Fast Data-Driven Learning of MRI Sampling Pattern for Large Scale Problems
Marcelo V. W. Zibetti, Gabor T. Herman, Ravinder R. Regatte

TL;DR
This paper introduces BASS, a fast data-driven method for learning MRI sampling patterns that significantly reduces scan time and improves reconstruction quality, enabling more efficient MRI imaging for large datasets.
Contribution
BASS is a novel, rapid optimization approach that learns effective sampling patterns for MRI, outperforming existing greedy methods in speed and quality.
Findings
BASS is 100 times faster than greedy approaches.
Reconstruction quality improved by up to 45%.
Scan time can be halved without quality loss.
Abstract
Purpose: A fast data-driven optimization approach, named bias-accelerated subset selection (BASS), is proposed for learning efficacious sampling patterns (SPs) with the purpose of reducing scan time in large-dimensional parallel MRI. Methods: BASS is applicable when Cartesian fully-sampled k-space data of specific anatomy is available for training and the reconstruction method is specified, learning which k-space points are more relevant for the specific anatomy and reconstruction in recovering the non-sampled points. BASS was tested with four reconstruction methods for parallel MRI based on low-rankness and sparsity that allow a free choice of the SP. Two datasets were tested, one of the brain images for high-resolution imaging and another of knee images for quantitative mapping of the cartilage. Results: BASS, with its low computational cost and fast convergence, obtained SPs 100…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced MRI Techniques and Applications · Image and Signal Denoising Methods
