Lung-Optimized Deep- Learning-Based Reconstruction for Ultralow-Dose CT

被引:13
|
作者
Goto, Makoto [1 ]
Nagayama, Yasunori [2 ]
Sakabe, Daisuke [1 ]
Emoto, Takafumi [1 ]
Kidoh, Masafumi [2 ]
Oda, Seitaro [2 ]
Nakaura, Takeshi [2 ]
Taguchi, Narumi [2 ]
Funama, Yoshinori [3 ]
Takada, Sentaro [2 ]
Uchimura, Ryutaro [2 ]
Hayashi, Hidetaka [2 ]
Hatemura, Masahiro [1 ]
Kawanaka, Koichi [2 ]
Hirai, Toshinori [2 ]
机构
[1] Kumamoto Univ Hosp, Dept Cent Radiol, Chuo Ku, Kumamoto 8608556, Japan
[2] Kumamoto Univ, Grad Sch Med Sci, Dept Diagnost Radiol, 1-1-1 Honjo,Chuo Ku, Kumamoto 8608556, Japan
[3] Kumamoto Univ, Fac Life Sci, Dept Med Radiat Sci, Chuo Ku, Kumamoto 8620976, Japan
关键词
CT; Lung; Deep-learning; Image reconstruction; Ultralow-dose; FILTERED BACK-PROJECTION; SUBMILLISIEVERT CHEST CT; TASK-BASED PERFORMANCE; ITERATIVE-RECONSTRUCTION; IMAGE QUALITY; COMPUTED-TOMOGRAPHY; ALGORITHMS; PHANTOM;
D O I
10.1016/j.acra.2022.04.025
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
Rationale and Objectives: To evaluate the image properties of lung-specialized deep-learning-based reconstruction (DLR) and its appli-cability in ultralow-dose CT (ULDCT) relative to hybrid-(HIR) and model-based iterative-reconstructions (MBIR).Materials and Methods: An anthropomorphic chest phantom was scanned on a 320-row scanner at 50-mA (low-dose-CT 1 [LDCT-1]), 25-mA (LDCT-2), and 10-mA (ULDCT). LDCT were reconstructed with HIR; ULDCT images were reconstructed with HIR (ULDCT-HIR), MBIR (ULDCT-MBIR), and DLR (ULDCT-DLR). Image noise and contrast-to-noise ratio (CNR) were quantified. With the LDCT images as reference standards, ULDCT image qualities were subjectively scored on a 5-point scale (1 = substantially inferior to LDCT-2, 3 = compara-ble to LDCT-2, 5 = comparable to LDCT-1). For task-based image quality analyses, a physical evaluation phantom was scanned at seven doses to achieve the noise levels equivalent to chest phantom; noise power spectrum (NPS) and task-based transfer function (TTF) were evaluated. Clinical ULDCT (10-mA) images obtained in 14 nonobese patients were reconstructed with HIR, MBIR, and DLR; the subjective acceptability was ranked. Results: Image noise was lower and CNR was higher in ULDCT-DLR and ULDCT-MBIR than in LDCT-1, LDCT-2, and ULDCT-HIR (p < 0.01). The overall quality of ULDCT-DLR was higher than of ULDCT-HIR and ULDCT-MBIR (p < 0.01), and almost comparable with that of LDCT-2 (mean score: 3.4 +/- 0.5). DLR yielded the highest NPS peak frequency and TTF50% for high-contrast object. In clinical ULDCT images, the subjective acceptability of DLR was higher than of HIR and MBIR (p < 0.01).Conclusion: DLR optimized for lung CT improves image quality and provides possible greater dose optimization opportunity than HIR and MBIR.
引用
收藏
页码:431 / 440
页数:10
相关论文
共 50 条
  • [41] Constructing a tissue-specific texture prior by machine learning from previous full-dose scan for Bayesian reconstruction of current ultralow-dose CT images
    Gao, Yongfeng
    Tan, Jiaxing
    Shi, Yongyi
    Lu, Siming
    Gupta, Amit
    Li, Haifang
    Liang, Zhengrong
    JOURNAL OF MEDICAL IMAGING, 2020, 7 (03)
  • [42] Performance of ultralow-dose CT with iterative reconstruction in lung cancer screening: limiting radiation exposure to the equivalent of conventional chest X-ray imaging
    Adrian Huber
    Julia Landau
    Lukas Ebner
    Yanik Bütikofer
    Lars Leidolt
    Barbara Brela
    Michelle May
    Johannes Heverhagen
    Andreas Christe
    European Radiology, 2016, 26 : 3643 - 3652
  • [43] Deep Learning-based Low-dose Tomography Reconstruction with Hybrid-dose Measurements
    Wu, Ziling
    Bicer, Tekin
    Liu, Zhengchun
    De Andrade, Vincent
    Zhu, Yunhui
    Foster, Ian T.
    2020 IEEE/ACM WORKSHOP ON MACHINE LEARNING IN HIGH PERFORMANCE COMPUTING ENVIRONMENTS (MLHPC 2020) AND WORKSHOP ON ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING FOR SCIENTIFIC APPLICATIONS (AI4S 2020), 2020, : 88 - 95
  • [44] Impact of the training loss in deep learning-based CT reconstruction of bone microarchitecture
    Leuliet, Theo
    Maxim, Voichita
    Peyrin, Francoise
    Sixou, Bruno
    MEDICAL PHYSICS, 2022, 49 (05) : 2952 - 2964
  • [45] A feasibility study of pulmonary nodule detection by ultralow-dose CT with adaptive statistical iterative reconstruction-V technique
    Ye, Kai
    Zhu, Qiao
    Li, Meijiao
    Lu, Yuliu
    Yuan, Huishu
    EUROPEAN JOURNAL OF RADIOLOGY, 2019, 119
  • [46] Combination of Deep Learning-Based Denoising and Iterative Reconstruction for Ultra-Low-Dose CT of the Chest: Image Quality and Lung-RADS Evaluation
    Hata, Akinori
    Yanagawa, Masahiro
    Yoshida, Yuriko
    Miyata, Tomo
    Tsubamoto, Mitsuko
    Honda, Osamu
    Tomiyama, Noriyuki
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2020, 215 (06) : 1321 - 1328
  • [47] 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
  • [48] Deep learning-based algorithms for low-dose CT imaging: A review
    Chen, Hongchi
    Li, Qiuxia
    Zhou, Lazhen
    Li, Fangzuo
    EUROPEAN JOURNAL OF RADIOLOGY, 2024, 172
  • [49] Magnetotelluric data denoising method combining two deep- learning-based models
    Li, Jin
    Liu, Yecheng
    Tang, Jingtian
    Peng, Yiqun
    Zhang, Xian
    Li, Yong
    GEOPHYSICS, 2023, 88 (01) : E13 - E28
  • [50] Deep Learning-based Reconstruction for Lower-Dose Pediatric CT: Technical Principles, Image Characteristics, and Clinical Implementations
    Nagayama, Yasunori
    Sakabe, Daisuke
    Goto, Makoto
    Emoto, Takafumi
    Oda, Seitaro
    Nakaura, Takeshi
    Kidoh, Masafumi
    Uetani, Hiroyuki
    Funama, Yoshinori
    Hirai, Toshinori
    RADIOGRAPHICS, 2021, 41 (07) : 1936 - 1953