参数统计
秩(图论)
张量(固有定义)
计算机科学
迭代重建
人工智能
模式识别(心理学)
统计参数映射
计算机视觉
磁共振成像
数学
算法
几何学
组合数学
统计
放射科
医学
作者
Yuanyuan Liu,Dong Liang,Zhuo‐Xu Cui,Yuxin Yang,Chentao Cao,Qingyong Zhu,Jing Cheng,Caiyun Shi,Haifeng Wang,Yanjie Zhu
标识
DOI:10.1109/tmi.2023.3246113
摘要
Quantitative magnetic resonance (MR) [Formula: see text] mapping is a promising approach for characterizing intrinsic tissue-dependent information. However, long scan time significantly hinders its widespread applications. Recently, low-rank tensor models have been employed and demonstrated exemplary performance in accelerating MR [Formula: see text] mapping. This study proposes a novel method that uses spatial patch-based and parametric group-based low-rank tensors simultaneously (SMART) to reconstruct images from highly undersampled k-space data. The spatial patch-based low-rank tensor exploits the high local and nonlocal redundancies and similarities between the contrast images in [Formula: see text] mapping. The parametric group-based low-rank tensor, which integrates similar exponential behavior of the image signals, is jointly used to enforce multidimensional low-rankness in the reconstruction process. In vivo brain datasets were used to demonstrate the validity of the proposed method. Experimental results demonstrated that the proposed method achieves 11.7-fold and 13.21-fold accelerations in two-dimensional and three-dimensional acquisitions, respectively, with more accurate reconstructed images and maps than several state-of-the-art methods. Prospective reconstruction results further demonstrate the capability of the SMART method in accelerating MR [Formula: see text] imaging.
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