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中国物理学会期刊

基于参考驱动深度图像先验与去噪正则化的多先验约束欠采样磁共振图像重建

Multi-prior Constrained Reconstruction for Undersampled MRI Using Reference-driven Deep Image Prior and Regularization by Denoising

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  • 磁共振成像 (Magnetic Resonance Imaging, MRI) 因数据采集时间较长,限制了其在动态成像与介入式手术等临床场景中的应用。压缩感知理论通过欠采样k空间数据缩短 MRI 扫描时间, 但重建质量高度依赖有效的先验约束。近年来, 深度学习类方法在 MR 图像重建中表现优异,其性能通常依赖于大规模高质量临床训练数据集, 而实践中临床数据的获取通常面临显著困难。为此, 本文提出一种基于参考驱动深度图像先验 (Deep Image Prior, DIP) 与去噪正则化(Regularization by Denoising, RED) 的多先验约束欠采样 MR 图像重建方法。该方法不依赖大规模预训练数据, 仅由单幅参考图像驱动, 构建一个两阶段重建框架:首先利用结构相似的参考图像训练 RED 中去噪引擎, 将结构先验引入 RED 正则化;随后将该参考图像进一步用于引导基于 DIP 的重建过程, 并结合k空间数据一致性约束、小波域结构相似性约束及 RED 正则化, 构建多先验协同优化模型, 实现从欠采样数据中高质量重建目标 MR 图像。实验结果表明, 本文方法在视觉评价与定量指标上均优于现有同类方法, 能够更精确地重建组织细节与边缘, 为欠采样MRI 重建提供了一种低数据依赖的高效技术路径。

     

    Magnetic Resonance Imaging (MRI) has limited applications in clinical scenarios, particularly in dynamic imaging and interventional surgery, due to its long data collection time. Compressed sensing (CS) theory can shorten MRI scan time by undersampling k-space data, but the reconstruction quality is highly dependent on effective prior constraints. In recent years, it shows excellent performance in MR image reconstruction by adopting deep learning methods, which performance usually depends on large-scale, high-quality clinical training datasets, while obtaining clinical data is often very difficult in practice. To address this challenge,we propose a multi-prior constrained reconstruction method for undersampled MRI using reference-driven Deep Image Prior (DIP) and Regularization by Denoising (RED). A key advantage of our method is its independence from large pre-trained datasets; instead, the entire reconstruction is guided by only a single reference image, offering a low-data-dependency pathway for undersampled MRI reconstruction.
    The proposed method capitalizes on the structural similarity between the reference and target images, constructing a two-stage process core-driven by a single reference image. In the first stage, the denoising engine within the RED is trained using the reference image, thereby embedding structural priors into the RED regularization. In the second stage, the same reference image guides the DIP-based reconstruction. A multiprior collaborative optimization model is designed, by combining k-space data consistency constraints, wavelet domain structural similarity constraints, and RED regularization. By optimizing the network parameters in this model, high-quality reconstruction from undersampled data is achieved. This design allows the same reference image to drive both the RED denoising engine training and the DIP-based learning, ensuring consistent and efficient utilization of structural priors throughout the workflow. The integration of multi-domain priors, which span k-space, wavelet, and image domains, enables collaborative optimization from multiple dimensions and thus further enhances reconstruction performance.
    Experimental results show that the proposed method surpasses existing comparable techniques in both visual assessment and quantitative metrics, more accurately recovering tissue details and edge structures. Importantly, it substantially reduces the reliance on large-scale pre-training data. Through the reference-driven strategy and multi-prior fusion mechanism, this method jointly improves the accuracy and effectiveness of prior incorporation, ensuring reconstruction fidelity and robustness. In summary, this work presents a promising technical pathway to overcome the challenges of clinical MR data acquisition and achieve high-quality reconstruction.

     

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