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Author
Takeuchi, Kazuhiro Department of Radiology, Kagawa University Hospital
Ide, Yasuhiro Department of Radiology, Kagawa University Hospital
Mori, Yuichiro Department of Radiology, Kagawa University Hospital
Uehara, Yusuke Department of Radiology, Kagawa University Hospital
Sukeishi, Hiroshi Department of Radiology, Kagawa University Hospital
Goto, Sachiko Department of Radiological Technology, Graduate School of Health Sciences, Okayama University Kaken ID publons researchmap
Abstract
Novel deep learning image reconstruction (DLIR) reportedly changes the image quality characteristics based on object contrast and image noise. In clinical practice, computed tomography image noise is usually controlled by tube current modulation (TCM) to accommodate changes in object size. This study aimed to evaluate the image quality characteristics of DLIR for different object sizes when the in-plane noise was controlled by TCM. Images acquisition was performed on a GE Revolution CT system to investigate the impact of the DLIR algorithm compared to the standard reconstructions of filtered-back projection (FBP) and hybrid iterative reconstruction (hybrid-IR). The image quality assessment was performed using phantom images, and an observer study was conducted using clinical cases. The image quality assessment confirmed the excellent noise- reduction performance of DLIR, despite variations due to phantom size. Similarly, in the observer study, DLIR received high evaluations regardless of the body parts imaged. We evaluated a novel DLIR algorithm by replicating clinical behaviors. Consequently, DLIR exhibited higher image quality than those of FBP and hybrid-IR in both phantom and observer studies, albeit the value depended on the reconstruction strength, and proved itself capable of providing stable image quality in clinical use.
Keywords
computed tomography
deep learning
image reconstruction
tube current modulation
object size
Amo Type
Original Article
Publication Title
Acta Medica Okayama
Published Date
2023-02
Volume
volume77
Issue
issue1
Publisher
Okayama University Medical School
Start Page
45
End Page
55
ISSN
0386-300X
NCID
AA00508441
Content Type
Journal Article
language
English
Copyright Holders
Copyright Ⓒ 2023 by Okayama University Medical School
File Version
publisher
Refereed
True
PubMed ID
Web of Science KeyUT