Literature DB >> 29870361

DAGAN: Deep De-Aliasing Generative Adversarial Networks for Fast Compressed Sensing MRI Reconstruction.

Guang Yang, Simiao Yu, Hao Dong, Greg Slabaugh, Pier Luigi Dragotti, Xujiong Ye, Fangde Liu, Simon Arridge, Jennifer Keegan, Yike Guo, David Firmin, Jennifer Keegan, Greg Slabaugh, Simon Arridge, Xujiong Ye, Yike Guo, Simiao Yu, Fangde Liu, David Firmin, Pier Luigi Dragotti, Guang Yang, Hao Dong.   

Abstract

Compressed sensing magnetic resonance imaging (CS-MRI) enables fast acquisition, which is highly desirable for numerous clinical applications. This can not only reduce the scanning cost and ease patient burden, but also potentially reduce motion artefacts and the effect of contrast washout, thus yielding better image quality. Different from parallel imaging-based fast MRI, which utilizes multiple coils to simultaneously receive MR signals, CS-MRI breaks the Nyquist-Shannon sampling barrier to reconstruct MRI images with much less required raw data. This paper provides a deep learning-based strategy for reconstruction of CS-MRI, and bridges a substantial gap between conventional non-learning methods working only on data from a single image, and prior knowledge from large training data sets. In particular, a novel conditional Generative Adversarial Networks-based model (DAGAN)-based model is proposed to reconstruct CS-MRI. In our DAGAN architecture, we have designed a refinement learning method to stabilize our U-Net based generator, which provides an end-to-end network to reduce aliasing artefacts. To better preserve texture and edges in the reconstruction, we have coupled the adversarial loss with an innovative content loss. In addition, we incorporate frequency-domain information to enforce similarity in both the image and frequency domains. We have performed comprehensive comparison studies with both conventional CS-MRI reconstruction methods and newly investigated deep learning approaches. Compared with these methods, our DAGAN method provides superior reconstruction with preserved perceptual image details. Furthermore, each image is reconstructed in about 5 ms, which is suitable for real-time processing.

Entities:  

Mesh:

Year:  2018        PMID: 29870361     DOI: 10.1109/TMI.2017.2785879

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  90 in total

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2.  Deep Leaning Based Multi-Modal Fusion for Fast MR Reconstruction.

Authors:  Lei Xiang; Yong Chen; Weitang Chang; Yiqiang Zhan; Weili Lin; Qian Wang; Dinggang Shen
Journal:  IEEE Trans Biomed Eng       Date:  2018-11-29       Impact factor: 4.538

3.  Self-supervised learning of physics-guided reconstruction neural networks without fully sampled reference data.

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4.  Content-aware compressive magnetic resonance image reconstruction.

Authors:  Daniel S Weller; Michael Salerno; Craig H Meyer
Journal:  Magn Reson Imaging       Date:  2018-06-20       Impact factor: 2.546

5.  A Learned Reconstruction Network for SPECT Imaging.

Authors:  Wenyi Shao; Martin G Pomper; Yong Du
Journal:  IEEE Trans Radiat Plasma Med Sci       Date:  2020-05-12

6.  Deep residual network for off-resonance artifact correction with application to pediatric body MRA with 3D cones.

Authors:  David Y Zeng; Jamil Shaikh; Signy Holmes; Ryan L Brunsing; John M Pauly; Dwight G Nishimura; Shreyas S Vasanawala; Joseph Y Cheng
Journal:  Magn Reson Med       Date:  2019-05-22       Impact factor: 4.668

7.  Improved Low-Count Quantitative PET Reconstruction With an Iterative Neural Network.

Authors:  Hongki Lim; Il Yong Chun; Yuni K Dewaraja; Jeffrey A Fessler
Journal:  IEEE Trans Med Imaging       Date:  2020-10-28       Impact factor: 10.048

8.  A multi-scale residual network for accelerated radial MR parameter mapping.

Authors:  Zhiyang Fu; Sagar Mandava; Mahesh B Keerthivasan; Zhitao Li; Kevin Johnson; Diego R Martin; Maria I Altbach; Ali Bilgin
Journal:  Magn Reson Imaging       Date:  2020-09-01       Impact factor: 2.546

9.  Efficient directionality-driven dictionary learning for compressive sensing magnetic resonance imaging reconstruction.

Authors:  Anupama Arun; Thomas James Thomas; J Sheeba Rani; R K Sai Subrahmanyam Gorthi
Journal:  J Med Imaging (Bellingham)       Date:  2020-01-24

10.  Wasserstein GANs for MR Imaging: From Paired to Unpaired Training.

Authors:  Ke Lei; Morteza Mardani; John M Pauly; Shreyas S Vasanawala
Journal:  IEEE Trans Med Imaging       Date:  2020-12-29       Impact factor: 10.048

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