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Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging

BACKGROUND: Computed tomography (CT) imaging technology has become an indispensable auxiliary method in medical diagnosis and treatment. In mitigating the radiation damage caused by X-rays, low-dose computed tomography (LDCT) scanning is becoming more widely applied. However, LDCT scanning reduces t...

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Autores principales: Xia, Zhenyu, Liu, Jin, Kang, Yanqin, Wang, Yong, Hu, Dianlin, Zhang, Yikun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AME Publishing Company 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10423351/
https://www.ncbi.nlm.nih.gov/pubmed/37581059
http://dx.doi.org/10.21037/qims-22-1384
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author Xia, Zhenyu
Liu, Jin
Kang, Yanqin
Wang, Yong
Hu, Dianlin
Zhang, Yikun
author_facet Xia, Zhenyu
Liu, Jin
Kang, Yanqin
Wang, Yong
Hu, Dianlin
Zhang, Yikun
author_sort Xia, Zhenyu
collection PubMed
description BACKGROUND: Computed tomography (CT) imaging technology has become an indispensable auxiliary method in medical diagnosis and treatment. In mitigating the radiation damage caused by X-rays, low-dose computed tomography (LDCT) scanning is becoming more widely applied. However, LDCT scanning reduces the signal-to-noise ratio of the projection, and the resulting images suffer from serious streak artifacts and spot noise. In particular, the intensity of noise and artifacts varies significantly across different body parts under a single low-dose protocol. METHODS: To improve the quality of different degraded LDCT images in a unified framework, we developed a generative adversarial learning framework with a dynamic controllable residual. First, the generator network consists of the basic subnetwork and the conditional subnetwork. Inspired by the dynamic control strategy, we designed the basic subnetwork to adopt a residual architecture, with the conditional subnetwork providing weights to control the residual intensity. Second, we chose the Visual Geometry Group Network-128 (VGG-128) as the discriminator to improve the noise artifact suppression and feature retention ability of the generator. Additionally, a hybrid loss function was specifically designed, including the mean square error (MSE) loss, structural similarity index metric (SSIM) loss, adversarial loss, and gradient penalty (GP) loss. RESULTS: The results obtained on two datasets show the competitive performance of the proposed framework, with a 3.22 dB peak signal-to-noise ratio (PSNR) margin, 0.03 SSIM margin, and 0.2 contrast-to-noise ratio margin on the Challenge data and a 1.0 dB PSNR margin and 0.01 SSIM margin on the real data. CONCLUSIONS: Experimental results demonstrated the competitive performance of the proposed method in terms of noise decrease, structural retention, and visual impression improvement.
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spelling pubmed-104233512023-08-14 Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging Xia, Zhenyu Liu, Jin Kang, Yanqin Wang, Yong Hu, Dianlin Zhang, Yikun Quant Imaging Med Surg Original Article BACKGROUND: Computed tomography (CT) imaging technology has become an indispensable auxiliary method in medical diagnosis and treatment. In mitigating the radiation damage caused by X-rays, low-dose computed tomography (LDCT) scanning is becoming more widely applied. However, LDCT scanning reduces the signal-to-noise ratio of the projection, and the resulting images suffer from serious streak artifacts and spot noise. In particular, the intensity of noise and artifacts varies significantly across different body parts under a single low-dose protocol. METHODS: To improve the quality of different degraded LDCT images in a unified framework, we developed a generative adversarial learning framework with a dynamic controllable residual. First, the generator network consists of the basic subnetwork and the conditional subnetwork. Inspired by the dynamic control strategy, we designed the basic subnetwork to adopt a residual architecture, with the conditional subnetwork providing weights to control the residual intensity. Second, we chose the Visual Geometry Group Network-128 (VGG-128) as the discriminator to improve the noise artifact suppression and feature retention ability of the generator. Additionally, a hybrid loss function was specifically designed, including the mean square error (MSE) loss, structural similarity index metric (SSIM) loss, adversarial loss, and gradient penalty (GP) loss. RESULTS: The results obtained on two datasets show the competitive performance of the proposed framework, with a 3.22 dB peak signal-to-noise ratio (PSNR) margin, 0.03 SSIM margin, and 0.2 contrast-to-noise ratio margin on the Challenge data and a 1.0 dB PSNR margin and 0.01 SSIM margin on the real data. CONCLUSIONS: Experimental results demonstrated the competitive performance of the proposed method in terms of noise decrease, structural retention, and visual impression improvement. AME Publishing Company 2023-06-29 2023-08-01 /pmc/articles/PMC10423351/ /pubmed/37581059 http://dx.doi.org/10.21037/qims-22-1384 Text en 2023 Quantitative Imaging in Medicine and Surgery. All rights reserved. https://creativecommons.org/licenses/by-nc-nd/4.0/Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Original Article
Xia, Zhenyu
Liu, Jin
Kang, Yanqin
Wang, Yong
Hu, Dianlin
Zhang, Yikun
Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title_full Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title_fullStr Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title_full_unstemmed Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title_short Dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
title_sort dynamic controllable residual generative adversarial network for low-dose computed tomography imaging
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10423351/
https://www.ncbi.nlm.nih.gov/pubmed/37581059
http://dx.doi.org/10.21037/qims-22-1384
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