Image quality improvement with deep learning-based reconstruction on abdominal ultrahigh-resolution CT: A phantom study

被引:14
|
作者
Shirasaka, Takashi [1 ]
Kojima, Tsukasa [1 ]
Funama, Yoshinori [2 ]
Sakai, Yuki [1 ]
Kondo, Masatoshi [1 ]
Mikayama, Ryoji [1 ]
Hamasaki, Hiroshi [1 ]
Kato, Toyoyuki [1 ]
Ushijima, Yasuhiro [3 ]
Asayama, Yoshiki [4 ]
Nishie, Akihiro [3 ]
机构
[1] Kyushu Univ Hosp, Dept Med Technol, Div Radiol, Fukuoka, Japan
[2] Kumamoto Univ, Dept Med Phys, Fac Life Sci, Kumamoto, Japan
[3] Kyushu Univ, Grad Sch Med Sci, Dept Clin Radiol, Fukuoka, Japan
[4] Kyushu Univ, Grad Sch Med Sci, Dept Adv Imaging & Intervent Radiol, Fukuoka, Japan
来源
JOURNAL OF APPLIED CLINICAL MEDICAL PHYSICS | 2021年 / 22卷 / 07期
关键词
deep learning-based reconstruction; ultrahigh-resolution CT; FILTERED BACK-PROJECTION; ITERATIVE RECONSTRUCTION; PERFORMANCE; CONTRAST; CANCER;
D O I
10.1002/acm2.13318
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 In an ultrahigh-resolution CT (U-HRCT), deep learning-based reconstruction (DLR) is expected to drastically reduce image noise without degrading spatial resolution. We assessed a new algorithm's effect on image quality at different radiation doses assuming an abdominal CT protocol. Methods For the normal-sized abdominal models, a Catphan 600 was scanned by U-HRCT with 100%, 50%, and 25% radiation doses. In all acquisitions, DLR was compared to model-based iterative reconstruction (MBIR), filtered back projection (FBP), and hybrid iterative reconstruction (HIR). For the quantitative assessment, we compared image noise, which was defined as the standard deviation of the CT number, and spatial resolution among all reconstruction algorithms. Results Deep learning-based reconstruction yielded lower image noise than FBP and HIR at each radiation dose. DLR yielded higher image noise than MBIR at the 100% and 50% radiation doses (100%, 50%, DLR: 15.4, 16.9 vs MBIR: 10.2, 15.6 Hounsfield units: HU). However, at the 25% radiation dose, the image noise in DLR was lower than that in MBIR (16.7 vs. 26.6 HU). The spatial frequency at 10% of the modulation transfer function (MTF) in DLR was 1.0 cycles/mm, slightly lower than that in MBIR (1.05 cycles/mm) at the 100% radiation dose. Even when the radiation dose decreased, the spatial frequency at 10% of the MTF of DLR did not change significantly (50% and 25% doses, 0.98 and 0.99 cycles/mm, respectively). Conclusion Deep learning-based reconstruction performs more consistently at decreasing dose in abdominal ultrahigh-resolution CT compared to all other commercially available reconstruction algorithms evaluated.
引用
收藏
页码:286 / 296
页数:11
相关论文
共 50 条
  • [21] Dose reduction potential of vendor-agnostic deep learning model in comparison with deep learning-based image reconstruction algorithm on CT: a phantom study
    Choi, Hyunsu
    Chang, Won
    Kim, Jong Hyo
    Ahn, Chulkyun
    Lee, Heejin
    Kim, Hae Young
    Cho, Jungheum
    Lee, Yoon Jin
    Kim, Young Hoon
    EUROPEAN RADIOLOGY, 2022, 32 (02) : 1247 - 1255
  • [22] Advances in spatial resolution and radiation dose reduction using super- resolution deep learning-based reconstruction for abdominal computed tomography: A phantom study
    Funama, Yoshinori
    Nagayama, Yasunori
    Sakabe, Daisuke
    Ito, Yuya
    Chiba, Yutaka
    Nakaura, Takeshi
    Oda, Seitaro
    Kidoh, Masafumi
    Hirai, Toshinori
    ACADEMIC RADIOLOGY, 2025, 32 (03) : 1517 - 1524
  • [23] Deep Learning-Based Reconstruction Improves the Image Quality of Low-Dose CT Colonography
    Chen, Yanshan
    Huang, Zixuan
    Feng, Lijuan
    Zou, Wenbin
    Kong, Decan
    Zhu, Dongyun
    Dai, Guochao
    Zhao, Weidong
    Zhang, Yuanke
    Luo, Mingyue
    ACADEMIC RADIOLOGY, 2024, 31 (08) : 3191 - 3199
  • [24] Comparison of two versions of a deep learning image reconstruction algorithm on CT image quality and dose reduction: A phantom study
    Greffier, Joel
    Dabli, Djamel
    Frandon, Julien
    Hamard, Aymeric
    Belaouni, Asmaa
    Akessoul, Philippe
    Fuamba, Yannick
    Le Roy, Julien
    Guiu, Boris
    Beregi, Jean-Paul
    MEDICAL PHYSICS, 2021, 48 (10) : 5743 - 5755
  • [25] Validation of deep learning-based CT image reconstruction for treatment planning
    Yasui, Keisuke
    Saito, Yasunori
    Ito, Azumi
    Douwaki, Momoka
    Ogawa, Shuta
    Kasugai, Yuri
    Ooe, Hiromu
    Nagake, Yuya
    Hayashi, Naoki
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [26] Validation of deep learning-based CT image reconstruction for treatment planning
    Keisuke Yasui
    Yasunori Saito
    Azumi Ito
    Momoka Douwaki
    Shuta Ogawa
    Yuri Kasugai
    Hiromu Ooe
    Yuya Nagake
    Naoki Hayashi
    Scientific Reports, 13
  • [27] Impact of a Deep Learning-based Super-resolution Image Reconstruction Technique on High-contrast Computed Tomography: A Phantom Study
    Sato, Hideyuki
    Fujimoto, Shinichiro
    Tomizawa, Nobuo
    Inage, Hidekazu
    Yokota, Takuya
    Kudo, Hikaru
    Fan, Ruiheng
    Kawamoto, Keiichi
    Honda, Yuri
    Kobayashi, Takayuki
    Minamino, Tohru
    Kogure, Yosuke
    ACADEMIC RADIOLOGY, 2023, 30 (11) : 2657 - 2665
  • [28] Image Quality Improvement of Low-dose Abdominal CT Using Deep Learning Image Reconstruction Compared With the Second Generation Iterative Reconstruction
    Kang, Hyo-Jin
    Min Lee, Jeong
    Park, Sae Jin
    Lee, Sang Min
    Joo, Ijin
    Yoon, Jeong Hee
    Current Medical Imaging, 2024, 20
  • [29] Image Quality Improvement of Low-dose Abdominal CT using Deep Learning Image Reconstruction Compared with the Second Generation Iterative Reconstruction
    Kang, Hyo-Jin
    Lee, Jeong Min
    Park, Sae Jin
    Lee, Sang Min
    Joo, Ijin
    Yoon, Jeong Hee
    CURRENT MEDICAL IMAGING, 2024, 20
  • [30] Deep Learning-Based Versus Iterative Image Reconstruction for Unenhanced Brain CT: A Quantitative Comparison of Image Quality
    Cozzi, Andrea
    Ce, Maurizio
    De Padova, Giuseppe
    Libri, Dario
    Caldarelli, Nazarena
    Zucconi, Fabio
    Oliva, Giancarlo
    Cellina, Michaela
    TOMOGRAPHY, 2023, 9 (05) : 1629 - 1637