volume 48 issue 10 pages 3253-3264

Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT?

Publication typeJournal Article
Publication date2023-06-27
scimago Q1
wos Q2
SJR0.817
CiteScore5.0
Impact factor2.2
ISSN2366004X, 23660058
Radiological and Ultrasound Technology
Gastroenterology
Radiology, Nuclear Medicine and imaging
Urology
Abstract
CT image reconstruction has evolved from filtered back projection to hybrid- and model-based iterative reconstruction. Deep learning-based image reconstruction is a relatively new technique that uses deep convolutional neural networks to improve image quality. To evaluate and compare 1.25 mm thin-section abdominal CT images reconstructed with deep learning image reconstruction (DLIR) with 5 mm thick images reconstructed with adaptive statistical iterative reconstruction (ASIR-V). This retrospective study included 52 patients (31 F; 56.9±16.9 years) who underwent abdominal CT scans between August-October 2019. Image reconstruction was performed to generate 5 mm images at 40% ASIR-V and 1.25 mm DLIR images at three strengths (low [DLIR-L], medium [DLIR-M], and high [DLIR-H]). Qualitative assessment was performed to determine image noise, contrast, visibility of small structures, sharpness, and artifact based on a 5-point-scale. Image preference determination was based on a 3-point-scale. Quantitative assessment included measurement of attenuation, image noise, and contrast-to-noise ratios (CNR). Thin-section images reconstructed with DLIR-M and DLIR-H yielded better image quality scores than 5 mm ASIR-V reconstructed images. Mean qualitative scores of DLIR-H for noise (1.77 ± 0.71), contrast (1.6 ± 0.68), small structure visibility (1.42 ± 0.66), sharpness (1.34 ± 0.55), and image preference (1.11 ± 0.34) were the best (p<0.05). DLIR-M yielded intermediate scores. All DLIR reconstructions showed superior ratings for artifacts compared to ASIR-V (p<0.05), whereas each DLIR group performed comparably (p>0.05, 0.405-0.763). In the quantitative assessment, there were no significant differences in attenuation values between all reconstructions (p>0.05). However, DLIR-H demonstrated the lowest noise (9.17 ± 3.11) and the highest CNR (CNRliver = 26.88 ± 6.54 and CNRportal vein = 7.92 ± 3.85) (all p<0.001). DLIR allows generation of thin-section (1.25 mm) abdominal CT images, which provide improved image quality with higher inter-reader agreement compared to 5 mm thick images reconstructed with ASIR-V. Improved image quality of thin-section CT images reconstructed with DLIR has several benefits in clinical practice, such as improved diagnostic performance without radiation dose penalties.
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Cao J. et al. Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT? // Abdominal Radiology. 2023. Vol. 48. No. 10. pp. 3253-3264.
GOST all authors (up to 50) Copy
Cao J., Mroueh N., Pisuchpen N., Parakh A., Lennartz S., Pierce T. T., Kambadakone A. Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT? // Abdominal Radiology. 2023. Vol. 48. No. 10. pp. 3253-3264.
RIS |
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RIS Copy
TY - JOUR
DO - 10.1007/s00261-023-03992-0
UR - https://doi.org/10.1007/s00261-023-03992-0
TI - Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT?
T2 - Abdominal Radiology
AU - Cao, Jinjin
AU - Mroueh, Nayla
AU - Pisuchpen, Nisanard
AU - Parakh, Anushri
AU - Lennartz, Simon
AU - Pierce, Theodore T.
AU - Kambadakone, Avinash
PY - 2023
DA - 2023/06/27
PB - Springer Nature
SP - 3253-3264
IS - 10
VL - 48
PMID - 37369922
SN - 2366-004X
SN - 2366-0058
ER -
BibTex |
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@article{2023_Cao,
author = {Jinjin Cao and Nayla Mroueh and Nisanard Pisuchpen and Anushri Parakh and Simon Lennartz and Theodore T. Pierce and Avinash Kambadakone},
title = {Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT?},
journal = {Abdominal Radiology},
year = {2023},
volume = {48},
publisher = {Springer Nature},
month = {jun},
url = {https://doi.org/10.1007/s00261-023-03992-0},
number = {10},
pages = {3253--3264},
doi = {10.1007/s00261-023-03992-0}
}
MLA
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MLA Copy
Cao, Jinjin, et al. “Can 1.25 mm thin-section images generated with Deep Learning Image Reconstruction technique replace standard-of-care 5 mm images in abdominal CT?.” Abdominal Radiology, vol. 48, no. 10, Jun. 2023, pp. 3253-3264. https://doi.org/10.1007/s00261-023-03992-0.