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Regularized sensitivity encoding (SENSE) reconstruction using bregman iterations

  • Bo Liu
  • , Kevin King
  • , Michael Steckner
  • , Jun Xie
  • , Jinhua Sheng
  • , Leslie Ying
  • University of Wisconsin-Milwaukee
  • GE Healthcare United States
  • Toshiba Medical Research Institute USA, Inc.
  • Medical College of Wisconsin

Research output: Contribution to journalArticlepeer-review

88 Scopus citations

Abstract

In parallel imaging, the signal-to-noise ratio (SNR) of sensitivity encoding (SENSE) reconstruction is usually degraded by the ill-conditioning problem, which becomes especially serious at large acceleration factors. Existing regularization methods have been shown to alleviate the problem. However, they usually suffer from image artifacts at high acceleration factors due to the large data inconsistency resulting from heavy regularization. In this paper, we propose Bregman iteration for SENSE regularization. Unlike the existing regularization methods where the regularization function is fixed, the method adap-tively updates the regularization function using the Bregman distance at different iterations, such that the iteration gradually removes the aliasing artifacts and recovers fine structures before the noise finally comes back. With a discrepancy principle as the stopping criterion, our results demonstrate that the reconstructed image using Bregman iteration preserves both sharp edges lost in Tikhonov regularization and fines structures missed in total variation (TV) regularization, while reducing more noise and aliasing artifacts.

Original languageEnglish
Pages (from-to)145-152
Number of pages8
JournalMagnetic Resonance in Medicine
Volume61
Issue number1
DOIs
StatePublished - Jan 2009

Keywords

  • Bregman iteration
  • Compressed sensing
  • Parallel imaging
  • SENSE
  • Total variation regularization

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