High-resolution single-shot spiral diffusion-weighted imaging at 7T using expanded encoding with compressed sensing
Gabriel Varela-Mattatall, Paul I. Dubovan, Tales Santini, Kyle M., Gilbert, Ravi S. Menon, Corey A. Baron

TL;DR
This paper demonstrates that combining expanded encoding with compressed sensing significantly enhances the quality, resolution, and acceleration capabilities of single-shot spiral diffusion MRI at 7T, especially in low-SNR conditions.
Contribution
It introduces the use of l1-wavelet regularization with expanded encoding in diffusion MRI, improving image quality and resolution at high acceleration factors.
Findings
Improved image quality with small feature retention using CS.
Enhanced reconstruction accuracy with combined expanded encoding and CS.
Higher spatial resolutions and acceleration factors achieved.
Abstract
Purpose: The expanded encoding model incorporates spatially- and time-varying field perturbations for correction during reconstruction. So far, these reconstructions have used the conjugate gradient method with early stopping used as implicit regularization. However, this approach is likely suboptimal for low-SNR cases like diffusion or high-resolution MRI. Here, we investigate the extent that l1-wavelet regularization, or equivalently compressed sensing (CS), combined with expanded encoding improves trade-offs between spatial resolution, readout time and SNR for single-shot spiral diffusion-weighted imaging at 7T. The reconstructions were performed using our open-source GPU-enabled reconstruction toolbox, MatMRI, that allows inclusion of the different components of the expanded encoding model, with or without CS. Methods: In vivo accelerated single-shot spirals were acquired with five…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · MRI in cancer diagnosis
