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📄 Abstract
Abstract: Deep learning-based cardiac MRI reconstruction faces significant domain shift
challenges when deployed across multiple clinical centers with heterogeneous
scanner configurations and imaging protocols. We propose HierAdaptMR, a
hierarchical feature adaptation framework that addresses multi-level domain
variations through parameter-efficient adapters. Our method employs
Protocol-Level Adapters for sequence-specific characteristics and Center-Level
Adapters for scanner-dependent variations, built upon a variational unrolling
backbone. A Universal Adapter enables generalization to entirely unseen centers
through stochastic training that learns center-invariant adaptations. The
framework utilizes multi-scale SSIM loss with frequency domain enhancement and
contrast-adaptive weighting for robust optimization. Comprehensive evaluation
on the CMRxRecon2025 dataset spanning 5+ centers, 10+ scanners, and 9
modalities demonstrates superior cross-center generalization while maintaining
reconstruction quality. code: https://github.com/Ruru-Xu/HierAdaptMR