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Journal article

MR-based CT metal artifact reduction using Bayesian modelling

From

Department of Health Technology, Technical University of Denmark1

Biomedical Engineering, Department of Health Technology, Technical University of Denmark2

Medical Image Computing, Biomedical Engineering, Department of Health Technology, Technical University of Denmark3

University of Copenhagen4

Metal artifact reduction (MAR) algorithms reduce the errors caused by metal implants in xray computed tomography (CT) images and are an important part of error management in radiotherapy (RT). A promising MAR approach is to leverage the information in magnetic resonance (MR) images that are acquired for organ or tumor delineation.

This is however complicated by the ambiguous relationship between CT values and conventional-sequence MR intensities as well as potential co-registration issues. In order to address these issues, this paper proposes a self-tuning Bayesian model for MR-based MAR that combines knowledge of the MR image intensities in local spatial neighborhoods with the information in an initial, corrupted CT reconstructed using filtered back projection.

We demonstrate the potential of the resulting model in three widely-used MAR scenarios: image inpainting, sinogram inpainting and model-based iterative reconstruction. Comparing to conventional alternatives in a retrospective study on nine head-and-neck patients with CT and T1-weighted MR scans, we find improvements in terms of image quality and quantitative CT value accuracy within each scenario.

We conclude that the proposed model provides a versatile way to use the anatomical information in a co-acquired MR scan to boost the performance of MAR algorithms.

Language: English
Year: 2019
Pages: 245012
ISSN: 13616560 and 00319155
Types: Journal article
DOI: 10.1088/1361-6560/ab5b70
ORCIDs: Nielsen, Jonathan Scharff and Van Leemput, Koen

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