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Department of Electrical Engineering and Computer Science
Image Processing Laboratory
1. Journal Articles
Time-Dependent Deep Image Prior for Dynamic MRI
Yoo, Jaejun
;
Jin, Kyong Hwan
;
Gupta, Harshit
;
Yerly, Jérôme
;
Stuber, Matthias
;
Unser, Michael
Department of Electrical Engineering and Computer Science
Image Processing Laboratory
1. Journal Articles
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Title
Time-Dependent Deep Image Prior for Dynamic MRI
DGIST Authors
Yoo, Jaejun
;
Jin, Kyong Hwan
;
Gupta, Harshit
;
Yerly, Jérôme
;
Stuber, Matthias
;
Unser, Michael
Issued Date
2021-12
Citation
Yoo, Jaejun. (2021-12). Time-Dependent Deep Image Prior for Dynamic MRI. doi: 10.1109/TMI.2021.3084288
Type
Article
Author Keywords
Electronics packaging
;
Heuristic algorithms
;
Image reconstruction
;
Imaging
;
Magnetic resonance imaging
;
Manifolds
;
Unsupervised learning
;
unsupervised learning
;
accelerated MRI
Keywords
Convolutional neural networks
;
Data acquisition
;
Deep learning
;
Learning algorithms
;
Dynamic magnetic resonance imaging (MRI)
;
High spatial resolution
;
Learning-based algorithms
;
Learning-based methods
;
Low-dimensional manifolds
;
Rapid data acquisition
;
Reconstruction networks
;
State-of-the-art methods
;
Magnetic resonance imaging
ISSN
0278-0062
Abstract
We propose a novel unsupervised deep-learning-based algorithm for dynamic magnetic resonance imaging (MRI) reconstruction. Dynamic MRI requires rapid data acquisition for the study of moving organs such as the heart. We introduce a generalized version of the deep-image-prior approach, which optimizes the weights of a reconstruction network to fit a sequence of sparsely acquired dynamic MRI measurements. Our method needs neither prior training nor additional data. In particular, for cardiac images, it does not require the marking of heartbeats or the reordering of spokes. The key ingredients of our method are threefold: 1) a fixed low-dimensional manifold that encodes the temporal variations of images; 2) a network that maps the manifold into a more expressive latent space; and 3) a convolutional neural network that generates a dynamic series of MRI images from the latent variables and that favors their consistency with the measurements in k-space. Our method outperforms the state-of-the-art methods quantitatively and qualitatively in both retrospective and real fetal cardiac datasets. To the best of our knowledge, this is the first unsupervised deep-learning-based method that can reconstruct the continuous variation of dynamic MRI sequences with high spatial resolution. © 1982-2012 IEEE.
URI
http://hdl.handle.net/20.500.11750/15955
DOI
10.1109/TMI.2021.3084288
Publisher
Institute of Electrical and Electronics Engineers Inc.
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