使用低秩和稀疏性约束的稀疏采样功能磁共振成像

Hien M. Nguyen, G. Glover
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引用次数: 2

摘要

稀疏采样已被证明对时空成像是有用的。功能MRI受益于稀疏采样,因为它减少了读取时间,这反过来又使所获取的数据不容易受到空气-组织界面附近磁场梯度引起的T2*敏感性伪影的影响。传统的基于傅里叶变换的重建方法存在高频振铃和分辨率损失等稀疏采样伪影。为了同时解决稀疏采样和场非均匀性伪影问题,我们提出利用群稀疏性来利用fMRI数据的特定低秩结构,并将场非均匀性纳入迭代图像重建中。实验结果表明,该方法能够获得高分辨率的功能图像和激活图,并通过感化场梯度进行伪影校正。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparsely sampled functional magnetic resonance imaging using low-rank and sparsity constraints
Sparse sampling has been demonstrated useful for spatiotemporal imaging. Functional MRI benefits from sparse sampling due to reduction of the readout duration which in turn makes the acquired data less prone to T2* susceptibility artifacts caused by magnetic field gradients near air-tissue interfaces. Conventional Fourier transform-based reconstruction method suffers from sparse sampling artifacts such as high-frequency ringing and loss of resolution. To address the problem of sparse sampling and field inhomogeneity artifacts at once, we propose to exploit the specific low-rank structure of fMRI data via group sparsity and incorporate field inhomogeneity into iterative image reconstruction. Experimental results demonstrate the ability of the method in obtaining higher-resolution functional images and activation maps with artifact correction due to susceptibility-induced field gradients.
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