FREE-BREATHING CARDIOVASCULAR MRI USING A PLUG-AND-PLAY METHOD WITH LEARNED DENOISER.

Sizhuo Liu, Edward Reehorst, Philip Schniter, Rizwan Ahmad
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引用次数: 4

Abstract

Cardiac magnetic resonance imaging (CMR) is a noninvasive imaging modality that provides a comprehensive evaluation of the cardiovascular system. The clinical utility of CMR is hampered by long acquisition times, however. In this work, we propose and validate a plug-and-play (PnP) method for CMR reconstruction from undersampled multicoil data. To fully exploit the rich image structure inherent in CMR, we pair the PnP framework with a deep learning (DL)-based denoiser that is trained using spatiotemporal patches from high-quality, breath-held cardiac cine images. The resulting "PnP-DL" method iterates over data consistency and denoising subroutines. We compare the reconstruction performance of PnP-DL to that of compressed sensing (CS) using eight breath-held and ten real-time (RT) free-breathing cardiac cine datasets. We find that, for breath-held datasets, PnP-DL offers more than one dB advantage over commonly used CS methods. For RT free-breathing datasets, where ground truth is not available, PnP-DL receives higher scores in qualitative evaluation. The results highlight the potential of PnP-DL to accelerate RT CMR.

自由呼吸心血管mri使用即插即用方法与学习去噪。
心脏磁共振成像(CMR)是一种对心血管系统进行全面评估的无创成像方式。然而,CMR的临床应用受到长期获取时间的阻碍。在这项工作中,我们提出并验证了一种即插即用(PnP)方法,用于从欠采样多线圈数据中重建CMR。为了充分利用CMR固有的丰富图像结构,我们将PnP框架与基于深度学习(DL)的去噪器相结合,该去噪器使用来自高质量、屏息心脏电影图像的时空补丁进行训练。由此产生的“PnP-DL”方法迭代数据一致性和去噪子程序。我们使用8个屏气和10个实时(RT)自由呼吸心脏电影数据集比较了PnP-DL与压缩感知(CS)的重建性能。我们发现,对于屏息数据集,PnP-DL比常用的CS方法提供了一个以上的dB优势。对于无法获得地面真实值的RT自由呼吸数据集,PnP-DL在定性评估中获得更高的分数。这些结果突出了PnP-DL加速RT CMR的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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