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Image quality comparison of a nonlinear image-based noise reduction technique with a hybrid-type iterative reconstruction for pediatric computed tomography.基于非线性图像的降噪技术与混合型迭代重建技术在儿科计算机断层扫描中的图像质量比较
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2
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3
Comparison of physical image qualities and artifact indices for head computed tomography in the axial and helical scan modes.头部 CT 轴扫与螺旋扫描模式下的物理图像质量和伪影指数比较。
Phys Eng Sci Med. 2020 Jun;43(2):557-566. doi: 10.1007/s13246-020-00856-5. Epub 2020 Mar 5.
4
Noise and spatial resolution properties of a commercially available deep learning-based CT reconstruction algorithm.一种商用的基于深度学习的CT重建算法的噪声和空间分辨率特性。
Med Phys. 2020 Sep;47(9):3961-3971. doi: 10.1002/mp.14319. Epub 2020 Jul 6.
5
Image Quality Assessment of Abdominal CT by Use of New Deep Learning Image Reconstruction: Initial Experience.基于新型深度学习图像重建的腹部 CT 图像质量评估:初步经验。
AJR Am J Roentgenol. 2020 Jul;215(1):50-57. doi: 10.2214/AJR.19.22332. Epub 2020 Apr 14.
6
Image quality and dose reduction opportunity of deep learning image reconstruction algorithm for CT: a phantom study.深度学习图像重建算法在 CT 中的图像质量和剂量降低机会:一项体模研究。
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Validation of deep-learning image reconstruction for coronary computed tomography angiography: Impact on noise, image quality and diagnostic accuracy.深度学习图像重建在冠状动脉 CT 血管造影中的验证:对噪声、图像质量和诊断准确性的影响。
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Deep Learning Reconstruction at CT: Phantom Study of the Image Characteristics.深度学习 CT 重建:图像特征的体模研究。
Acad Radiol. 2020 Jan;27(1):82-87. doi: 10.1016/j.acra.2019.09.008.
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Technical Note: Performance comparison of ultra-high-resolution scan modes of two clinical computed tomography systems.技术说明:两种临床 CT 系统超高分辨率扫描模式的性能比较。
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State of the Art in Abdominal CT: The Limits of Iterative Reconstruction Algorithms.腹部 CT 技术现状:迭代重建算法的局限性。
Radiology. 2019 Dec;293(3):491-503. doi: 10.1148/radiol.2019191422. Epub 2019 Oct 29.

计算机断层扫描中临床可用深度学习图像重建的性能:一项体模研究。

Performance of clinically available deep learning image reconstruction in computed tomography: a phantom study.

作者信息

Kawashima Hiroki, Ichikawa Katsuhiro, Takata Tadanori, Mitsui Wataru, Ueta Hiroshi, Yoneda Norihide, Kobayashi Satoshi

机构信息

Kanazawa University, Institute of Medical, Pharmaceutical, and Health Sciences, Faculty of Health Sciences, Kanazawa, Japan.

Kanazawa University Hospital, Radiology Division, Kanazawa, Japan.

出版信息

J Med Imaging (Bellingham). 2020 Nov;7(6):063503. doi: 10.1117/1.JMI.7.6.063503. Epub 2020 Dec 16.

DOI:10.1117/1.JMI.7.6.063503
PMID:33344672
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7739999/
Abstract

To assess the physical performance of deep learning image reconstruction (DLIR) compared with those of filtered back projection (FBP) and iterative reconstruction (IR) and to estimate the dose reduction potential of the technique. A cylindrical water bath phantom with a diameter of 300 mm including two rods composed of acrylic and soft tissue-equivalent material was scanned using a clinical computed tomography (CT) scanner at four dose levels (CT dose index of 20, 15, 10, and 5 mGy). Phantom images were reconstructed using FBP, DLIR, and IR. The in-plane and axis task transfer functions (TTFs) and in-plane noise power spectrum (NPS) were measured. The dose reduction potential was estimated by evaluating the system performance function calculated from TTF and NPS. The visibilities of a bar pattern phantom placed in the same water bath phantom were compared. The use of DLIR resulted in a notable decrease in noise magnitude. The shift in peak NPS frequency was reduced compared with IR. Preservation of in-plane TTF was superior using DLIR than using IR. The estimated dose reduction potentials of DLIR and IR were 39% to 54% and 19% to 29%, respectively. However, the axis resolution was decreased with DLIR by 6% to 21% compared with FBP. The bar pattern visibilities were approximately consistent with the TTF results in both planes. The in-plane edge-preserving noise reduction performance of DLIR is superior to that of IR. Moreover, DLIR enables approximately half-dose acquisitions with no deterioration in noise texture in cases that permit some axis resolution reduction.

摘要

评估深度学习图像重建(DLIR)与滤波反投影(FBP)和迭代重建(IR)相比的物理性能,并估计该技术的剂量降低潜力。使用临床计算机断层扫描(CT)扫描仪在四个剂量水平(CT剂量指数为20、15、10和5 mGy)下扫描一个直径为300 mm的圆柱形水浴体模,该体模包含两根由丙烯酸和软组织等效材料组成的棒。使用FBP、DLIR和IR重建体模图像。测量平面内和轴向上的任务传递函数(TTF)以及平面内噪声功率谱(NPS)。通过评估根据TTF和NPS计算出的系统性能函数来估计剂量降低潜力。比较放置在同一水浴体模中的条形图案体模的可见性。使用DLIR导致噪声幅度显著降低。与IR相比,NPS峰值频率的偏移减小。使用DLIR时平面内TTF的保留优于使用IR。DLIR和IR的估计剂量降低潜力分别为39%至54%和19%至29%。然而,与FBP相比,使用DLIR时轴分辨率降低了6%至21%。在两个平面中,条形图案的可见性与TTF结果大致一致。DLIR在平面内保留边缘的降噪性能优于IR。此外,在允许一定程度降低轴分辨率的情况下,DLIR能够实现大约半剂量采集且噪声纹理无恶化。