Department of Mathematics, School of Science, Shanghai University, Shanghai 200444, China.
School of Communication and Information Engineering, Shanghai University, Shanghai 200444, China.
Med Image Anal. 2025 Jan;99:103331. doi: 10.1016/j.media.2024.103331. Epub 2024 Aug 31.
Multi-modal Magnetic Resonance Imaging (MRI) offers complementary diagnostic information, but some modalities are limited by the long scanning time. To accelerate the whole acquisition process, MRI reconstruction of one modality from highly under-sampled k-space data with another fully-sampled reference modality is an efficient solution. However, the misalignment between modalities, which is common in clinic practice, can negatively affect reconstruction quality. Existing deep learning-based methods that account for inter-modality misalignment perform better, but still share two main common limitations: (1) The spatial alignment task is not adaptively integrated with the reconstruction process, resulting in insufficient complementarity between the two tasks; (2) the entire framework has weak interpretability. In this paper, we construct a novel Deep Unfolding Network with Spatial Alignment, termed DUN-SA, to appropriately embed the spatial alignment task into the reconstruction process. Concretely, we derive a novel joint alignment-reconstruction model with a specially designed aligned cross-modal prior term. By relaxing the model into cross-modal spatial alignment and multi-modal reconstruction tasks, we propose an effective algorithm to solve this model alternatively. Then, we unfold the iterative stages of the proposed algorithm and design corresponding network modules to build DUN-SA with interpretability. Through end-to-end training, we effectively compensate for spatial misalignment using only reconstruction loss, and utilize the progressively aligned reference modality to provide inter-modality prior to improve the reconstruction of the target modality. Comprehensive experiments on four real datasets demonstrate that our method exhibits superior reconstruction performance compared to state-of-the-art methods.
多模态磁共振成像(MRI)提供了互补的诊断信息,但某些模态受到长扫描时间的限制。为了加速整个采集过程,使用另一种完全采样的参考模态从高度欠采样的 k 空间数据重建一种模态是一种有效的解决方案。然而,模态之间的失准在临床实践中很常见,会对重建质量产生负面影响。现有的基于深度学习的方法考虑了模态间失准,可以更好地解决问题,但仍存在两个主要的共同局限性:(1)空间对齐任务没有与重建过程自适应地集成,导致两个任务之间的互补性不足;(2)整个框架的可解释性较弱。在本文中,我们构建了一种新的具有空间对齐的深度展开网络,称为 DUN-SA,以适当地将空间对齐任务嵌入到重建过程中。具体来说,我们提出了一个具有特殊设计的对齐跨模态先验项的联合对齐-重建模型。通过将模型松弛为跨模态空间对齐和多模态重建任务,我们提出了一种有效的交替求解该模型的算法。然后,我们展开所提出算法的迭代阶段,并设计相应的网络模块,以具有可解释性的方式构建 DUN-SA。通过端到端训练,我们仅使用重建损失有效地补偿空间失准,并利用逐渐对齐的参考模态为目标模态的重建提供模态间先验。在四个真实数据集上的综合实验表明,与最先进的方法相比,我们的方法具有更好的重建性能。