AI Article Synopsis

  • The discrete shearlet transformation enhances edge detection in magnetic resonance imaging and is proposed as a superior sparsifying transform in low-rank plus sparse decomposition (L+S) problems.
  • Our study compares discrete shearlets with other transforms on dynamic contrast enhanced (DCE) scans and small bowel imaging, highlighting improvements in separating low-rank background from sparse components.
  • Results indicate that the discrete shearlet method yields more accurate motion estimates and consistent motility metrics between breath-holding and free-breathing scans, validating its efficacy for undersampled MR data analysis.

Article Abstract

The discrete shearlet transformation accurately represents the discontinuities and edges occurring in magnetic resonance imaging, providing an excellent option of a sparsifying transform. In the present paper, we examine the use of discrete shearlets over other sparsifying transforms in a low-rank plus sparse decomposition problem, denoted by L+S. The proposed algorithm is evaluated on simulated dynamic contrast enhanced (DCE) and small bowel data. For the small bowel, eight subjects were scanned; the sequence was run first on breath-holding and subsequently on free-breathing, without changing the anatomical position of the subject. The reconstruction performance of the proposed algorithm was evaluated against - FOCUSS. L+S decomposition, using discrete shearlets as sparsifying transforms, successfully separated the low-rank (background and periodic motion) from the sparse component (enhancement or bowel motility) for both DCE and small bowel data. Motion estimated from low-rank of DCE data is closer to ground truth deformations than motion estimated from and . Motility metrics derived from the component of free-breathing data were not significantly different from the ones from breath-holding data up to four-fold undersampling, indicating that bowel (rapid/random) motility is isolated in . Our work strongly supports the use of discrete shearlets as a sparsifying transform in a L+S decomposition for undersampled MR data.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8878450PMC
http://dx.doi.org/10.3390/jimaging8020029DOI Listing

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Article Synopsis
  • The discrete shearlet transformation enhances edge detection in magnetic resonance imaging and is proposed as a superior sparsifying transform in low-rank plus sparse decomposition (L+S) problems.
  • Our study compares discrete shearlets with other transforms on dynamic contrast enhanced (DCE) scans and small bowel imaging, highlighting improvements in separating low-rank background from sparse components.
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