Direct parallel image reconstructions for spiral trajectories using GRAPPA

Abstract
The use of spiral trajectories is an efficient way to cover a desired k‐space partition in magnetic resonance imaging (MRI). Compared to conventional Cartesian k‐space sampling, it allows faster acquisitions and results in a slight reduction of the high gradient demand in fast dynamic scans, such as in functional MRI (fMRI). However, spiral images are more susceptible to off‐resonance effects that cause blurring artifacts and distortions of the point‐spread function (PSF), and thereby degrade the image quality. Since off‐resonance effects scale with the readout duration, the respective artifacts can be reduced by shortening the readout trajectory. Multishot experiments represent one approach to reduce these artifacts in spiral imaging, but result in longer scan times and potentially increased flow and motion artifacts. Parallel imaging methods are another promising approach to improve image quality through an increase in the acquisition speed. However, non‐Cartesian parallel image reconstructions are known to be computationally time‐consuming, which is prohibitive for clinical applications. In this study a new and fast approach for parallel image reconstructions for spiral imaging based on the generalized autocalibrating partially parallel acquisitions (GRAPPA) methodology is presented. With this approach the computational burden is reduced such that it becomes comparable to that needed in accelerated Cartesian procedures. The respective spiral images with two‐ to eightfold acceleration clearly benefit from the advantages of parallel imaging, such as enabling parallel MRI single‐shot spiral imaging with the off‐resonance behavior of multishot acquisitions. Magn Reson Med, 2006.

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