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Faster Diffusion Cardiac MRI with Deep Learning-based breath hold reduction

Authors :
Tanzer, Michael
Ferreira, Pedro
Scott, Andrew
Khalique, Zohya
Dwornik, Maria
Pennell, Dudley
Yang, Guang
Rueckert, Daniel
Nielles-Vallespin, Sonia
Publication Year :
2022

Abstract

Diffusion Tensor Cardiac Magnetic Resonance (DT-CMR) enables us to probe the microstructural arrangement of cardiomyocytes within the myocardium in vivo and non-invasively, which no other imaging modality allows. This innovative technology could revolutionise the ability to perform cardiac clinical diagnosis, risk stratification, prognosis and therapy follow-up. However, DT-CMR is currently inefficient with over six minutes needed to acquire a single 2D static image. Therefore, DT-CMR is currently confined to research but not used clinically. We propose to reduce the number of repetitions needed to produce DT-CMR datasets and subsequently de-noise them, decreasing the acquisition time by a linear factor while maintaining acceptable image quality. Our proposed approach, based on Generative Adversarial Networks, Vision Transformers, and Ensemble Learning, performs significantly and considerably better than previous proposed approaches, bringing single breath-hold DT-CMR closer to reality.<br />Comment: 15 pages, 1 figures, 2 tables. To be published in MIUA22

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.10543
Document Type :
Working Paper