MADR: metal artifact detection and reduction

S. Jaiswal, S. Ha, K. Mueller
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引用次数: 3

Abstract

Metal in CT-imaged objects drastically reduces the quality of these images due to the severe artifacts it can cause. Most metal artifacts reduction (MAR) algorithms consider the metal-affected sinogram portions as the corrupted data and replace them via sophisticated interpolation methods. While these schemes are successful in removing the metal artifacts, they fail to recover some of the edge information. To address these problems, the frequency shift metal artifact reduction algorithm (FSMAR) was recently proposed. It exploits the information hidden in the uncorrected image and combines the high frequency (edge) components of the uncorrected image with the low frequency components of the corrected image. Although this can effectively transfer the edge information of the uncorrected image, it also introduces some unwanted artifacts. The essential problem of these algorithms is that they lack the capability of detecting the artifacts and as a result cannot discriminate between desired and undesired edges. We propose a scheme that does better in these respects. Our Metal Artifact Detection and Reduction (MADR) scheme constructs a weight map which stores whether a pixel in the uncorrected image belongs to an artifact region or a non-artifact region. This weight matrix is optimal in the Linear Minimum Mean Square Sense (LMMSE). Our results demonstrate that MADR outperforms the existing algorithms and ensures that the anatomical structures close to metal implants are better preserved.
MADR:金属伪影检测与还原
由于金属在ct成像物体中会造成严重的伪影,因此大大降低了这些图像的质量。大多数金属伪影还原(MAR)算法都将受金属影响的正弦图部分作为损坏数据,并通过复杂的插值方法进行替换。虽然这些方案可以成功地去除金属伪影,但它们无法恢复一些边缘信息。为了解决这些问题,最近提出了移频金属伪影抑制算法(FSMAR)。它利用隐藏在未校正图像中的信息,将未校正图像的高频(边缘)分量与校正图像的低频分量相结合。虽然这种方法可以有效地传递未校正图像的边缘信息,但也引入了一些不必要的伪影。这些算法的本质问题是它们缺乏检测伪影的能力,因此不能区分想要的和不想要的边缘。我们提出了一个在这些方面做得更好的方案。我们的金属伪迹检测和还原(MADR)方案构建了一个权重图,该权重图存储了未校正图像中的像素是属于伪迹区域还是非伪迹区域。该权重矩阵在线性最小均方意义(LMMSE)下是最优的。我们的研究结果表明,MADR优于现有的算法,并确保靠近金属种植体的解剖结构得到更好的保存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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