Deep learning-based noise reduction for coronary CT angiography: using four-dimensional noise-reduction images as the ground truth

被引:6
|
作者
Kobayashi, Takuma [1 ,2 ]
Nishii, Tatsuya [2 ]
Umehara, Kensuke [1 ,3 ,4 ]
Ota, Junko [1 ,3 ,4 ]
Ohta, Yasutoshi [2 ]
Fukuda, Tetsuya [2 ]
Ishida, Takayuki [1 ,5 ]
机构
[1] Osaka Univ, Grad Sch Med, Dept Med Phys & Engn, Suita, Japan
[2] Natl Cerebral & Cardiovasc Ctr, Dept Radiol, Suita, Japan
[3] Natl Inst Quantum Sci & Technol QST, QST Hosp, Dept Med Technol, Med Informat Sect, Chiba, Japan
[4] Natl Inst Quantum Sci & Technol, Inst Quantum Med Sci, Dept Mol Imaging & Theranost, Appl MRI Res, Chiba, Japan
[5] Osaka Univ, Dept Med Phys & Engn, Grad Sch Med, 1-7 Yamadaoka, Suita, Osaka 5650871, Japan
基金
日本学术振兴会;
关键词
Coronary computed tomography angiography; noise reduction; deep learning; convolutional neural network; image postprocessing; CARDIOVASCULAR COMPUTED-TOMOGRAPHY; EXPERT CONSENSUS DOCUMENT; NORTH-AMERICAN SOCIETY; LOW-DOSE CT; NETWORK; EQUIVALENCE;
D O I
10.1177/02841851221141656
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
Background To assess low-contrast areas such as plaque and coronary artery stenosis, coronary computed tomography angiography (CCTA) needs to provide images with lower noise without increasing radiation doses. Purpose To develop a deep learning-based noise-reduction method for CCTA using four-dimensional noise reduction (4DNR) as the ground truth for supervised learning. Material and Methods \We retrospectively collected 100 retrospective ECG-gated CCTAs. We created 4DNR images using non-rigid registration and weighted averaging three timeline CCTA volumetric data with intervals of 50 ms in the mid-diastolic phase. Our method set the original reconstructed image as the input and the 4DNR as the target image and obtained the noise-reduced image via residual learning. We evaluated the objective image quality of the original and deep learning-based noise-reduction (DLNR) images based on the image noise of the aorta and the contrast-to-noise ratio (CNR) of the coronary arteries. Further, a board-certified radiologist evaluated the blurring of several heart structures using a 5-point Likert scale subjectively and assigned a coronary artery disease reporting and data system (CAD-RADS) category independently. Results DLNR CCTAs showed 64.5% lower image noise (P < 0.001) and achieved a 2.9 times higher CNR of coronary arteries than that in original images, without significant blurring in subjective comparison (P > 0.1). The intra-observer agreement of CAD-RADS in the DLNR image was excellent (0.87, 95% confidence interval = 0.77-0.99) with original CCTAs. Conclusion Our DLNR method supervised by 4DNR significantly reduced the image noise of CCTAs without affecting the assessment of coronary stenosis.
引用
收藏
页码:1831 / 1840
页数:10
相关论文
共 50 条
  • [31] Pie-Net: Prior-information-enabled deep learning noise reduction for coronary CT angiography acquired with a photon counting detector CT
    Chang, Shaojie
    Huber, Nathan R.
    Marsh, Jeffrey F.
    Koons, Emily K.
    Gong, Hao
    Yu, Lifeng
    McCollough, Cynthia H.
    Leng, Shuai
    MEDICAL PHYSICS, 2023, 50 (10) : 6283 - 6295
  • [32] Using a deep neural network for four-dimensional CT artifact reduction in image-guided radiotherapy
    Mori, Shinichiro
    Hirai, Ryusuke
    Sakata, Yukinobu
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2019, 65 : 67 - 75
  • [33] Deep learning-based image restoration algorithm for coronary CT angiography
    Tatsugami, Fuminari
    Higaki, Toru
    Nakamura, Yuko
    Yu, Zhou
    Zhou, Jian
    Lu, Yujie
    Fujioka, Chikako
    Kitagawa, Toshiro
    Kihara, Yasuki
    Iida, Makoto
    Awai, Kazuo
    EUROPEAN RADIOLOGY, 2019, 29 (10) : 5322 - 5329
  • [34] Deep learning-based stenosis quantification from coronary CT Angiography
    Hong, Youngtaek
    Commandeur, Frederic
    Cadet, Sebastien
    Goeller, Markus
    Doris, Mhairi K.
    Chen, Xi
    Kwiecinski, Jacek
    Berman, Daniel S.
    Slomka, Piotr J.
    Chang, Hyuk-Jae
    Dey, Damini
    MEDICAL IMAGING 2019: IMAGE PROCESSING, 2019, 10949
  • [35] Deep Learning-Based Noise Reduction Approach to Improve Speech Intelligibility for Cochlear Implant Recipients
    Lai, Ying-Hui
    Tsao, Yu
    Lu, Xugang
    Chen, Fei
    Su, Yu-Ting
    Chen, Kuang-Chao
    Chen, Yu-Hsuan
    Chen, Li-Ching
    Li, Lieber Po-Hung
    Lee, Chin-Hui
    EAR AND HEARING, 2018, 39 (04): : 795 - 809
  • [36] COMPARATIVE ANALYSIS OF DISCRIMINATIVE DEEP LEARNING-BASED NOISE REDUCTION METHODS IN LOW SNR SCENARIOS
    Shetu, Shrishti Saha
    Habets, Emanuel A. P.
    Brendel, Andreas
    2024 18TH INTERNATIONAL WORKSHOP ON ACOUSTIC SIGNAL ENHANCEMENT, IWAENC 2024, 2024, : 36 - 40
  • [37] Deep learning-based noise reduction preserves quantitative MRI biomarkers in patients with brain tumors
    Pouliquen, Geoffroy
    Debacker, Clement
    Charron, Sylvain
    Roux, Alexandre
    Provost, Corentin
    Benzakoun, Joseph
    de Graaf, Wolter
    Prevost, Valentin
    Pallud, Johan
    Oppenheim, Catherine
    JOURNAL OF NEURORADIOLOGY, 2024, 51 (04)
  • [38] RECONSTRUCTION OF ECHOCARDIOGRAPHIC IMAGES USING FILTERED TWO-DIMENSIONAL FOURIER-TRANSFORMS - A SUPERIOR METHOD FOR NOISE-REDUCTION
    THOMAS, JD
    GILLAM, LD
    NEWELL, JB
    HOGAN, R
    WEYMAN, AE
    JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 1987, 9 (02) : A214 - A214
  • [39] Development of learning-based noise reduction and image reconstruction algorithm in two dimensional Rayleigh thermometry
    Cai, Minnan
    Luo, Weiyi
    Xu, Wenjiang
    You, Yancheng
    OPTIK, 2021, 248
  • [40] Noise Reduction in Dental CT Images Based on Generative Adversarial Network
    Shao, Heng
    Gu, Haiyan
    Liao, Peixi
    Chen, Hu
    Zhang, Yi
    THIRTEENTH INTERNATIONAL CONFERENCE ON GRAPHICS AND IMAGE PROCESSING (ICGIP 2021), 2022, 12083