Improving Low-contrast Detectability and Noise Texture Pattern for Computed Tomography Using Iterative Reconstruction Accelerated with Machine Learning Method: A Phantom Study.

Iterative reconstruction Low-contrast detectability Mathematical model observer Noise texture pattern Radiation dose

Journal

Academic radiology
ISSN: 1878-4046
Titre abrégé: Acad Radiol
Pays: United States
ID NLM: 9440159

Informations de publication

Date de publication:
07 2020
Historique:
received: 17 07 2019
revised: 01 09 2019
accepted: 11 09 2019
pubmed: 11 1 2020
medline: 11 11 2020
entrez: 11 1 2020
Statut: ppublish

Résumé

To evaluate the performance of iterative reconstruction (IR) and filtered back projection (FBP) images in terms of low-contrast detectability at different radiation doses, IR levels, and slice thickness using the mathematical model observer with a focus on low-contrast detectability. The CCT189 MITA CT IQ Low-Contrast Phantom was used and helical scans were performed using a 64-detector CT scanner. Tube voltage was set at 120 kVp and tube current was adjusted from 45 to 600 mA. Images were reconstructed at slice thicknesses of 0.625 and 5.0 mm with FBP and five types of iterative progressive reconstruction with visual modeling (IPV) algorithms. The noise power spectrum (NPS) and normalized NPS were calculated. To evaluate low-contrast detectability, the model observer with the channelized Hotelling observer model was applied using low-contrast modules in the phantom. The NPS and normalized NPS for IPV images had similar curves as that for FBP images. At a slice thickness of 0.625 mm and equivalent radiation dose level, the mean improvement of low-contrast detectability for IPV images was 1.19-2.15-fold greater than FBP images with corresponding noise reduction levels. At equivalent noise levels of 5.0-8.0 HU, low-contrast detectability of the IPVstd2 to IPVstr2 images as almost the same or better than that of the FBP images. However, the detectability of the IPVstr4 image was lower than that of the FBP image (p = 0.02). Low-contrast detectability of the IPV images was improved with a similar normalized NPS as with FBP images. Furthermore, a radiation reduction of >50% was achieved for the IPV images, while maintaining similar low-contrast detectability.

Identifiants

pubmed: 31918961
pii: S1076-6332(19)30433-7
doi: 10.1016/j.acra.2019.09.007
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

929-936

Informations de copyright

Copyright © 2019 The Association of University Radiologists. Published by Elsevier Inc. All rights reserved.

Auteurs

Yoshinori Funama (Y)

Department of Medical Radiation Sciences, Faculty of Life Sciences, Kumamoto University, 4-24-1 Kuhonji, Kumamoto 862-0976, Japan. Electronic address: funama@kumamoto-u.ac.jp.

Hisashi Takahashi (H)

Hitachi Ltd. Healthcare Business Unit, Kashiwa, Chiba, Japan.

Taiga Goto (T)

Hitachi Ltd. Healthcare Business Unit, Kashiwa, Chiba, Japan.

Yuko Aoki (Y)

Hitachi Ltd. Healthcare Business Unit, Kashiwa, Chiba, Japan.

Ryo Yoshida (R)

Hitachi Ltd. Healthcare Business Unit, Kashiwa, Chiba, Japan.

Yukio Kumagai (Y)

Hitachi Ltd. Healthcare Business Unit, Kashiwa, Chiba, Japan.

Kazuo Awai (K)

Department of Diagnostic Radiology, Graduate School of Biomedical Sciences, Hiroshima University, Hiroshima, Japan.

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