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MARGANVAC: metal artifact reduction method based on generative adversarial network with variable constraints.

Authors :
Li, Guang
Ji, Longyin
You, Chenyu
Gao, Shuai
Zhou, Langrui
Bai, Keshu
Luo, Shouhua
Gu, Ning
Source :
Physics in Medicine & Biology. 10/21/2023, Vol. 68 Issue 20, p1-24. 24p.
Publication Year :
2023

Abstract

Objective. Metal artifact reduction (MAR) has been a key issue in CT imaging. Recently, MAR methods based on deep learning have achieved promising results. However, when deploying deep learning-based MAR in real-world clinical scenarios, two prominent challenges arise. One limitation is the lack of paired training data in real applications, which limits the practicality of supervised methods. Another limitation is that image-domain methods suitable for more application scenarios are inadequate in performance while end-to-end approaches with better performance are only applicable to fan-beam CT due to large memory consumption. Approach. We propose a novel image-domain MAR method based on the generative adversarial network with variable constraints (MARGANVAC) to improve MAR performance. The proposed variable constraint is a kind of time-varying cost function that can relax the fidelity constraint at the beginning and gradually strengthen the fidelity constraint as the training progresses. To better deploy our image-domain supervised method into practical scenarios, we develop a transfer method to mimic the real metal artifacts by first extracting the real metal traces and then adding them to artifact-free images to generate paired training data. Main results. The effectiveness of the proposed method is validated in simulated fan-beam experiments and real cone-beam experiments. All quantitative and qualitative results demonstrate that the proposed method achieves superior performance compared with the competing methods. Significance. The MARGANVAC model proposed in this paper is an image-domain model that can be conveniently applied to various scenarios such as fan beam and cone beam CT. At the same time, its performance is on par with the cutting-edge dual-domain MAR approaches. In addition, the metal artifact transfer method proposed in this paper can easily generate paired data with real artifact features, which can be better used for model training in real scenarios. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00319155
Volume :
68
Issue :
20
Database :
Academic Search Index
Journal :
Physics in Medicine & Biology
Publication Type :
Academic Journal
Accession number :
172772146
Full Text :
https://doi.org/10.1088/1361-6560/acf8ac