On learning adaptive acquisition policies for undersampled multi-coil MRI reconstruction

Open Access
Authors
  • T. Bakker
  • M. Muckley
  • A. Romero-Soriano
  • M. Drozdzal
  • L. Pineda
Publication date 2022
Journal Proceedings of Machine Learning Research
Event Medical Imaging with Deep Learning 2022
Volume | Issue number 172
Pages (from-to) 63-85
Number of pages 23
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Most current approaches to undersampled multi-coil MRI reconstruction focus on learning the reconstruction model for a fixed, equidistant acquisition trajectory. In this paper, we study the problem of joint learning of the reconstruction model together with acquisition policies. To this end, we extend the End-to-End Variational Network with learnable acquisition policies that can adapt to different data points. We validate our model on a coil-compressed version of the large scale undersampled multi-coil \fastMRI dataset using two undersampling factors, 4x and 8x. Our experiments show on-par performance with the learnable non-adaptive and handcrafted equidistant strategies at 4x, and an observed improvement of more than 2% in SSIM at 8x acceleration, suggesting that potentially-adaptive k-space acquisition trajectories can improve reconstructed image quality for larger acceleration factors. However, and perhaps surprisingly, our best performing policies learn to be explicitly non-adaptive.
Document type Article
Note Proceedings of The 5th International Conference on Medical Imaging with Deep Learning, 6-8 July 2022, Zurich, Switzerland
Language English
Published at https://proceedings.mlr.press/v172/bakker22a.html
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