MRI Super-Resolution Through Generative Degradation Learning

被引:8
|
作者
Sui, Yao [1 ,2 ]
Afacan, Onur [1 ,2 ]
Gholipour, Ali [1 ,2 ]
Warfield, Simon K. [1 ,2 ]
机构
[1] Harvard Med Sch, Boston, MA 02115 USA
[2] Boston Childrens Hosp, Boston, MA 02115 USA
来源
MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2021, PT VI | 2021年 / 12906卷
基金
美国国家卫生研究院;
关键词
MRI; Super-resolution; Deep learning; IMAGE QUALITY; RECONSTRUCTION; RESOLUTION;
D O I
10.1007/978-3-030-87231-1_42
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Spatial resolution plays a critically important role in MRI for the precise delineation of the imaged tissues. Unfortunately, acquisitions with high spatial resolution require increased imaging time, which increases the potential of subject motion, and suffers from reduced signal-to-noise ratio (SNR). Super-resolution reconstruction (SRR) has recently emerged as a technique that allows for a trade-off between high spatial resolution, high SNR, and short scan duration. Deconvolution-based SRR has recently received significant interest due to the convenience of using the image space. The most critical factor to succeed in deconvolution is the accuracy of the estimated blur kernels that characterize how the image was degraded in the acquisition process. Current methods use handcrafted filters, such as Gaussian filters, to approximate the blur kernels, and have achieved promising SRR results. As the image degradation is complex and varies with different sequences and scanners, handcrafted filters, unfortunately, do not necessarily ensure the success of the deconvolution. We sought to develop a technique that enables accurately estimating blur kernels from the image data itself. We designed a deep architecture that utilizes an adversarial scheme with a generative neural network against its degradation counterparts. This design allows for the SRR tailored to an individual subject, as the training requires the scan-specific data only, i.e., it does not require auxiliary datasets of high-quality images, which are practically challenging to obtain. With this technique, we achieved high-quality brain MRI at an isotropic resolution of 0.125 cubic mm with six minutes of imaging time. Extensive experiments on both simulated low-resolution data and clinical data acquired from ten pediatric patients demonstrated that our approach achieved superior SRR results as compared to state-of-the-art deconvolution-based methods, while in parallel, at substantially reduced imaging time in comparison to direct high-resolution acquisitions.
引用
收藏
页码:430 / 440
页数:11
相关论文
共 50 条
  • [1] MRI super-resolution via realistic downsampling with adversarial learning
    Huang, Bangyan
    Xiao, Haonan
    Liu, Weiwei
    Zhang, Yibao
    Wu, Hao
    Wang, Weihu
    Yang, Yunhuan
    Yang, Yidong
    Miller, G. Wilson
    Li, Tian
    Cai, Jing
    PHYSICS IN MEDICINE AND BIOLOGY, 2021, 66 (20)
  • [2] MRI Super-Resolution With Ensemble Learning and Complementary Priors
    Lyu, Qing
    Shan, Hongming
    Wang, Ge
    IEEE TRANSACTIONS ON COMPUTATIONAL IMAGING, 2020, 6 : 615 - 624
  • [3] Super-resolution musculoskeletal MRI using deep learning
    Chaudhari, Akshay S.
    Fang, Zhongnan
    Kogan, Feliks
    Wood, Jeff
    Stevens, Kathryn J.
    Gibbons, Eric K.
    Lee, Jin Hyung
    Gold, Garry E.
    Hargreaves, Brian A.
    MAGNETIC RESONANCE IN MEDICINE, 2018, 80 (05) : 2139 - 2154
  • [4] SOUP-GAN: Super-Resolution MRI Using Generative Adversarial Networks
    Zhang, Kuan
    Hu, Haoji
    Philbrick, Kenneth
    Conte, Gian Marco
    Sobek, Joseph D.
    Rouzrokh, Pouria
    Erickson, Bradley J.
    TOMOGRAPHY, 2022, 8 (02) : 905 - 919
  • [5] Scan-Specific Generative Neural Network for MRI Super-Resolution Reconstruction
    Sui, Yao
    Afacan, Onur
    Jaimes, Camilo
    Gholipour, Ali
    Warfield, Simon K.
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2022, 41 (06) : 1383 - 1399
  • [6] Learning Dynamic Generative Attention for Single Image Super-Resolution
    Chen, Rui
    Zhang, Yan
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, 2022, 32 (12) : 8368 - 8382
  • [7] Super-resolution Reconstruction of Dynamic MRI by Patch Learning
    Lu, Yanhong
    Yang, Ran
    2012 12TH INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION, ROBOTICS & VISION (ICARCV), 2012, : 1443 - 1448
  • [8] FA-GAN: Fused attentive generative adversarial networks for MRI image super-resolution
    Jiang, Mingfeng
    Zhi, Minghao
    Wei, Liying
    Yang, Xiaocheng
    Zhang, Jucheng
    Li, Yongming
    Wang, Pin
    Huang, Jiahao
    Yang, Guang
    COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2021, 92
  • [9] Super-Resolution of Radargrams With a Generative Deep Learning Model
    Donini, Elena
    Bruzzone, Lorenzo
    Bovolo, Francesca
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62 : 1 - 17
  • [10] Perceptual super-resolution in multiple sclerosis MRI
    Giraldo, Diana L.
    Khan, Hamza
    Pineda, Gustavo
    Liang, Zhihua
    Lozano-Castillo, Alfonso
    Van Wijmeersch, Bart
    Woodruff, Henry C.
    Lambin, Philippe
    Romero, Eduardo
    Peeters, Liesbet M.
    Sijbers, Jan
    FRONTIERS IN NEUROSCIENCE, 2024, 18