Multi-dynamic deep image prior for cardiac MRI
Marc Vornehm, Chong Chen, Muhammad Ahmad Sultan, Syed Murtaza Arshad, Yuchi Han, Florian Knoll, Rizwan Ahmad

TL;DR
This paper introduces M-DIP, an unsupervised deep image prior framework that reconstructs high-quality free-breathing cardiac MRI by modeling physiological motion and content variations, outperforming existing methods.
Contribution
The paper presents M-DIP, a novel unsupervised reconstruction framework that captures physiological motion and content variation in dynamic cardiac MRI without external training data.
Findings
M-DIP outperforms state-of-the-art methods on phantom data.
Higher reader scores on in-vivo cine and LGE data.
Comparable performance on in-vivo perfusion data.
Abstract
Cardiovascular magnetic resonance imaging is a powerful diagnostic tool for assessing cardiac structure and function. However, traditional breath-held imaging protocols pose challenges for patients with arrhythmias or limited breath-holding capacity. This work aims to overcome these limitations by developing a reconstruction framework that enables high-quality imaging in free-breathing conditions for various dynamic cardiac MRI protocols. Multi-Dynamic Deep Image Prior (M-DIP), a novel unsupervised reconstruction framework for accelerated real-time cardiac MRI, is introduced. To capture contrast or content variation, M-DIP first employs a spatial dictionary to synthesize a time-dependent intermediate image. Then, this intermediate image is further refined using time-dependent deformation fields that model cardiac and respiratory motion. Unlike prior DIP-based methods, M-DIP…
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