2022
DOI: 10.1002/mrm.29314
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Improved signal‐to‐noise performance of MultiNet GRAPPA 1H FID MRSI reconstruction with semi‐synthetic calibration data

Abstract: To further develop MultiNet GRAPPA, a neural-network-based reconstruction, for lower SNR proton MRSI ( 1 H MRSI) data using adapted undersampling schemes and improved training sets. Methods:1 H FID-MRSI data and an anatomical image for GRAPPA reconstruction were acquired in two slices in the human brain (n = 6) at 7T. MRSI data were retrospectively undersampled for a 4×, 6×, and 7× acceleration rate. Signal-to-noise, relative error (RE) between accelerated and fully sampled metabolic maps, RMS of the lipid art… Show more

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Cited by 4 publications
(3 citation statements)
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“…Future studies might be conducted on ultra high field scanners that improve both imaging of the spinal cord [44][45][46] and provide access to high-resolution MRSI 47,48 enabling molecular insights.…”
Section: Discussionmentioning
confidence: 99%
“…Future studies might be conducted on ultra high field scanners that improve both imaging of the spinal cord [44][45][46] and provide access to high-resolution MRSI 47,48 enabling molecular insights.…”
Section: Discussionmentioning
confidence: 99%
“…MRSI has been severely under-utilized and was only used in two studies; furthermore, metabolic maps of the different biochemicals were not present in the literature. There have been significant advances in the field of MRSI, mostly facilitated by various acceleration methods including the shortening of repetition times [ 66 ], under-sampling of k-space [ 67 , 68 , 69 ], and spatial-spectral encoding [ 70 ]. Metabolic maps may allow for better tumor delineation, may serve a prognostic role, or may help guide therapy.…”
Section: Future Of Mrs In Cervical Cancermentioning
confidence: 99%
“…Additionally, the authors propose variable density under‐sampling schemes to achieve even higher acceleration factors and alter their ML framework by first using 2‐voxel cross‐neighbor and adjacent‐neighbor NNs before using the previously mentioned 1‐voxel neighbor NNs. Although in this work the networks are trained in a subject‐specific manner, various strategies are investigated in Reference 30 to improve this approach with more samples. The results suggest the use of NNs for GRAPPA reconstruction reduces aliasing artifacts thereby positively impacting metabolite concentration maps and significantly boosting the performance compared to regular GRAPPA.…”
Section: Processingmentioning
confidence: 99%