok-ro, Bundang-gu, Seongnam-si, Gyeonggi-do, 13530, Republic of Korea.

Samsung NeuroLogica, 14 Electronics Ave, Danvers, MA 01923 United States of America.

出版信息

Phys Med Biol. 2021 Apr 1;66(7). doi: 10.1088/1361-6560/abeae6.

Abstract

In x-ray CT imaging, the existence of metal in the imaging field of view deteriorates the quality of the reconstructed image. This is because rays penetrating dense metal implants are highly corrupted, causing huge inconsistency between projection data. The result appears as strong artifacts such as black and white streaks on the reconstructed image disturbing correct diagnosis. For several decades, there have been various trials to reduce metal artifacts for better image quality. As the computing power of computer processors became more powerful, more complex algorithms with improved performance have been introduced. For instance, the initially developed metal artifact reduction (MAR) algorithms based on simple sinogram interpolation were combined with computationally expensive iterative reconstruction techniques to pursue better image quality. Recently, even machine learning based techniques have been introduced, which require huge amounts of computations for training. In this paper, we introduce an image based novel MAR algorithm in which severe metal artifacts such as black shadings are detected by the proposed method in a straightforward manner based on a linear interpolation. To do that, a new concept of metal artifact classification is devised using linear interpolation in the virtual projection domain. The proposed method reduces severe artifacts very quickly and effectively and has good performance to keep the detailed body structure preserved. Results of qualitative and quantitative comparisons with other representative algorithms such as LIMAR and NMAR support the excellence of the proposed algorithm. Thanks to the nature of reducing artifacts in the image itself and its low computational cost, the proposed algorithm can function as an initial image generator for other MAR algorithms, as well as being integrated in the modalities under limited computation power such as mobile CT scanners.

摘要

在 X 射线 CT 成像中,成像视场中的金属存在会降低重建图像的质量。这是因为穿透密集金属植入物的射线受到严重干扰,导致投影数据之间存在巨大差异。结果在重建图像上表现为强烈的伪影,如黑白条纹,干扰正确的诊断。几十年来,人们一直在尝试各种方法来减少金属伪影,以提高图像质量。随着计算机处理器的计算能力越来越强大,引入了更复杂、性能更高的算法。例如,最初基于简单正弦图插值的金属伪影减少(MAR)算法与计算成本高昂的迭代重建技术相结合,以追求更好的图像质量。最近,甚至引入了基于机器学习的技术,这些技术需要大量的计算能力进行训练。在本文中,我们介绍了一种基于图像的新型 MAR 算法,该算法通过基于线性插值的简单方法直接检测到严重的金属伪影,如黑色阴影。为此,使用虚拟投影域中的线性插值设计了一种新的金属伪影分类概念。该方法可以快速有效地减少严重的伪影,并具有很好的性能,可以保留详细的身体结构。与其他代表性算法(如 LIMAR 和 NMAR)的定性和定量比较结果支持了该算法的卓越性。由于该算法的性质是减少图像本身的伪影,且计算成本低,因此它可以作为其他 MAR 算法的初始图像生成器,也可以集成到计算能力有限的模态中,如移动 CT 扫描仪。

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