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一种结合投影插值与物理校正的自适应CT金属伪影减少算法

[An adaptive CT metal artifact reduction algorithm that combines projection interpolation and physical correction].

作者信息

Zhu Q, Wang Y, Zhu M, Tao X, Bian Z, Ma J

机构信息

School of Biomedical Engineering, Southern Medical University, Guangzhou 510515, China.

Pazhou Lab, Guangzhou 510330, China.

出版信息

Nan Fang Yi Ke Da Xue Xue Bao. 2022 Jun 20;42(6):832-839. doi: 10.12122/j.issn.1673-4254.2022.06.06.

Abstract

OBJECTIVE

To propose an adaptive weighted CT metal artifact reduce algorithm that combines projection interpolation and physical correction.

METHODS

A normalized metal projection interpolation algorithm was used to obtain the initial corrected projection data. A metal physical correction model was then introduced to obtain the physically corrected projection data. To verify the effectiveness of the method, we conducted experiments using simulation data and clinical data. For the simulation data, the quantitative indicators PSNR and SSIM were used for evaluation, while for the clinical data, the resultant images were evaluated by imaging experts to compare the artifact-reducing performance of different methods.

RESULTS

For the simulation data, the proposed method improved the PSNR value by at least 0.2 dB and resulted in the highest SSIM value among the methods for comparison. The experiment with the clinical data showed that the imaging experts gave the highest scores of 3.616±0.338 (in a 5-point scale) to the images processed using the proposed method, which had significant better artifact-reducing performance than the other methods ( < 0.001).

CONCLUSION

The metal artifact reduction algorithm proposed herein can effectively reduce metal artifacts while preserving the tissue structure information and reducing the generation of new artifacts.

摘要

目的

提出一种结合投影插值和物理校正的自适应加权CT金属伪影减少算法。

方法

采用归一化金属投影插值算法获取初始校正投影数据。然后引入金属物理校正模型以获得物理校正投影数据。为验证该方法的有效性,我们使用模拟数据和临床数据进行了实验。对于模拟数据,使用定量指标PSNR和SSIM进行评估,而对于临床数据,由影像专家对所得图像进行评估,以比较不同方法的伪影减少性能。

结果

对于模拟数据,所提方法使PSNR值至少提高了0.2 dB,并且在比较的方法中得到了最高的SSIM值。临床数据实验表明,影像专家对使用所提方法处理的图像给出了最高评分3.616±0.338(五分制),其伪影减少性能明显优于其他方法(<0.001)。

结论

本文提出的金属伪影减少算法能够在保留组织结构信息并减少新伪影产生的同时有效减少金属伪影。

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