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2018 | OriginalPaper | Chapter

Adversarial and Perceptual Refinement for Compressed Sensing MRI Reconstruction

Authors : Maximilian Seitzer, Guang Yang, Jo Schlemper, Ozan Oktay, Tobias Würfl, Vincent Christlein, Tom Wong, Raad Mohiaddin, David Firmin, Jennifer Keegan, Daniel Rueckert, Andreas Maier

Published in: Medical Image Computing and Computer Assisted Intervention – MICCAI 2018

Publisher: Springer International Publishing

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Abstract

Deep learning approaches have shown promising performance for compressed sensing-based Magnetic Resonance Imaging. While deep neural networks trained with mean squared error (MSE) loss functions can achieve high peak signal to noise ratio, the reconstructed images are often blurry and lack sharp details, especially for higher undersampling rates. Recently, adversarial and perceptual loss functions have been shown to achieve more visually appealing results. However, it remains an open question how to (1) optimally combine these loss functions with the MSE loss function and (2) evaluate such a perceptual enhancement. In this work, we propose a hybrid method, in which a visual refinement component is learnt on top of an MSE loss-based reconstruction network. In addition, we introduce a semantic interpretability score, measuring the visibility of the region of interest in both ground truth and reconstructed images, which allows us to objectively quantify the usefulness of the image quality for image post-processing and analysis. Applied on a large cardiac MRI dataset simulated with 8-fold undersampling, we demonstrate significant improvements (\(p<0.01\)) over the state-of-the-art in both a human observer study and the semantic interpretability score.

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Footnotes
3
Significance determined by a two-sided paired Wilcoxon signed-rank test at \(p < 0.01\).
 
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Metadata
Title
Adversarial and Perceptual Refinement for Compressed Sensing MRI Reconstruction
Authors
Maximilian Seitzer
Guang Yang
Jo Schlemper
Ozan Oktay
Tobias Würfl
Vincent Christlein
Tom Wong
Raad Mohiaddin
David Firmin
Jennifer Keegan
Daniel Rueckert
Andreas Maier
Copyright Year
2018
DOI
https://doi.org/10.1007/978-3-030-00928-1_27

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