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Encoding Metal Mask Projection for Metal Artifact Reduction in Computed Tomography

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Metal artifact reduction (MAR) in computed tomography (CT) is a notoriously challenging task because the artifacts are structured and non-local in the image domain. However, they are inherently local in the sinogram domain. Thus, one possible approach to MAR is to exploit the latter characteristic by learning to reduce artifacts in the sinogram. However, if we directly treat the metal-affected regions in sinogram as missing and replace them with the surrogate data generated by a neural network, the artifact-reduced CT images tend to be over-smoothed and distorted since fine-grained details within the metal-affected regions are completely ignored. In this work, we provide analytical investigation to the issue and propose to address the problem by (1) retaining the metal-affected regions in sinogram and (2) replacing the binarized metal trace with the metal mask projection such that the geometry information of metal implants is encoded. Extensive experiments on simulated datasets and expert evaluations on clinical images demonstrate that our novel network yields anatomically more precise artifact-reduced images than the state-of-the-art approaches, especially when metallic objects are large.

Yuanyuan Lyu, Wei-An Lin, Haofu Liao, Jingjing Lu, S. Kevin Zhou• 2020

Related benchmarks

TaskDatasetResultRank
Metal Artifact ReductionSynthesized Data Large Metal
PSNR40.32
25
Metal Artifact ReductionSynthesized Data Small Metal
PSNR42.08
25
Pelvic bone segmentationCLINIC metal
Sacrum Segmentation Score93.5
8
Metal Artifact ReductionSynthesized Data Input
PSNR36.17
8
Metal Artifact ReductionSynthesized Data Average
PSNR39.69
8
Metal Artifact ReductionDeepLesion simulated (test)
PSNR (Image Domain)37.65
8
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