Literature DB >> 32697891

Accelerating cardiac cine MRI using a deep learning-based ESPIRiT reconstruction.

Christopher M Sandino1, Peng Lai2, Shreyas S Vasanawala3, Joseph Y Cheng3.   

Abstract

PURPOSE: To propose a novel combined parallel imaging and deep learning-based reconstruction framework for robust reconstruction of highly accelerated 2D cardiac cine MRI data.
METHODS: We propose DL-ESPIRiT, an unrolled neural network architecture that utilizes an extended coil sensitivity model to address SENSE-related field-of-view (FOV) limitations in previously proposed deep learning-based reconstruction frameworks. Additionally, we propose a novel neural network design based on (2+1)D spatiotemporal convolutions to produce more accurate dynamic MRI reconstructions than conventional 3D convolutions. The network is trained on fully sampled 2D cardiac cine datasets collected from 11 healthy volunteers with IRB approval. DL-ESPIRiT is compared against a state-of-the-art parallel imaging and compressed sensing method known as l 1 -ESPIRiT. The reconstruction accuracy of both methods is evaluated on retrospectively undersampled datasets (R = 12) with respect to standard image quality metrics as well as automatic deep learning-based segmentations of left ventricular volumes. Feasibility of DL-ESPIRiT is demonstrated on two prospectively undersampled datasets acquired in a single heartbeat per slice.
RESULTS: The (2+1)D DL-ESPIRiT method produces higher fidelity image reconstructions when compared to l 1 -ESPIRiT reconstructions with respect to standard image quality metrics (P < .001). As a result of improved image quality, segmentations made from (2+1)D DL-ESPIRiT images are also more accurate than segmentations from l 1 -ESPIRiT images.
CONCLUSIONS: DL-ESPIRiT synergistically combines a robust parallel imaging model and deep learning-based priors to produce high-fidelity reconstructions of retrospectively undersampled 2D cardiac cine data acquired with reduced FOV. Although a proof-of-concept is shown, further experiments are necessary to determine the efficacy of DL-ESPIRiT in prospectively undersampled data.
© 2020 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  cardiac cine; compressed sensing; deep learning

Mesh:

Year:  2020        PMID: 32697891      PMCID: PMC7722220          DOI: 10.1002/mrm.28420

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


  32 in total

1.  Coil compression for accelerated imaging with Cartesian sampling.

Authors:  Tao Zhang; John M Pauly; Shreyas S Vasanawala; Michael Lustig
Journal:  Magn Reson Med       Date:  2012-04-09       Impact factor: 4.668

2.  The SENSE ghost: field-of-view restrictions for SENSE imaging.

Authors:  James W Goldfarb
Journal:  J Magn Reson Imaging       Date:  2004-12       Impact factor: 4.813

3.  Dynamic autocalibrated parallel imaging using temporal GRAPPA (TGRAPPA).

Authors:  Felix A Breuer; Peter Kellman; Mark A Griswold; Peter M Jakob
Journal:  Magn Reson Med       Date:  2005-04       Impact factor: 4.668

4.  Effect of temporal resolution on the estimation of left ventricular function by cardiac MR imaging.

Authors:  Yusuke Inoue; Yukihiro Nomura; Takashi Nakaoka; Makoto Watanabe; Shigeru Kiryu; Toshiyuki Okubo; Kuni Ohtomo
Journal:  Magn Reson Imaging       Date:  2005-06       Impact factor: 2.546

5.  Convolutional Recurrent Neural Networks for Dynamic MR Image Reconstruction.

Authors:  Chen Qin; Jo Schlemper; Jose Caballero; Anthony N Price; Joseph V Hajnal; Daniel Rueckert
Journal:  IEEE Trans Med Imaging       Date:  2018-08-06       Impact factor: 10.048

6.  Scan-specific robust artificial-neural-networks for k-space interpolation (RAKI) reconstruction: Database-free deep learning for fast imaging.

