Reconstruction of Compressed-sensing MR Imaging Using Deep Residual Learning in the Image Domain

被引:10
|
作者
Ouchi, Shohei [1 ]
Ito, Satoshi [1 ]
机构
[1] Utsunomiya Univ, Grad Sch Engn, Dept Innovat Syst Engn, Utsunomiya, Tochigi, Japan
关键词
compressed sensing; reconstruction; deep learning;
D O I
10.2463/mrms.mp.2019-0139
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: A deep residual learning convolutional neural network (DRL-CNN) was applied to improve image quality and speed up the reconstruction of compressed sensing magnetic resonance imaging. The reconstruction performances of the proposed method was compared with iterative reconstruction methods. Methods: The proposed method adopted a DRL-CNN to learn the residual component between the input and output images (i.e., aliasing artifacts) for image reconstruction. The CNN-based reconstruction was compared with iterative reconstruction methods. To clarify the reconstruction performance of the proposed method, reconstruction experiments using 1D-, 2D-random under-sampling and sampling patterns that mix random and non-random under-sampling were executed. The peak-signal-to-noise ratio (PSNR) and the structural similarity index (SSIM) were examined for various numbers of training images, sampling rates, and numbers of training epochs. Results: The experimental results demonstrated that reconstruction time is drastically reduced to 0.022 s per image compared with that for conventional iterative reconstruction. The PSNR and SSIM were improved as the coherence of the sampling pattern increases. These results indicate that a deep CNN can learn coherent artifacts and is effective especially for cases where the randomness of k-space sampling is rather low. Simulation studies showed that variable density non-random under-sampling was a promising sampling pattern in 1D-random under-sampling of 2D image acquisition. Conclusion: A DRL-CNN can recognize and predict aliasing artifacts with low incoherence. It was demonstrated that reconstruction time is significantly reduced and the improvement in the PSNR and SSIM is higher in 1D-random under-sampling than in 2D. The requirement of incoherence for aliasing artifacts is different from that for iterative reconstruction.
引用
收藏
页码:190 / 203
页数:14
相关论文
共 50 条
  • [41] Revisiting l1-wavelet compressed-sensing MRI in the era of deep learning
    Gu, Hongyi
    Yaman, Burhaneddin
    Moeller, Steen
    Ellermann, Jutta
    Ugurbil, Kamil
    Akcakaya, Mehmet
    PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2022, 119 (33)
  • [42] Residual domain dictionary learning for compressed sensing video recovery
    Yun Song
    Gaobo Yang
    Hongtao Xie
    Dengyong Zhang
    Sun Xingming
    Multimedia Tools and Applications, 2017, 76 : 10083 - 10096
  • [43] GPU-accelerated compressed-sensing (CS) image reconstruction in chest digital tomosynthesis (CDT) using CUDA programming
    Choi, Sunghoon
    Leer, Haenghwa
    Lee, Donghoon
    Choi, Seungyeon
    Shin, Jungwook
    Jang, Woojin
    Seo, Chang-Woo
    Kim, Hee-Joung
    MEDICAL IMAGING 2017: PHYSICS OF MEDICAL IMAGING, 2017, 10132
  • [44] Image compressed sensing: From deep learning to adaptive learning
    Xie, Zhonghua
    Liu, Lingjun
    Chen, Zehong
    KNOWLEDGE-BASED SYSTEMS, 2024, 293
  • [45] MOTION-COMPENSATED COMPRESSED-SENSING RECONSTRUCTION FOR DYNAMIC MRI
    Mun, Sungkwang
    Fowler, James E.
    2013 20TH IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP 2013), 2013, : 1006 - 1010
  • [46] Compressed Sensing MR Image Reconstruction Exploiting TGV and Wavelet Sparsity
    Zhao, Di
    Du, Huiqian
    Han, Yu
    Mei, Wenbo
    COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2014, 2014
  • [47] Dynamically-Collimated Digital Tomosynthesis Reconstruction by Using a Compressed-Sensing Based Algorithm
    Soyoung Park
    Guna Kim
    Hyosung Cho
    Changwoo Seo
    Minsik Lee
    Journal of the Korean Physical Society, 2020, 76 : 66 - 72
  • [48] Compressed-Sensing Reconstruction Based on Block Sparse Bayesian Learning in Bearing-Condition Monitoring
    Sun, Jiedi
    Yu, Yang
    Wen, Jiangtao
    SENSORS, 2017, 17 (06):
  • [49] Dynamically-Collimated Digital Tomosynthesis Reconstruction by Using a Compressed-Sensing Based Algorithm
    Park, Soyoung
    Kim, Guna
    Cho, Hyosung
    Seo, Changwoo
    Lee, Minsik
    JOURNAL OF THE KOREAN PHYSICAL SOCIETY, 2020, 76 (01) : 66 - 72
  • [50] REAL-TIME DYNAMIC MR IMAGE RECONSTRUCTION USING KALMAN FILTERED COMPRESSED SENSING
    Qiu, Chenlu
    Lu, Wei
    Vaswani, Namrata
    2009 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOLS 1- 8, PROCEEDINGS, 2009, : 393 - 396