Back to Search Start Over

Gaussian diffusion sinogram inpainting for X-ray CT metal artifact reduction.

Authors :
Chengtao Peng
Bensheng Qiu
Ming Li
Yihui Guan
Cheng Zhang
Zhongyi Wu
Jian Zheng
Peng, Chengtao
Qiu, Bensheng
Li, Ming
Guan, Yihui
Zhang, Cheng
Wu, Zhongyi
Zheng, Jian
Source :
BioMedical Engineering OnLine; 1/5/2017, Vol. 16, p1-17, 17p
Publication Year :
2017

Abstract

<bold>Background: </bold>Metal objects implanted in the bodies of patients usually generate severe streaking artifacts in reconstructed images of X-ray computed tomography, which degrade the image quality and affect the diagnosis of disease. Therefore, it is essential to reduce these artifacts to meet the clinical demands.<bold>Methods: </bold>In this work, we propose a Gaussian diffusion sinogram inpainting metal artifact reduction algorithm based on prior images to reduce these artifacts for fan-beam computed tomography reconstruction. In this algorithm, prior information that originated from a tissue-classified prior image is used for the inpainting of metal-corrupted projections, and it is incorporated into a Gaussian diffusion function. The prior knowledge is particularly designed to locate the diffusion position and improve the sparsity of the subtraction sinogram, which is obtained by subtracting the prior sinogram of the metal regions from the original sinogram. The sinogram inpainting algorithm is implemented through an approach of diffusing prior energy and is then solved by gradient descent. The performance of the proposed metal artifact reduction algorithm is compared with two conventional metal artifact reduction algorithms, namely the interpolation metal artifact reduction algorithm and normalized metal artifact reduction algorithm. The experimental datasets used included both simulated and clinical datasets.<bold>Results: </bold>By evaluating the results subjectively, the proposed metal artifact reduction algorithm causes fewer secondary artifacts than the two conventional metal artifact reduction algorithms, which lead to severe secondary artifacts resulting from impertinent interpolation and normalization. Additionally, the objective evaluation shows the proposed approach has the smallest normalized mean absolute deviation and the highest signal-to-noise ratio, indicating that the proposed method has produced the image with the best quality.<bold>Conclusions: </bold>No matter for the simulated datasets or the clinical datasets, the proposed algorithm has reduced the metal artifacts apparently. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1475925X
Volume :
16
Database :
Complementary Index
Journal :
BioMedical Engineering OnLine
Publication Type :
Academic Journal
Accession number :
120742040
Full Text :
https://doi.org/10.1186/s12938-016-0292-9