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DuDoUFNet: Dual-Domain Under-to-Fully-Complete Progressive Restoration Network for Simultaneous Metal Artifact Reduction and Low-Dose CT Reconstruction

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Date 2022 Jul 11
PMID 35816532
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Abstract

To reduce the potential risk of radiation to the patient, low-dose computed tomography (LDCT) has been widely adopted in clinical practice for reconstructing cross-sectional images using sinograms with reduced x-ray flux. The LDCT image quality is often degraded by different levels of noise depending on the low-dose protocols. The image quality will be further degraded when the patient has metallic implants, where the image suffers from additional streak artifacts along with further amplified noise levels, thus affecting the medical diagnosis and other CT-related applications. Previous studies mainly focused either on denoising LDCT without considering metallic implants or full-dose CT metal artifact reduction (MAR). Directly applying previous LDCT or MAR approaches to the issue of simultaneous metal artifact reduction and low-dose CT (MARLD) may yield sub-optimal reconstruction results. In this work, we develop a dual-domain under-to-fully-complete progressive restoration network, called DuDoUFNet, for MARLD. Our DuDoUFNet aims to reconstruct images with substantially reduced noise and artifact by progressive sinogram to image domain restoration with a two-stage progressive restoration network design. Our experimental results demonstrate that our method can provide high-quality reconstruction, superior to previous LDCT and MAR methods under various low-dose and metal settings.

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References
1.
Zhang Y, Pu Y, Hu J, Liu Y, Ji-Liu Zhou . A new CT metal artifacts reduction algorithm based on fractional-order sinogram inpainting. J Xray Sci Technol. 2011; 19(3):373-84. DOI: 10.3233/XST-2011-0300. View

2.
Kulathilake K, Abdullah N, Sabri A, Lai K . A review on Deep Learning approaches for low-dose Computed Tomography restoration. Complex Intell Systems. 2021; 9(3):2713-2745. PMC: 8164834. DOI: 10.1007/s40747-021-00405-x. View

3.
Zhang Y, Yan H, Jia X, Yang J, Jiang S, Mou X . A hybrid metal artifact reduction algorithm for x-ray CT. Med Phys. 2013; 40(4):041910. DOI: 10.1118/1.4794474. View

4.
Huang X, Wang J, Tang F, Zhong T, Zhang Y . Metal artifact reduction on cervical CT images by deep residual learning. Biomed Eng Online. 2018; 17(1):175. PMC: 6260559. DOI: 10.1186/s12938-018-0609-y. View

5.
Kubo T, Lin P, Stiller W, Takahashi M, Kauczor H, Ohno Y . Radiation dose reduction in chest CT: a review. AJR Am J Roentgenol. 2008; 190(2):335-43. DOI: 10.2214/AJR.07.2556. View