Spatio-temporal wavelet regularization for parallel MRI reconstruction: application to functional MRI
Lotfi Chaari, S\'ebastien M\'eriaux, Jean-Christophe Pesquet and, Philippe Ciuciu

TL;DR
This paper introduces a 3D and 4D wavelet regularization approach for parallel MRI reconstruction, improving image quality and statistical sensitivity in functional MRI by handling spatial and temporal correlations effectively.
Contribution
The paper extends wavelet-regularized SENSE methods to 3D and 4D, enabling better reconstruction of anatomical and functional MRI data with fully unsupervised parameter estimation.
Findings
4D-UWR-SENSE outperforms traditional SENSE in anatomical MRI reconstruction.
The method improves statistical sensitivity in fMRI during fast event-related protocols.
Performance gains are consistent across different acceleration factors and contrast types.
Abstract
Parallel MRI is a fast imaging technique that enables the acquisition of highly resolved images in space or/and in time. The performance of parallel imaging strongly depends on the reconstruction algorithm, which can proceed either in the original k-space (GRAPPA, SMASH) or in the image domain (SENSE-like methods). To improve the performance of the widely used SENSE algorithm, 2D- or slice-specific regularization in the wavelet domain has been deeply investigated. In this paper, we extend this approach using 3D-wavelet representations in order to handle all slices together and address reconstruction artifacts which propagate across adjacent slices. The gain induced by such extension (3D-Unconstrained Wavelet Regularized -SENSE: 3D-UWR-SENSE) is validated on anatomical image reconstruction where no temporal acquisition is considered. Another important extension accounts for temporal…
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