Recent work has established learned k-space acquisition patterns as a promising direction for improving reconstruction quality in accelerated Magnetic Resonance Imaging (MRI). Despite encouraging results, most existing research focuses on acquisition patterns optimized for a single dataset or modality, with limited consideration of their transferability across imaging domains. In this work, we demonstrate that the benefits of learned k-space sampling can extend beyond the training domain, enabling superior reconstruction performance under domain shifts. Our study presents two main contributions. First, through systematic evaluation across datasets and acquisition paradigms, we show that models trained with learned sampling patterns exhibitimproved generalization under cross-domain settings. Second, we propose a novel method that enhances domain robustness by introducing acquisition uncertainty during training-stochastically perturbing k-space trajectories to simulate variability across scanners and imaging conditions. Our results highlight the importance of treating kspace trajectory design not merely as an acceleration mechanism, but as an active degree of freedom for improving domain generalization in MRI reconstruction.


翻译:近期研究表明,学习型K空间采集模式是提升加速磁共振成像重建质量的有效途径。尽管现有成果令人鼓舞,但多数研究聚焦于针对单一数据集或模态优化的采集模式,对其在跨成像领域可迁移性的考量有限。本工作证明,学习型K空间采样的优势可延伸至训练域之外,在领域偏移条件下实现更优的重建性能。本研究提出两项主要贡献:首先,通过跨数据集与采集范式的系统评估,我们发现采用学习型采样模式训练的模型在跨域场景中表现出更强的泛化能力;其次,我们提出一种创新方法,通过在训练中引入采集不确定性——随机扰动K空间轨迹以模拟不同扫描仪和成像条件的变异性,从而增强领域鲁棒性。研究结果强调,应将K空间轨迹设计不仅视为加速机制,更应作为提升磁共振成像重建领域泛化能力的关键自由度。

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