Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Accelerated Cardiovascular Magnetic Resonance (CMR) image reconstruction
remains a critical challenge due to the trade-off between scan time and image
quality, particularly when generalizing across diverse acquisition settings. We
propose GENRE-CMR, a generative adversarial network (GAN)-based architecture
employing a residual deep unrolled reconstruction framework to enhance
reconstruction fidelity and generalization. The architecture unrolls iterative
optimization into a cascade of convolutional subnetworks, enriched with
residual connections to enable progressive feature propagation from shallow to
deeper stages. To further improve performance, we integrate two loss functions:
(1) an Edge-Aware Region (EAR) loss, which guides the network to focus on
structurally informative regions and helps prevent common reconstruction
blurriness; and (2) a Statistical Distribution Alignment (SDA) loss, which
regularizes the feature space across diverse data distributions via a symmetric
KL divergence formulation. Extensive experiments confirm that GENRE-CMR
surpasses state-of-the-art methods on training and unseen data, achieving
0.9552 SSIM and 38.90 dB PSNR on unseen distributions across various
acceleration factors and sampling trajectories. Ablation studies confirm the
contribution of each proposed component to reconstruction quality and
generalization. Our framework presents a unified and robust solution for
high-quality CMR reconstruction, paving the way for clinically adaptable
deployment across heterogeneous acquisition protocols.