HyperSLICE: HyperBand optimized Spiral for Low-latency Interactive
Cardiac Examination
- URL: http://arxiv.org/abs/2302.02688v2
- Date: Fri, 16 Jun 2023 15:55:15 GMT
- Title: HyperSLICE: HyperBand optimized Spiral for Low-latency Interactive
Cardiac Examination
- Authors: Dr. Olivier Jaubert, Dr. Javier Montalt-Tordera, Dr. Daniel Knight,
Pr. Simon Arridge, Dr. Jennifer Steeden and Pr. Vivek Muthurangu
- Abstract summary: Interactive cardiac resonance imaging is used for fast scan planning and guided interventions.
The requirement for real-time and near real-time visualization constrains the achievable MR-resolution.
This study aims to improve interactive imaging resolution through optimization of undersampled spiral sampling and leveraging deep learning for low-latency reconstruction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: PURPOSE: Interactive cardiac magnetic resonance imaging is used for fast scan
planning and MR guided interventions. However, the requirement for real-time
acquisition and near real-time visualization constrains the achievable
spatio-temporal resolution. This study aims to improve interactive imaging
resolution through optimization of undersampled spiral sampling and leveraging
of deep learning for low-latency reconstruction (deep artifact suppression).
METHODS: A variable density spiral trajectory was parametrized and optimized
via HyperBand to provide the best candidate trajectory for rapid deep artifact
suppression. Training data consisted of 692 breath-held CINEs. The developed
interactive sequence was tested in simulations and prospectively in 13 subjects
(10 for image evaluation, 2 during catheterization, 1 during exercise). In the
prospective study, the optimized framework -HyperSLICE- was compared to
conventional Cartesian real-time, and breath-hold CINE imaging in terms
quantitative and qualitative image metrics. Statistical differences were tested
using Friedman chi-squared tests with post-hoc Nemenyi test (p<0.05). RESULTS:
In simulations the NRMSE, pSNR, SSIM and LAPE were all statistically
significantly higher using optimized spiral compared to radial and uniform
spiral sampling, particularly after scan plan changes (SSIM: 0.71 vs 0.45 and
0.43). Prospectively, HyperSLICE enabled a higher spatial and temporal
resolution than conventional Cartesian real-time imaging. The pipeline was
demonstrated in patients during catheter pull back showing sufficiently fast
reconstruction for interactive imaging. CONCLUSION: HyperSLICE enables high
spatial and temporal resolution interactive imaging. Optimizing the spiral
sampling enabled better overall image quality and superior handling of image
transitions compared to radial and uniform spiral trajectories.
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