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

clinical translation compressed sensing deep learning

Journal

IEEE signal processing magazine
ISSN: 1053-5888
Titre abrégé: IEEE Signal Process Mag
Pays: United States
ID NLM: 101212681

Informations de publication

Date de publication:
Jan 2020
Historique:
entrez: 16 11 2020
pubmed: 17 11 2020
medline: 17 11 2020
Statut: ppublish

Résumé

Compressed sensing (CS) reconstruction methods leverage sparse structure in underlying signals to recover high-resolution images from highly undersampled measurements. When applied to magnetic resonance imaging (MRI), CS has the potential to dramatically shorten MRI scan times, increase diagnostic value, and improve overall patient experience. However, CS has several shortcomings which limit its clinical translation such as: 1) artifacts arising from inaccurate sparse modelling assumptions, 2) extensive parameter tuning required for each clinical application, and 3) clinically infeasible reconstruction times. Recently, CS has been extended to incorporate deep neural networks as a way of learning complex image priors from historical exam data. Commonly referred to as unrolled neural networks, these techniques have proven to be a compelling and practical approach to address the challenges of sparse CS. In this tutorial, we will review the classical compressed sensing formulation and outline steps needed to transform this formulation into a deep learning-based reconstruction framework. Supplementary open source code in Python will be used to demonstrate this approach with open databases. Further, we will discuss considerations in applying unrolled neural networks in the clinical setting.

Identifiants

pubmed: 33192036
doi: 10.1109/MSP.2019.2950433
pmc: PMC7664163
mid: NIHMS1551804
doi:

Types de publication

Journal Article

Langues

eng

Pagination

111-127

Subventions

Organisme : NIBIB NIH HHS
ID : R01 EB009690
Pays : United States
Organisme : NIBIB NIH HHS
ID : R01 EB026136
Pays : United States
Organisme : NIBIB NIH HHS
ID : T32 EB009653
Pays : United States

Références

Magn Reson Med. 1999 Nov;42(5):952-62
pubmed: 10542355
Nature. 2018 Mar 21;555(7697):487-492
pubmed: 29565357
Magn Reson Med. 2019 Jan;81(1):670-685
pubmed: 30084505
J Magn Reson Imaging. 2017 Dec;46(6):1829-1838
pubmed: 28301075
Radiology. 2018 Nov;289(2):366-373
pubmed: 30040039
Magn Reson Med. 2014 Mar;71(3):990-1001
pubmed: 23649942
J Magn Reson Imaging. 2015 Feb;41(2):460-73
pubmed: 24375859
Radiology. 2010 Aug;256(2):607-16
pubmed: 20529991
Magn Reson Med. 2007 Jun;57(6):1086-98
pubmed: 17534903
IEEE Trans Image Process. 2012 Aug;21(8):3659-72
pubmed: 22531764
J Magn Reson Imaging. 2014 Jul;40(1):13-25
pubmed: 24127123
Magn Reson Med. 2018 Jun;79(6):3055-3071
pubmed: 29115689
Magn Reson Med. 2019 Jan;81(1):116-128
pubmed: 29774597
Magn Reson Med. 2007 Dec;58(6):1182-95
pubmed: 17969013
IEEE Trans Med Imaging. 2011 May;30(5):1042-54
pubmed: 21292593
IEEE Trans Med Imaging. 2019 Jan;38(1):167-179
pubmed: 30040634
IEEE Trans Med Imaging. 2012 Jun;31(6):1250-62
pubmed: 22345529
IEEE Trans Med Imaging. 2018 Feb;37(2):491-503
pubmed: 29035212
Magn Reson Med. 2007 Jun;57(6):1196-202
pubmed: 17534910
IEEE Trans Med Imaging. 2019 Feb;38(2):394-405
pubmed: 30106719
Magn Reson Med. 2016 Feb;75(2):775-88
pubmed: 25809847
J Magn Reson Imaging. 2016 Jun;43(6):1355-68
pubmed: 26646061

Auteurs

Christopher M Sandino (CM)

Department of Electrical Engineering, Stanford University, Stanford, CA, 94305 USA.

Joseph Y Cheng (JY)

Stanford University.

Feiyu Chen (F)

Stanford University.

Morteza Mardani (M)

Stanford University.

John M Pauly (JM)

Stanford University.

Shreyas S Vasanawala (SS)

Stanford University.

Classifications MeSH