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用于 CS-MRI 的深度框架集成原则性模块:展开视角、收敛行为和实际建模。

A Deep Framework Assembling Principled Modules for CS-MRI: Unrolling Perspective, Convergence Behaviors, and Practical Modeling.

出版信息

IEEE Trans Med Imaging. 2020 Dec;39(12):4150-4163. doi: 10.1109/TMI.2020.3014193. Epub 2020 Nov 30.

DOI:10.1109/TMI.2020.3014193
PMID:32746155
Abstract

Compressed Sensing Magnetic Resonance Imaging (CS-MRI) significantly accelerates MR acquisition at a sampling rate much lower than the Nyquist criterion. A major challenge for CS-MRI lies in solving the severely ill-posed inverse problem to reconstruct aliasing-free MR images from the sparse k -space data. Conventional methods typically optimize an energy function, producing restoration of high quality, but their iterative numerical solvers unavoidably bring extremely large time consumption. Recent deep techniques provide fast restoration by either learning direct prediction to final reconstruction or plugging learned modules into the energy optimizer. Nevertheless, these data-driven predictors cannot guarantee the reconstruction following principled constraints underlying the domain knowledge so that the reliability of their reconstruction process is questionable. In this paper, we propose a deep framework assembling principled modules for CS-MRI that fuses learning strategy with the iterative solver of a conventional reconstruction energy. This framework embeds an optimal condition checking mechanism, fostering efficient and reliable reconstruction. We also apply the framework to three practical tasks, i.e., complex-valued data reconstruction, parallel imaging and reconstruction with Rician noise. Extensive experiments on both benchmark and manufacturer-testing images demonstrate that the proposed method reliably converges to the optimal solution more efficiently and accurately than the state-of-the-art in various scenarios.

摘要

压缩感知磁共振成像(CS-MRI)以远低于奈奎斯特准则的采样率显著加速了磁共振采集。CS-MRI 的一个主要挑战在于从稀疏的 k 空间数据中解决严重不适定的逆问题,以重建无混叠的磁共振图像。传统方法通常通过优化能量函数来进行高质量的恢复,但它们的迭代数值求解器不可避免地带来了极大的时间消耗。最近的深度学习技术通过学习直接预测到最终重建或将学习到的模块插入到能量优化器中,提供了快速的重建。然而,这些数据驱动的预测器不能保证重建遵循基于领域知识的基本约束,因此它们的重建过程的可靠性值得怀疑。在本文中,我们提出了一个用于 CS-MRI 的深度框架,该框架将学习策略与传统重建能量的迭代求解器结合在一起。该框架嵌入了一个最优条件检查机制,促进了高效可靠的重建。我们还将该框架应用于三个实际任务,即复数数据重建、并行成像和瑞利噪声下的重建。对基准图像和制造商测试图像的广泛实验表明,与各种情况下的最新技术相比,该方法能够更高效、更准确地可靠收敛到最优解。

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