Physics-informed self-supervised deep learning reconstruction for
accelerated first-pass perfusion cardiac MRI
- URL: http://arxiv.org/abs/2301.02033v1
- Date: Thu, 5 Jan 2023 12:11:17 GMT
- Title: Physics-informed self-supervised deep learning reconstruction for
accelerated first-pass perfusion cardiac MRI
- Authors: Elena Mart\'in-Gonz\'alez, Ebraham Alskaf, Amedeo Chiribiri, Pablo
Casaseca-de-la-Higuera, Carlos Alberola-L\'opez, Rita G Nunes and Teresa M
Correia
- Abstract summary: We propose a physics-informed self-supervised deep learning FPP-CMR reconstruction approach for accelerating FPP-CMR scans.
The proposed method provides high-quality FPP-CMR images from 10x undersampled data without using fully sampled reference data.
- Score: 2.023359976134555
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: First-pass perfusion cardiac magnetic resonance (FPP-CMR) is becoming an
essential non-invasive imaging method for detecting deficits of myocardial
blood flow, allowing the assessment of coronary heart disease. Nevertheless,
acquisitions suffer from relatively low spatial resolution and limited heart
coverage. Compressed sensing (CS) methods have been proposed to accelerate
FPP-CMR and achieve higher spatial resolution. However, the long reconstruction
times have limited the widespread clinical use of CS in FPP-CMR. Deep learning
techniques based on supervised learning have emerged as alternatives for
speeding up reconstructions. However, these approaches require fully sampled
data for training, which is not possible to obtain, particularly
high-resolution FPP-CMR images. Here, we propose a physics-informed
self-supervised deep learning FPP-CMR reconstruction approach for accelerating
FPP-CMR scans and hence facilitate high spatial resolution imaging. The
proposed method provides high-quality FPP-CMR images from 10x undersampled data
without using fully sampled reference data.
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