Improving image quality with super-resolution deep-learning-based reconstruction in coronary CT angiography

被引:20
|
作者
Nagayama, Yasunori [1 ]
Emoto, Takafumi [2 ]
Kato, Yuki [1 ]
Kidoh, Masafumi [1 ]
Oda, Seitaro [1 ]
Sakabe, Daisuke [2 ]
Funama, Yoshinori [3 ]
Nakaura, Takeshi [1 ]
Hayashi, Hidetaka [1 ]
Takada, Sentaro [1 ]
Uchimura, Ryutaro [1 ]
Hatemura, Masahiro [2 ]
Tsujita, Kenichi [4 ]
Hirai, Toshinori [1 ]
机构
[1] Kumamoto Univ, Grad Sch Med Sci, Dept Diagnost Radiol, 1-1-1, Honjo,Chuo Ku, Kumamoto 8608556, Japan
[2] Kumamoto Univ Hosp, Dept Cent Radiol, Kumamoto, Japan
[3] Kumamoto Univ, Fac Life Sci, Dept Med Radiat Sci, Kumamoto, Japan
[4] Kumamoto Univ, Grad Sch Med Sci, Dept Cardiovasc Med, Kumamoto, Japan
关键词
Coronary artery disease; Deep learning; Image enhancement; Computed tomography angiography; Cardiac imaging techniques; COMPUTED-TOMOGRAPHY ANGIOGRAPHY; ITERATIVE RECONSTRUCTION; DIAGNOSTIC-ACCURACY; DOSE REDUCTION; PLAQUE; CALCIFICATION; PERFORMANCE; ALGORITHM; CONTRAST; SYSTEM;
D O I
10.1007/s00330-023-09888-3
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
ObjectivesTo evaluate the effect of super-resolution deep-learning-based reconstruction (SR-DLR) on the image quality of coronary CT angiography (CCTA).MethodsForty-one patients who underwent CCTA using a 320-row scanner were retrospectively included. Images were reconstructed with hybrid (HIR), model-based iterative reconstruction (MBIR), normal-resolution deep-learning-based reconstruction (NR-DLR), and SR-DLR algorithms. For each image series, image noise, and contrast-to-noise ratio (CNR) at the left main trunk, right coronary artery, left anterior descending artery, and left circumflex artery were quantified. Blooming artifacts from calcified plaques were measured. Image sharpness, noise magnitude, noise texture, edge smoothness, overall quality, and delineation of the coronary wall, calcified and noncalcified plaques, cardiac muscle, and valves were subjectively ranked on a 4-point scale (1, worst; 4, best). The quantitative parameters and subjective scores were compared among the four reconstructions. Task-based image quality was assessed with a physical evaluation phantom. The detectability index for the objects simulating the coronary lumen, calcified plaques, and noncalcified plaques was calculated from the noise power spectrum (NPS) and task-based transfer function (TTF).ResultsSR-DLR yielded significantly lower image noise and blooming artifacts with higher CNR than HIR, MBIR, and NR-DLR (all p < 0.001). The best subjective scores for all the evaluation criteria were attained with SR-DLR, with significant differences from all other reconstructions (p < 0.001). In the phantom study, SR-DLR provided the highest NPS average frequency, TTF50%, and detectability for all task objects.ConclusionSR-DLR considerably improved the subjective and objective image qualities and object detectability of CCTA relative to HIR, MBIR, and NR-DLR algorithms.
引用
收藏
页码:8488 / 8500
页数:13
相关论文
共 50 条
  • [31] Coronary Stent Evaluation by CTA: Image Quality Comparison Between Super-Resolution Deep Learning Reconstruction and Other Reconstruction Algorithms
    Nagayama, Yasunori
    Emoto, Takafumi
    Hayashi, Hidetaka
    Kidoh, Masafumi
    Oda, Seitaro
    Nakaura, Takeshi
    Sakabe, Daisuke
    Funama, Yoshinori
    Tabata, Noriaki
    Ishii, Masanobu
    Yamanaga, Kenshi
    Fujisue, Koichiro
    Takashio, Seiji
    Yamamoto, Eiichiro
    Tsujita, Kenichi
    Hirai, Toshinori
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2023, 221 (05) : 599 - 610
  • [32] Enhancing SRTM digital elevation models with deep-learning-based super-resolution image generation
    Moreira, Leonardo Assumpcao
    Poelking, Livia Moreira
    Araki, Hideo
    BOLETIM DE CIENCIAS GEODESICAS, 2022, 28 (04):
  • [33] A Novel Deep-Learning-Based Enhanced Texture Transformer Network for Reference Image Super-Resolution
    Liu, Changhong
    Li, Hongyin
    Liang, Zhongwei
    Zhang, Yongjun
    Yan, Yier
    Zhong, Ray Y.
    Peng, Shaohu
    ELECTRONICS, 2022, 11 (19)
  • [34] Deep learning for image super-resolution
    Yang, Wenming
    Zhou, Fei
    Zhu, Rui
    Fukui, Kazuhiro
    Wang, Guijin
    Xue, Jing-Hao
    NEUROCOMPUTING, 2020, 398 (398) : 291 - 292
  • [35] A review of deep-learning-based super-resolution: From methods to applications
    Su, Hu
    Li, Ying
    Xu, Yifan
    Fu, Xiang
    Liu, Song
    PATTERN RECOGNITION, 2025, 157
  • [36] Brief Survey of Single Image Super-Resolution Reconstruction Based on Deep Learning Approaches
    Wang, Wei
    Hu, Yihui
    Luo, Yanhong
    Zhang, Tong
    SENSING AND IMAGING, 2020, 21 (01):
  • [37] Super-Resolution Reconstruction of Cytoskeleton Image Based on A-Net Deep Learning Network
    Chen, Qian
    Bai, Haoxin
    Che, Bingchen
    Zhao, Tianyun
    Zhang, Ce
    Wang, Kaige
    Bai, Jintao
    Zhao, Wei
    MICROMACHINES, 2022, 13 (09)
  • [38] ITERATIVE KERNEL RECONSTRUCTION FOR DEEP LEARNING-BASED BLIND IMAGE SUPER-RESOLUTION
    Yildirim, Suleyman
    Ates, Hasan F.
    Gunturk, Bahadir K.
    2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 3251 - 3255
  • [39] Super-resolution reconstruction algorithm for aerial image data management based on deep learning
    Xie, Bing
    Niu, Fengjuan
    DISTRIBUTED AND PARALLEL DATABASES, 2022, 40 (04) : 699 - 716
  • [40] TARGET IMAGE PROCESSING BASED ON SUPER-RESOLUTION RECONSTRUCTION AND DEEP MACHINE LEARNING ALGORITHM
    Lin, Yang
    Zhang, Ping
    Zhang, He
    Song, Guoping
    SCALABLE COMPUTING-PRACTICE AND EXPERIENCE, 2024, 25 (02): : 961 - 971