4.7 Article

Subspace-constrained approaches to low-rank fMRI acceleration

期刊

NEUROIMAGE
卷 238, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118235

关键词

fMRI; Acceleration; Temporal Resolution; Low Rank; k-t FASTER; Tikhonov Regularization; Temporal Smoothing; Low Resolution Priors

资金

  1. Health Data Research UK
  2. NIHR Oxford Biomedical Research Centre
  3. Engineering and Physical Sciences Research Council (EPSRC)
  4. Medical Research Council (MRC) [EP/L016052/1]
  5. Royal Academy of Engineering [RF201617\16\23]
  6. Wellcome Trust [202788/Z/16/Z, 203139/Z/16/Z, 203147/Z/16/Z]
  7. Wellcome Trust [202788/Z/16/Z] Funding Source: Wellcome Trust

向作者/读者索取更多资源

This study evaluates the application of using L2 constraints in low-rank reconstruction methods for fMRI data, which can achieve higher acceleration factors and better reconstruction results under higher SNR values compared to existing methods, albeit at the cost of longer computation time.
Acceleration methods in fMRI aim to reconstruct high fidelity images from under-sampled k-space, allowing fMRI datasets to achieve higher temporal resolution, reduced physiological noise aliasing, and increased statistical degrees of freedom. While low levels of acceleration are typically part of standard fMRI protocols through parallel imaging, there exists the potential for approaches that allow much greater acceleration. One such existing approach is k-t FASTER, which exploits the inherent low-rank nature of fMRI. In this paper, we present a reformulated version of k-t FASTER which includes additional L2 constraints within a low-rank framework. We evaluated the effect of three different constraints against existing low-rank approaches to fMRI reconstruction: Tikhonov constraints, low-resolution priors, and temporal subspace smoothness. The different approaches are separately tested for robustness to under-sampling and thermal noise levels, in both retrospectively and prospectively-undersampled finger-tapping task fMRI data. Reconstruction quality is evaluated by accurate reconstruction of low-rank subspaces and activation maps. The use of L2 constraints was found to achieve consistently improved results, producing high fidelity reconstructions of statistical parameter maps at higher acceleration factors and lower SNR values than existing methods, but at a cost of longer computation time. In particular, the Tikhonov constraint proved very robust across all tested datasets, and the temporal subspace smoothness constraint provided the best reconstruction scores in the prospectively-undersampled dataset. These results demonstrate that regularized low-rank reconstruction of fMRI data can recover functional information at high acceleration factors without the use of any model-based spatial constraints.

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