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MRI super-resolution via realistic downsampling with adversarial learning.

Publication ,  Journal Article
Huang, B; Xiao, H; Liu, W; Zhang, Y; Wu, H; Wang, W; Yang, Y; Yang, Y; Miller, GW; Li, T; Cai, J
Published in: Phys Med Biol
October 5, 2021

Many deep learning (DL) frameworks have demonstrated state-of-the-art performance in the super-resolution (SR) task of magnetic resonance imaging, but most performances have been achieved with simulated low-resolution (LR) images rather than LR images from real acquisition. Due to the limited generalizability of the SR network, enhancement is not guaranteed for real LR images because of the unreality of the training LR images. In this study, we proposed a DL-based SR framework with an emphasis on data construction to achieve better performance on real LR MR images. The framework comprised two steps: (a) downsampling training using a generative adversarial network (GAN) to construct more realistic and perfectly matched LR/high-resolution (HR) pairs. The downsampling GAN input was real LR and HR images. The generator translated the HR images to LR images and the discriminator distinguished the patch-level difference between the synthetic and real LR images. (b) SR training was performed using an enhance4d deep super-resolution network (EDSR). In the controlled experiments, three EDSRs were trained using our proposed method, Gaussian blur, and k-space zero-filling. As for the data, liver MR images were obtained from 24 patients using breath-hold serial LR and HR scans (only HR images were used in the conventional methods). The k-space zero-filling group delivered almost zero enhancement on the real LR images and the Gaussian group produced a considerable number of artifacts. The proposed method exhibited significantly better resolution enhancement and fewer artifacts compared with the other two networks. Our method outperformed the Gaussian method by an improvement of 0.111 ± 0.016 in the structural similarity index and 2.76 ± 0.98 dB in the peak signal-to-noise ratio. The blind/reference-less image spatial quality evaluator metric of the conventional Gaussian method and proposed method were 46.6 ± 4.2 and 34.1 ± 2.4, respectively.

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Published In

Phys Med Biol

DOI

EISSN

1361-6560

Publication Date

October 5, 2021

Volume

66

Issue

20

Location

England

Related Subject Headings

  • Signal-To-Noise Ratio
  • Nuclear Medicine & Medical Imaging
  • Magnetic Resonance Imaging
  • Image Processing, Computer-Assisted
  • Humans
  • Artifacts
  • 5105 Medical and biological physics
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences
 

Citation

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Huang, B., Xiao, H., Liu, W., Zhang, Y., Wu, H., Wang, W., … Cai, J. (2021). MRI super-resolution via realistic downsampling with adversarial learning. Phys Med Biol, 66(20). https://doi.org/10.1088/1361-6560/ac232e
Huang, Bangyan, Haonan Xiao, Weiwei Liu, Yibao Zhang, Hao Wu, Weihu Wang, Yunhuan Yang, et al. “MRI super-resolution via realistic downsampling with adversarial learning.Phys Med Biol 66, no. 20 (October 5, 2021). https://doi.org/10.1088/1361-6560/ac232e.
Huang B, Xiao H, Liu W, Zhang Y, Wu H, Wang W, et al. MRI super-resolution via realistic downsampling with adversarial learning. Phys Med Biol. 2021 Oct 5;66(20).
Huang, Bangyan, et al. “MRI super-resolution via realistic downsampling with adversarial learning.Phys Med Biol, vol. 66, no. 20, Oct. 2021. Pubmed, doi:10.1088/1361-6560/ac232e.
Huang B, Xiao H, Liu W, Zhang Y, Wu H, Wang W, Yang Y, Miller GW, Li T, Cai J. MRI super-resolution via realistic downsampling with adversarial learning. Phys Med Biol. 2021 Oct 5;66(20).
Journal cover image

Published In

Phys Med Biol

DOI

EISSN

1361-6560

Publication Date

October 5, 2021

Volume

66

Issue

20

Location

England

Related Subject Headings

  • Signal-To-Noise Ratio
  • Nuclear Medicine & Medical Imaging
  • Magnetic Resonance Imaging
  • Image Processing, Computer-Assisted
  • Humans
  • Artifacts
  • 5105 Medical and biological physics
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences