Scan Specific Artifact Reduction in K-space (SPARK) Neural Networks Synergize with Physics-based Reconstruction to Accelerate MRI
Yamin Arefeen (1), Onur Beker (2), Jaejin Cho (3), Heng Yu (4), Elfar, Adalsteinsson (1, 5, 6), Berkin Bilgic (3, 5, 7) ((1), Massachusetts Institute of Technology, (2) \'Ecole Polytechnique F\'ed\'erale, de Lausanne, (3) Athinoula A. Martinos Center for Biomedical Imaging (4)

TL;DR
SPARK is a scan-specific neural network model that estimates and corrects k-space errors in MRI, significantly improving reconstruction quality and robustness across various techniques and acquisition methods.
Contribution
The paper introduces SPARK, a novel scan-specific neural network that enhances MRI reconstruction by correcting k-space errors and synergizes with existing physics-based methods.
Findings
SPARK reduces RMSE by 1.5x to 2x on GRAPPA.
Achieves up to 20% RMSE improvement with advanced techniques.
Improves image quality without fully sampled ACS regions.
Abstract
Purpose: To develop a scan-specific model that estimates and corrects k-space errors made when reconstructing accelerated Magnetic Resonance Imaging (MRI) data. Methods: Scan-Specific Artifact Reduction in k-space (SPARK) trains a convolutional-neural-network to estimate and correct k-space errors made by an input reconstruction technique by back-propagating from the mean-squared-error loss between an auto-calibration signal (ACS) and the input technique's reconstructed ACS. First, SPARK is applied to GRAPPA and demonstrates improved robustness over other scan-specific models, such as RAKI and residual-RAKI. Subsequent experiments demonstrate that SPARK synergizes with residual-RAKI to improve reconstruction performance. SPARK also improves reconstruction quality when applied to advanced acquisition and reconstruction techniques like 2D virtual coil (VC-) GRAPPA, 2D LORAKS, 3D GRAPPA…
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