Bayesian Merged Utilization of GRAPPA and SENSE (BMUGS) for In-Plane Accelerated Reconstruction Increases fMRI Detection Power
Document Type
Article
Publication Date
1-2025
Publisher
Elsevier
Source Publication
Magnetic Resonance Imaging
Source ISSN
0730-725X
Original Item ID
DOI: 10.1016/j.mri.2024.110252
Abstract
In fMRI, capturing brain activity during a task is dependent on how quickly the k-space arrays for each volume image are obtained. Acquiring the full k-space arrays can take a considerable amount of time. Under-sampling k-space reduces the acquisition time, but results in aliased, or “folded,” images after applying the inverse Fourier transform (IFT). GeneRalized Autocalibrating Partial Parallel Acquisition (GRAPPA) and SENSitivity Encoding (SENSE) are parallel imaging techniques that yield reconstructed images from subsampled arrays of k-space. With GRAPPA operating in the spatial frequency domain and SENSE in image space, these techniques have been separate but can be merged to reconstruct the subsampled k-space arrays more accurately. Here, we propose a Bayesian approach to this merged model where prior distributions for the unknown parameters are assessed from a priori k-space arrays. The prior information is utilized to estimate the missing spatial frequency values, unalias the voxel values from the posterior distribution, and reconstruct into full field-of-view images. Our Bayesian technique successfully reconstructed simulated and experimental fMRI time series with no aliasing artifacts while decreasing temporal variation and increasing task detection power.
Recommended Citation
Sakitis, Chase J. and Rowe, Daniel B., "Bayesian Merged Utilization of GRAPPA and SENSE (BMUGS) for In-Plane Accelerated Reconstruction Increases fMRI Detection Power" (2025). Mathematical and Statistical Science Faculty Research and Publications. 157.
https://epublications.marquette.edu/math_fac/157
Comments
Magnetic Resonance Imaging, Vol. 115 (January 2025). DOI.