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Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study

PURPOSE: In an ultrahigh‐resolution CT (U‐HRCT), deep learning‐based reconstruction (DLR) is expected to drastically reduce image noise without degrading spatial resolution. We assessed a new algorithm's effect on image quality at different radiation doses assuming an abdominal CT protocol. MET...

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Autores principales: Shirasaka, Takashi, Kojima, Tsukasa, Funama, Yoshinori, Sakai, Yuki, Kondo, Masatoshi, Mikayama, Ryoji, Hamasaki, Hiroshi, Kato, Toyoyuki, Ushijima, Yasuhiro, Asayama, Yoshiki, Nishie, Akihiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8292685/
https://www.ncbi.nlm.nih.gov/pubmed/34159736
http://dx.doi.org/10.1002/acm2.13318
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author Shirasaka, Takashi
Kojima, Tsukasa
Funama, Yoshinori
Sakai, Yuki
Kondo, Masatoshi
Mikayama, Ryoji
Hamasaki, Hiroshi
Kato, Toyoyuki
Ushijima, Yasuhiro
Asayama, Yoshiki
Nishie, Akihiro
author_facet Shirasaka, Takashi
Kojima, Tsukasa
Funama, Yoshinori
Sakai, Yuki
Kondo, Masatoshi
Mikayama, Ryoji
Hamasaki, Hiroshi
Kato, Toyoyuki
Ushijima, Yasuhiro
Asayama, Yoshiki
Nishie, Akihiro
author_sort Shirasaka, Takashi
collection PubMed
description PURPOSE: In an ultrahigh‐resolution CT (U‐HRCT), deep learning‐based reconstruction (DLR) is expected to drastically reduce image noise without degrading spatial resolution. We assessed a new algorithm's effect on image quality at different radiation doses assuming an abdominal CT protocol. METHODS: For the normal‐sized abdominal models, a Catphan 600 was scanned by U‐HRCT with 100%, 50%, and 25% radiation doses. In all acquisitions, DLR was compared to model‐based iterative reconstruction (MBIR), filtered back projection (FBP), and hybrid iterative reconstruction (HIR). For the quantitative assessment, we compared image noise, which was defined as the standard deviation of the CT number, and spatial resolution among all reconstruction algorithms. RESULTS: Deep learning‐based reconstruction yielded lower image noise than FBP and HIR at each radiation dose. DLR yielded higher image noise than MBIR at the 100% and 50% radiation doses (100%, 50%, DLR: 15.4, 16.9 vs MBIR: 10.2, 15.6 Hounsfield units: HU). However, at the 25% radiation dose, the image noise in DLR was lower than that in MBIR (16.7 vs. 26.6 HU). The spatial frequency at 10% of the modulation transfer function (MTF) in DLR was 1.0 cycles/mm, slightly lower than that in MBIR (1.05 cycles/mm) at the 100% radiation dose. Even when the radiation dose decreased, the spatial frequency at 10% of the MTF of DLR did not change significantly (50% and 25% doses, 0.98 and 0.99 cycles/mm, respectively). CONCLUSION: Deep learning‐based reconstruction performs more consistently at decreasing dose in abdominal ultrahigh‐resolution CT compared to all other commercially available reconstruction algorithms evaluated.
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spelling pubmed-82926852021-07-22 Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study Shirasaka, Takashi Kojima, Tsukasa Funama, Yoshinori Sakai, Yuki Kondo, Masatoshi Mikayama, Ryoji Hamasaki, Hiroshi Kato, Toyoyuki Ushijima, Yasuhiro Asayama, Yoshiki Nishie, Akihiro J Appl Clin Med Phys Medical Imaging PURPOSE: In an ultrahigh‐resolution CT (U‐HRCT), deep learning‐based reconstruction (DLR) is expected to drastically reduce image noise without degrading spatial resolution. We assessed a new algorithm's effect on image quality at different radiation doses assuming an abdominal CT protocol. METHODS: For the normal‐sized abdominal models, a Catphan 600 was scanned by U‐HRCT with 100%, 50%, and 25% radiation doses. In all acquisitions, DLR was compared to model‐based iterative reconstruction (MBIR), filtered back projection (FBP), and hybrid iterative reconstruction (HIR). For the quantitative assessment, we compared image noise, which was defined as the standard deviation of the CT number, and spatial resolution among all reconstruction algorithms. RESULTS: Deep learning‐based reconstruction yielded lower image noise than FBP and HIR at each radiation dose. DLR yielded higher image noise than MBIR at the 100% and 50% radiation doses (100%, 50%, DLR: 15.4, 16.9 vs MBIR: 10.2, 15.6 Hounsfield units: HU). However, at the 25% radiation dose, the image noise in DLR was lower than that in MBIR (16.7 vs. 26.6 HU). The spatial frequency at 10% of the modulation transfer function (MTF) in DLR was 1.0 cycles/mm, slightly lower than that in MBIR (1.05 cycles/mm) at the 100% radiation dose. Even when the radiation dose decreased, the spatial frequency at 10% of the MTF of DLR did not change significantly (50% and 25% doses, 0.98 and 0.99 cycles/mm, respectively). CONCLUSION: Deep learning‐based reconstruction performs more consistently at decreasing dose in abdominal ultrahigh‐resolution CT compared to all other commercially available reconstruction algorithms evaluated. John Wiley and Sons Inc. 2021-06-23 /pmc/articles/PMC8292685/ /pubmed/34159736 http://dx.doi.org/10.1002/acm2.13318 Text en © 2021 The Authors. Journal of Applied Clinical Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Medical Imaging
Shirasaka, Takashi
Kojima, Tsukasa
Funama, Yoshinori
Sakai, Yuki
Kondo, Masatoshi
Mikayama, Ryoji
Hamasaki, Hiroshi
Kato, Toyoyuki
Ushijima, Yasuhiro
Asayama, Yoshiki
Nishie, Akihiro
Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title_full Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title_fullStr Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title_full_unstemmed Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title_short Image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution CT: A phantom study
title_sort image quality improvement with deep learning‐based reconstruction on abdominal ultrahigh‐resolution ct: a phantom study
topic Medical Imaging
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8292685/
https://www.ncbi.nlm.nih.gov/pubmed/34159736
http://dx.doi.org/10.1002/acm2.13318
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