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Improved image quality and dose reduction in abdominal CT with deep-learning reconstruction algorithm: a phantom study

Authors :
Joël Greffier
Quentin Durand
Julien Frandon
Salim Si-Mohamed
Maeliss Loisy
Fabien de Oliveira
Jean-Paul Beregi
Djamel Dabli
Source :
European Radiology. 33:699-710
Publication Year :
2022
Publisher :
Springer Science and Business Media LLC, 2022.

Abstract

To assess the impact of a new artificial intelligence deep-learning reconstruction (Precise Image; AI-DLR) algorithm on image quality against a hybrid iterative reconstruction (IR) algorithm in abdominal CT for different clinical indications.Acquisitions on phantoms were performed at 5 dose levels (CTDIFrom Standard to Smoother levels, noise magnitude and average NPS spatial frequency decreased and the detectability (d') of all simulated lesions increased. For both inserts, TTF values were similar for all three AI-DLR levels from 13 to 6 mGy but decreased from Standard to Smoother levels at 1.8 mGy. Compared to the i4 used in clinical practice, d' values were higher using the Smoother and Smooth levels and close for the Standard level. For all dose levels, except at 1.8 mGy, radiologists considered images satisfactory for clinical use for the 3 levels of AI-DLR, but rated images too smooth using the Smoother level.Use of the Smooth and Smoother levels of AI-DLR reduces the image noise and improves the detectability of lesions and spatial resolution for standard and low-dose levels. Using the Smooth level is apparently the best compromise between the lowest dose level and adequate image quality.• Evaluation of the impact of a new artificial intelligence deep-learning reconstruction (AI-DLR) on image quality and dose compared to a hybrid iterative reconstruction (IR) algorithm. • The Smooth and Smoother levels of AI-DLR reduced the image noise and improved the detectability of lesions and spatial resolution for standard and low-dose levels. • The Smooth level seems the best compromise between the lowest dose level and adequate image quality.

Details

ISSN :
14321084
Volume :
33
Database :
OpenAIRE
Journal :
European Radiology
Accession number :
edsair.doi.dedup.....5388c953054c8ac1db6d79c1aa144256
Full Text :
https://doi.org/10.1007/s00330-022-09003-y