Unsupervised 4D Flow MRI Velocity Enhancement and Unwrapping Using Divergence-Free Neural Networks
Javier Bisbal, Julio Sotelo, Hern\'an Mella, Oliver Welin Odeback, Joaqu\'in Mura, David Marlevi, Junya Matsuda, Kotomi Iwata, Tetsuro Sekine, Cristian Tejos, and Sergio Uribe

TL;DR
This paper presents DAF-FlowNet, an unsupervised neural network that enhances noisy 4D Flow MRI velocities and corrects phase wrapping artifacts by enforcing divergence-free velocities, improving accuracy and robustness.
Contribution
Introduces a novel unsupervised divergence-free neural network that jointly denoises and unwraps 4D Flow MRI data without explicit divergence penalties.
Findings
Lower velocity errors and divergence compared to existing methods.
Significant reduction in wrapped voxels at high velocity ratios.
Outperforms sequential pipelines in noisy and aliasing scenarios.
Abstract
This work introduces an unsupervised Divergence and Aliasing-Free neural network (DAF-FlowNet) for 4D Flow Magnetic Resonance Imaging (4D Flow MRI) that jointly enhances noisy velocity fields and corrects phase wrapping artifacts. DAF-FlowNet parameterizes velocities as the curl of a vector potential, enforcing mass conservation by construction and avoiding explicit divergence-penalty tuning. A cosine data-consistency loss enables simultaneous denoising and unwrapping from wrapped phase images. On synthetic aortic 4D Flow MRI generated from computational fluid dynamics, DAF-FlowNet achieved lower errors than existing techniques (up to 11% lower velocity normalized root mean square error, 11% lower directional error, and 44% lower divergence relative to the best-performing alternative across noise levels), with robustness to moderate segmentation perturbations. For unwrapping, at peak…
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