Literature DB >> 29624729

KIKI-net: cross-domain convolutional neural networks for reconstructing undersampled magnetic resonance images.

Taejoon Eo1, Yohan Jun1, Taeseong Kim1, Jinseong Jang1, Ho-Joon Lee2, Dosik Hwang1.   

Abstract

PURPOSE: To demonstrate accurate MR image reconstruction from undersampled k-space data using cross-domain convolutional neural networks (CNNs)
METHODS: Cross-domain CNNs consist of 3 components: (1) a deep CNN operating on the k-space (KCNN), (2) a deep CNN operating on an image domain (ICNN), and (3) an interleaved data consistency operations. These components are alternately applied, and each CNN is trained to minimize the loss between the reconstructed and corresponding fully sampled k-spaces. The final reconstructed image is obtained by forward-propagating the undersampled k-space data through the entire network.
RESULTS: Performances of K-net (KCNN with inverse Fourier transform), I-net (ICNN with interleaved data consistency), and various combinations of the 2 different networks were tested. The test results indicated that K-net and I-net have different advantages/disadvantages in terms of tissue-structure restoration. Consequently, the combination of K-net and I-net is superior to single-domain CNNs. Three MR data sets, the T2 fluid-attenuated inversion recovery (T2 FLAIR) set from the Alzheimer's Disease Neuroimaging Initiative and 2 data sets acquired at our local institute (T2 FLAIR and T1 weighted), were used to evaluate the performance of 7 conventional reconstruction algorithms and the proposed cross-domain CNNs, which hereafter is referred to as KIKI-net. KIKI-net outperforms conventional algorithms with mean improvements of 2.29 dB in peak SNR and 0.031 in structure similarity.
CONCLUSION: KIKI-net exhibits superior performance over state-of-the-art conventional algorithms in terms of restoring tissue structures and removing aliasing artifacts. The results demonstrate that KIKI-net is applicable up to a reduction factor of 3 to 4 based on variable-density Cartesian undersampling.
© 2018 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  MRI acceleration; convolutional neural networks; cross-domain deep learning; image reconstruction; k-space completion

Mesh:

Year:  2018        PMID: 29624729     DOI: 10.1002/mrm.27201

Source DB:  PubMed          Journal:  Magn Reson Med        ISSN: 0740-3194            Impact factor:   4.668


  42 in total

1.  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

2.  Deep Generalization of Structured Low-Rank Algorithms (Deep-SLR).

Authors:  Aniket Pramanik; Hemant Kumar Aggarwal; Mathews Jacob
Journal:  IEEE Trans Med Imaging       Date:  2020-11-30       Impact factor: 10.048

3.  MoDL-MUSSELS: Model-Based Deep Learning for Multishot Sensitivity-Encoded Diffusion MRI.

Authors:  Hemant K Aggarwal; Merry P Mani; Mathews Jacob
Journal:  IEEE Trans Med Imaging       Date:  2019-10-09       Impact factor: 10.048

4.  Deep Magnetic Resonance Image Reconstruction: Inverse Problems Meet Neural Networks.

Authors:  Dong Liang; Jing Cheng; Ziwen Ke; Leslie Ying
Journal:  IEEE Signal Process Mag       Date:  2020-01-20       Impact factor: 12.551

5.  SANTIS: Sampling-Augmented Neural neTwork with Incoherent Structure for MR image reconstruction.

Authors:  Fang Liu; Alexey Samsonov; Lihua Chen; Richard Kijowski; Li Feng
Journal:  Magn Reson Med       Date:  2019-06-05       Impact factor: 4.668

6.  MANTIS: Model-Augmented Neural neTwork with Incoherent k-space Sampling for efficient MR parameter mapping.

Authors:  Fang Liu; Li Feng; Richard Kijowski
Journal:  Magn Reson Med       Date:  2019-03-12       Impact factor: 4.668

Review 7.  Magnetic Resonance Imaging technology-bridging the gap between noninvasive human imaging and optical microscopy.

Authors:  Jonathan R Polimeni; Lawrence L Wald
Journal:  Curr Opin Neurobiol       Date:  2018-05-11       Impact factor: 6.627

8.  Rapid dealiasing of undersampled, non-Cartesian cardiac perfusion images using U-net.

Authors:  Lexiaozi Fan; Daming Shen; Hassan Haji-Valizadeh; Nivedita K Naresh; James C Carr; Benjamin H Freed; Daniel C Lee; Daniel Kim
Journal:  NMR Biomed       Date:  2020-01-14       Impact factor: 4.044

Review 9.  Artificial Intelligence for MR Image Reconstruction: An Overview for Clinicians.

Authors:  Dana J Lin; Patricia M Johnson; Florian Knoll; Yvonne W Lui
Journal:  J Magn Reson Imaging       Date:  2020-02-12       Impact factor: 4.813

10.  Rapid reconstruction of highly undersampled, non-Cartesian real-time cine k-space data using a perceptual complex neural network (PCNN).

Authors:  Daming Shen; Sushobhan Ghosh; Hassan Haji-Valizadeh; Ashitha Pathrose; Florian Schiffers; Daniel C Lee; Benjamin H Freed; Michael Markl; Oliver S Cossairt; Aggelos K Katsaggelos; Daniel Kim
Journal:  NMR Biomed       Date:  2020-09-01       Impact factor: 4.044

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