Comparison of two deep learning image reconstruction algorithms in chest CT images: A task-based image quality assessment on phantom data

被引:42
|
作者
Greffier, Joel [1 ]
Frandon, Julien [1 ]
Si-Mohamed, Salim [2 ]
Dabli, Djamel [1 ]
Hamard, Aymeric [1 ]
Belaouni, Asmaa [1 ]
Akessoul, Philippe [1 ]
Besse, Francis [3 ]
Guiu, Boris [4 ]
Beregi, Jean-Paul [1 ]
机构
[1] Univ Montpellier, CHU Nimes, Med Imaging Grp Nimes, Dept Med Imaging,EA 2992, F-30029 Nimes, France
[2] Hosp Civils Lyon, Dept Radiol, F-69500 Lyon, France
[3] Ctr Cardiol Nord, Dept Radiol, F-93200 St Denis, France
[4] St Eloi Univ Hosp, Dept Radiol, F-34295 Montpellier, France
关键词
Multidetector computed tomography; Task -based image quality assessment; Deep learning image reconstruction; ITERATIVE RECONSTRUCTION; OPTIMIZATION; ACQUISITION;
D O I
10.1016/j.diii.2021.08.001
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: The purpose of this study was to compare the effect of two deep learning image reconstruction (DLR) algorithms in chest computed tomography (CT) with different clinical indications. Material and methods: Acquisitions on image quality and anthropomorphic phantoms were performed at six dose levels (CTDIvol: 10/7.5/5/2.5/1/0.5mGy) on two CT scanners equipped with two different DLR algorithms (TrueFidelityTM and AiCE). Raw data were reconstructed using the filtered back-projection (FBP) and the lowest/intermediate/highest DLR levels (L-DLR/M-DLR/H-DLR) of each algorithm. Noise power spectrum, taskbased transfer function (TTF) and detectability index (d') were computed: d' modelled detection of a soft tissue mediastinal nodule, ground-glass opacity, or high-contrast pulmonary lesion. Subjective image quality of anthropomorphic phantom images was analyzed by two radiologists. Results: For the L-DLR/M-DLR levels, the noise magnitude was lower with TrueFidelityTM than with AiCE from 2.5 to 10 mGy. For H-DLR, noise magnitude was lower with AiCE . For L-DLR and M-DLR, the average NPS spatial frequency (fav) values were greater for AiCE except for 0.5 mGy. For H-DLR levels, fav was greater for TrueFidelityTM than for AiCE. TTF50% values were greater with AiCE for the air insert, and lower than TrueFidelityTM for the polyethylene insert. From 2.5 to10 mGy, d' was greater for AiCE than for TrueFidelityTM for H-DLR for all lesions, but similar for L-DLR and M-DLR. Image quality was rated clinically appropriate for all levels of both algorithms, for dose from 2.5 to 10 mGy, except for L-DLR of AiCE. Conclusion: DLR algorithms reduce the image-noise and improve lesion detectability. Their operations and properties impacted both noise-texture and spatial resolution. (c) 2021 Societe francaise de radiologie. Published by Elsevier Masson SAS. All rights reserved.
引用
收藏
页码:21 / 30
页数:10
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