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Article Abstract

Purpose: To develop and evaluate methods for (1) reconstructing 3D-quantification using an interleaved Look-Locker acquisition sequence with T preparation pulse (3D-QALAS) time-series images using a low-rank subspace method, which enables accurate and rapid T and T mapping, and (2) improving the fidelity of subspace QALAS by combining scan-specific deep-learning-based reconstruction and subspace modeling.

Theory And Methods: A low-rank subspace method for 3D-QALAS (i.e., subspace QALAS) and zero-shot deep-learning subspace method (i.e., Zero-DeepSub) were proposed for rapid and high fidelity T and T mapping and time-resolved imaging using 3D-QALAS. Using an ISMRM/NIST system phantom, the accuracy and reproducibility of the T and T maps estimated using the proposed methods were evaluated by comparing them with reference techniques. The reconstruction performance of the proposed subspace QALAS using Zero-DeepSub was evaluated in vivo and compared with conventional QALAS at high reduction factors of up to nine-fold.

Results: Phantom experiments showed that subspace QALAS had good linearity with respect to the reference methods while reducing biases and improving precision compared to conventional QALAS, especially for T maps. Moreover, in vivo results demonstrated that subspace QALAS had better g-factor maps and could reduce voxel blurring, noise, and artifacts compared to conventional QALAS and showed robust performance at up to nine-fold acceleration with Zero-DeepSub, which enabled whole-brain T, T, and PD mapping at 1 mm isotropic resolution within 2 min of scan time.

Conclusion: The proposed subspace QALAS along with Zero-DeepSub enabled high fidelity and rapid whole-brain multiparametric quantification and time-resolved imaging.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11005062PMC
http://dx.doi.org/10.1002/mrm.30018DOI Listing

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Article Synopsis
  • The study aims to create and assess methods for enhancing 3D imaging techniques, specifically using a low-rank subspace method and deep learning to improve accuracy and speed in T1 and T2 mapping.
  • Two innovative approaches were proposed: subspace QALAS, a low-rank method for quantification, and Zero-DeepSub, a deep-learning reconstruction technique that boosts imaging performance.
  • Results showed that these methods significantly improved image quality and accuracy, allowing for rapid whole-brain imaging at high resolution with less noise and artifacts compared to traditional methods.
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