记忆高效深度压缩感知重建加速三维全心冠状动脉磁共振血管造影

Zhihao Xue;Fan Yang;Juan Gao;Zhuo Chen;Hao Peng;Chao Zou;Hang Jin;Chenxi Hu
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引用次数: 0

摘要

三维冠状动脉磁共振血管造影(CMRA)需要能够显著抑制严重欠采样采集中遇到的伪影的重建算法。虽然基于展开的深度重建方法在二维图像重建上已经取得了最先进的性能,但它们在三维重建中的应用受到训练展开网络所需的大量内存的阻碍。在这项研究中,我们提出了一种内存高效的深度压缩感知方法,该方法采用基于预训练的伪影估计网络的稀疏化变换。当输入图像无伪影时,训练良好的网络估计的伪影图像是稀疏的,当输入图像有伪影时,估计的伪影图像是稀疏的。因此,工件估计网络可以用作固有的稀疏化变换。在3D CMRA加速方面,将提出的基于去混叠规则化的压缩感知(DARCS)与基于补丁的低秩方法、去混叠生成对抗网络(DAGAN)、基于3D模型的深度学习(MoDL)、即插即用和ai辅助压缩感知(AI-CS)进行了比较。结果表明,在峰值信噪比(PSNR)方面,DARCS的重建质量比对比方法高出约2 dB。此外,所提出的方法可以很好地推广到不同的欠采样率、模式和噪声水平,内存使用量仅为3D MoDL所需的63%。综上所述,DARCS提高了三维CMRA的重建质量,减少了记忆负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DARCS: Memory-Efficient Deep Compressed Sensing Reconstruction for Acceleration of 3D Whole-Heart Coronary MR Angiography
Three-dimensional coronary magnetic res- onance angiography (CMRA) requires reconstruction algorithms that can significantly suppress the artifacts encountered in heavily undersampled acquisitions. While unrolling-based deep reconstruction methods have ach- ieved state-of-the-art performance on 2D image recons- truction, their application in 3D reconstruction is hindered by the large amount of memory required to train an unrolled network. In this study, we propose a memory-efficient deep compressed sensing method that employs a sparsifying transform based on a pre-trained artifact estimation network. The artifact image estimated by a well-trained network is expected to be sparse when the input image is artifact-free and less sparse when the input image has artifacts. Thus, the artifact estimation network can be used as an inherent sparsifying transform. The proposed method, De-Aliasing Regularization-based Compressed Sensing (DARCS), was compared with a patch-based low-rank method, de-aliasing generative adversarial network (DAGAN), 3D model-based deep learning (MoDL), plug-and-play, and AI-assisted compressed sensing (AI-CS) in terms of 3D CMRA acceleration. The results demonstrate that DARCS surpasses the reconstruction quality of the comparison methods, by approximately 2 dB in peak signal-to-noise ratio (PSNR). Furthermore, the proposed method generalizes well to different undersampling rates, patterns, and noise levels, with a memory usage of only 63% of that needed by 3D MoDL. In conclusion, DARCS improves reconstruction quality for 3D CMRA with reduced memory burden.
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