Literature DB >> 33063400

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

Li Feng1, Dan Ma2, Fang Liu3.   

Abstract

Quantitative mapping of MR tissue parameters such as the spin-lattice relaxation time (T1 ), the spin-spin relaxation time (T2 ), and the spin-lattice relaxation in the rotating frame (T1ρ ), referred to as MR relaxometry in general, has demonstrated improved assessment in a wide range of clinical applications. Compared with conventional contrast-weighted (eg T1 -, T2 -, or T1ρ -weighted) MRI, MR relaxometry provides increased sensitivity to pathologies and delivers important information that can be more specific to tissue composition and microenvironment. The rise of deep learning in the past several years has been revolutionizing many aspects of MRI research, including image reconstruction, image analysis, and disease diagnosis and prognosis. Although deep learning has also shown great potential for MR relaxometry and quantitative MRI in general, this research direction has been much less explored to date. The goal of this paper is to discuss the applications of deep learning for rapid MR relaxometry and to review emerging deep-learning-based techniques that can be applied to improve MR relaxometry in terms of imaging speed, image quality, and quantification robustness. The paper is comprised of an introduction and four more sections. Section 2 describes a summary of the imaging models of quantitative MR relaxometry. In Section 3, we review existing "classical" methods for accelerating MR relaxometry, including state-of-the-art spatiotemporal acceleration techniques, model-based reconstruction methods, and efficient parameter generation approaches. Section 4 then presents how deep learning can be used to improve MR relaxometry and how it is linked to conventional techniques. The final section concludes the review by discussing the promise and existing challenges of deep learning for rapid MR relaxometry and potential solutions to address these challenges.
© 2020 John Wiley & Sons, Ltd.

Entities:  

Keywords:  MR relaxometry; artificial intelligence; deep learning; image reconstruction; parameter mapping; quantitative MRI

Mesh:

Year:  2020        PMID: 33063400      PMCID: PMC8046845          DOI: 10.1002/nbm.4416

Source DB:  PubMed          Journal:  NMR Biomed        ISSN: 0952-3480            Impact factor:   4.478


  157 in total

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2.  MR fingerprinting Deep RecOnstruction NEtwork (DRONE).

Authors:  Ouri Cohen; Bo Zhu; Matthew S Rosen
Journal:  Magn Reson Med       Date:  2018-04-06       Impact factor: 4.668

3.  Simultaneous acquisition of spatial harmonics (SMASH): fast imaging with radiofrequency coil arrays.

Authors:  D K Sodickson; W J Manning
Journal:  Magn Reson Med       Date:  1997-10       Impact factor: 4.668

4.  High-performance rapid MR parameter mapping using model-based deep adversarial learning.

Authors:  Fang Liu; Richard Kijowski; Li Feng; Georges El Fakhri
Journal:  Magn Reson Imaging       Date:  2020-09-25       Impact factor: 2.546

5.  Cardiac cine magnetic resonance fingerprinting for combined ejection fraction, T1 and T2 quantification.

Authors:  Jesse I Hamilton; Yun Jiang; Brendan Eck; Mark Griswold; Nicole Seiberlich
Journal:  NMR Biomed       Date:  2020-06-05       Impact factor: 4.044

6.  Detection of hippocampal pathology in intractable partial epilepsy: increased sensitivity with quantitative magnetic resonance T2 relaxometry.

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Journal:  Neurology       Date:  1993-09       Impact factor: 9.910

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

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Journal:  Magn Reson Med       Date:  2017-11-08       Impact factor: 4.668

8.  Magnetic resonance relaxometry in Parkinson's disease.

Authors:  F Mondino; P Filippi; U Magliola; S Duca
Journal:  Neurol Sci       Date:  2002-09       Impact factor: 3.307

9.  Golden-angle radial sparse parallel MRI: combination of compressed sensing, parallel imaging, and golden-angle radial sampling for fast and flexible dynamic volumetric MRI.

Authors:  Li Feng; Robert Grimm; Kai Tobias Block; Hersh Chandarana; Sungheon Kim; Jian Xu; Leon Axel; Daniel K Sodickson; Ricardo Otazo
Journal:  Magn Reson Med       Date:  2013-10-18       Impact factor: 4.668

10.  Normal-appearing brain t1 relaxation time predicts disability in early primary progressive multiple sclerosis.

Authors:  Francesco Manfredonia; Olga Ciccarelli; Zhaleh Khaleeli; Daniel J Tozer; Jaume Sastre-Garriga; David H Miller; Alan J Thompson
Journal:  Arch Neurol       Date:  2007-03
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  8 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

2.  Optimization of spin-lock times in T mapping of knee cartilage: Cramér-Rao bounds versus matched sampling-fitting.

Authors:  Marcelo V W Zibetti; Azadeh Sharafi; Ravinder R Regatte
Journal:  Magn Reson Med       Date:  2021-11-04       Impact factor: 4.668

3.  Multiparametric mapping in the brain from conventional contrast-weighted images using deep learning.

Authors:  Shihan Qiu; Yuhua Chen; Sen Ma; Zhaoyang Fan; Franklin G Moser; Marcel M Maya; Anthony G Christodoulou; Yibin Xie; Debiao Li
Journal:  Magn Reson Med       Date:  2021-08-10       Impact factor: 4.668

4.  Free-breathing simultaneous T 1 , T 2 , and T 2 quantification in the myocardium.

Authors:  Ingo Hermann; Peter Kellman; Omer B Demirel; Mehmet Akçakaya; Lothar R Schad; Sebastian Weingärtner
Journal:  Magn Reson Med       Date:  2021-03-29       Impact factor: 4.668

5.  Fast calculation software for modified Look-Locker inversion recovery (MOLLI) T1 mapping.

Authors:  Yoon-Chul Kim; Khu Rai Kim; Hyelee Lee; Yeon Hyeon Choe
Journal:  BMC Med Imaging       Date:  2021-02-12       Impact factor: 1.930

6.  Acceleration of Magnetic Resonance Fingerprinting Reconstruction Using Denoising and Self-Attention Pyramidal Convolutional Neural Network.

Authors:  Jia-Sheng Hong; Ingo Hermann; Frank Gerrit Zöllner; Lothar R Schad; Shuu-Jiun Wang; Wei-Kai Lee; Yung-Lin Chen; Yu Chang; Yu-Te Wu
Journal:  Sensors (Basel)       Date:  2022-02-07       Impact factor: 3.576

7.  Embedded Quantitative MRI T Mapping Using Non-Linear Primal-Dual Proximal Splitting.

Authors:  Matti Hanhela; Antti Paajanen; Mikko J Nissi; Ville Kolehmainen
Journal:  J Imaging       Date:  2022-05-31

Review 8.  Artificial intelligence in cardiac magnetic resonance fingerprinting.

Authors:  Carlos Velasco; Thomas J Fletcher; René M Botnar; Claudia Prieto
Journal:  Front Cardiovasc Med       Date:  2022-09-20
  8 in total

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