Frequency-modulated SSFP with radial sampling and subspace reconstruction: A time-efficient alternative to phase-cycled bSSFP
Volkert Roeloffs, Sebastian Rosenzweig, H. Christian M. Holme, Martin, Uecker, Jens Frahm

TL;DR
This paper introduces a fast, subspace-based fmSSFP MRI method using radial sampling that effectively removes banding artifacts without phase cycling, enabling high-quality imaging and spectral separation.
Contribution
The study presents a novel subspace reconstruction approach combined with radial sampling for fmSSFP MRI, eliminating the need for phase cycling and improving scan efficiency.
Findings
High-SNR images without banding artifacts achieved
Turn-based sampling reduces aliasing more effectively than Golden-Angle
Water/fat separation demonstrated through spectral reweighting
Abstract
Purpose: A novel subspace-based reconstruction method for frequency-modulated balanced steady-state free precession (fmSSFP) MRI is presented. In this work, suitable data acquisition schemes, subspace sizes, and efficiencies for banding removal are investigated. Theory and Methods: By combining a fmSSFP MRI sequence with a 3D stack-of-stars trajectory, scan efficiency is maximized as spectral information is obtained without intermediate preparation phases. A memory-efficient reconstruction routine is implemented by introducing the low-frequency Fourier transform as a subspace which allows for the formulation of a convex reconstruction problem. The removal of banding artifacts is investigated by comparing the proposed acquisition and reconstruction technique to phase-cycled bSSFP MRI. Aliasing properties of different undersampling schemes are analyzed and water/fat separation is…
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