Learning-based compressive MRI

Date

2018

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Source Title

IEEE Transactions on Medical Imaging

Print ISSN

0278-0062

Electronic ISSN

1558-254X

Publisher

Institute of Electrical and Electronics Engineers

Volume

37

Issue

6

Pages

1394 - 1406

Language

English

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Abstract

In the area of magnetic resonance imaging (MRI), an extensive range of non-linear reconstruction algorithms has been proposed which can be used with general Fourier subsampling patterns. However, the design of these subsampling patterns has typically been considered in isolation from the reconstruction rule and the anatomy under consideration. In this paper, we propose a learning-based framework for optimizing MRI subsampling patterns for a specific reconstruction rule and anatomy, considering both the noiseless and noisy settings. Our learning algorithm has access to a representative set of training signals, and searches for a sampling pattern that performs well on average for the signals in this set. We present a novel parameter-free greedy mask selection method and show it to be effective for a variety of reconstruction rules and performance metrics. Moreover, we also support our numerical findings by providing a rigorous justification of our framework via statistical learning theory.

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Published Version (Please cite this version)