CVMay 1, 2017

Shearlet-based compressed sensing for fast 3D cardiac MR imaging using iterative reweighting

arXiv:1705.00463v114 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for clinical cardiac MRI, aiming to reduce scan times while maintaining image quality.

The paper tackles the problem of long acquisition times in high-resolution 3D cardiac MR imaging by proposing a compressed sensing method using shearlets and iterative reweighting, resulting in lower relative errors and higher structural similarity, especially at high undersampling factors.

High-resolution three-dimensional (3D) cardiovascular magnetic resonance (CMR) is a valuable medical imaging technique, but its widespread application in clinical practice is hampered by long acquisition times. Here we present a novel compressed sensing (CS) reconstruction approach using shearlets as a sparsifying transform allowing for fast 3D CMR (3DShearCS). Shearlets are mathematically optimal for a simplified model of natural images and have been proven to be more efficient than classical systems such as wavelets. Data is acquired with a 3D Radial Phase Encoding (RPE) trajectory and an iterative reweighting scheme is used during image reconstruction to ensure fast convergence and high image quality. In our in-vivo cardiac MRI experiments we show that the proposed method 3DShearCS has lower relative errors and higher structural similarity compared to the other reconstruction techniques especially for high undersampling factors, i.e. short scan times. In this paper, we further show that 3DShearCS provides improved depiction of cardiac anatomy (measured by assessing the sharpness of coronary arteries) and two clinical experts qualitatively analyzed the image quality.

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