Authors:  Mehmet Akçakaya; Steen Moeller; Sebastian Weingärtner; Kâmil Uğurbil
Journal:  Magn Reson Med       Date:  2018-09-18       Impact factor: 4.668

7.  Learning a variational network for reconstruction of accelerated MRI data.

Authors:  Kerstin Hammernik; Teresa Klatzer; Erich Kobler; Michael P Recht; Daniel K Sodickson; Thomas Pock; Florian Knoll
Journal:  Magn Reson Med       Date:  2017-11-08       Impact factor: 4.668

8.  Compressed Sensing: From Research to Clinical Practice with Deep Neural Networks.

Authors:  Christopher M Sandino; Joseph Y Cheng; Feiyu Chen; Morteza Mardani; John M Pauly; Shreyas S Vasanawala
Journal:  IEEE Signal Process Mag       Date:  2020-01-17       Impact factor: 12.551

9.  Deep Generative Adversarial Neural Networks for Compressive Sensing MRI.

Authors:  Morteza Mardani; Enhao Gong; Joseph Y Cheng; Shreyas S Vasanawala; Greg Zaharchuk; Lei Xing; John M Pauly
Journal:  IEEE Trans Med Imaging       Date:  2018-07-23       Impact factor: 10.048

10.  High spatial and temporal resolution retrospective cine cardiovascular magnetic resonance from shortened free breathing real-time acquisitions.

Authors:  Hui Xue; Peter Kellman; Gina Larocca; Andrew E Arai; Michael S Hansen
Journal:  J Cardiovasc Magn Reson       Date:  2013-11-14       Impact factor: 5.364

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  15 in total

Review 1.  Cardiac MR: From Theory to Practice.

Authors:  Tevfik F Ismail; Wendy Strugnell; Chiara Coletti; Maša Božić-Iven; Sebastian Weingärtner; Kerstin Hammernik; Teresa Correia; Thomas Küstner
Journal:  Front Cardiovasc Med       Date:  2022-03-03

Review 2.  Compact pediatric cardiac magnetic resonance imaging protocols.

Authors:  Evan J Zucker
Journal:  Pediatr Radiol       Date:  2022-07-12

3.  Real-time MRI motion estimation through an unsupervised k-space-driven deformable registration network (KS-RegNet).

Authors:  Hua-Chieh Shao; Tian Li; Michael J Dohopolski; Jing Wang; Jing Cai; Jun Tan; Kai Wang; You Zhang
Journal:  Phys Med Biol       Date:  2022-06-29       Impact factor: 4.174

4.  Data-Consistent non-Cartesian deep subspace learning for efficient dynamic MR image reconstruction.

Authors:  Zihao Chen; Yuhua Chen; Yibin Xie; Debiao Li; Anthony G Christodoulou
Journal:  Proc IEEE Int Symp Biomed Imaging       Date:  2022-04-26

5.  Deep J-Sense: Accelerated MRI Reconstruction via Unrolled Alternating Optimization.

Authors:  Marius Arvinte; Sriram Vishwanath; Ahmed H Tewfik; Jonathan I Tamir
Journal:  Med Image Comput Comput Assist Interv       Date:  2021-09-21

6.  Analysis of deep complex-valued convolutional neural networks for MRI reconstruction and phase-focused applications.

Authors:  Elizabeth Cole; Joseph Cheng; John Pauly; Shreyas Vasanawala
Journal:  Magn Reson Med       Date:  2021-03-16       Impact factor: 3.737

7.  Optimization of through-time radial GRAPPA with coil compression and weight sharing.

Authors:  James Ahad; Evan Cummings; Dominique Franson; Jesse Hamilton; Nicole Seiberlich
Journal:  Magn Reson Med       Date:  2022-04-15       Impact factor: 3.737

Review 8.  Prospective Deployment of Deep Learning in MRI: A Framework for Important Considerations, Challenges, and Recommendations for Best Practices.

Authors:  Akshay S Chaudhari; Christopher M Sandino; Elizabeth K Cole; David B Larson; Garry E Gold; Shreyas S Vasanawala; Matthew P Lungren; Brian A Hargreaves; Curtis P Langlotz
Journal:  J Magn Reson Imaging       Date:  2020-08-24       Impact factor: 5.119

Review 9.  Rapid MR relaxometry using deep learning: An overview of current techniques and emerging trends.

Authors:  Li Feng; Dan Ma; Fang Liu
Journal:  NMR Biomed       Date:  2020-10-15       Impact factor: 4.478

10.  Free-breathing Accelerated Cardiac MRI Using Deep Learning: Validation in Children and Young Adults.

Authors:  Evan J Zucker; Christopher M Sandino; Aya Kino; Peng Lai; Shreyas S Vasanawala
Journal:  Radiology       Date:  2021-06-15       Impact factor: 29.146

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