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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Parallel imaging reconstruction for arbitrary trajectories using k-space sparse matrices (kSPA).
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Parallel imaging reconstruction for arbitrary trajectories using k-space sparse matrices (kSPA).

机译:使用k空间稀疏矩阵(kSPA)对任意轨迹进行并行成像重建。

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摘要

Although the concept of receiving MR signal using multiple coils simultaneously has been known for over two decades, the technique has only recently become clinically available as a result of the development of several effective parallel imaging reconstruction algorithms. Despite the success of these algorithms, it remains a challenge in many applications to rapidly and reliably reconstruct an image from partially-acquired general non-Cartesian k-space data. Such applications include, for example, three-dimensional (3D) imaging, functional MRI (fMRI), perfusion-weighted imaging, and diffusion tensor imaging (DTI), in which a large number of images have to be reconstructed. In this work, a systematic k-space-based reconstruction algorithm based on k-space sparse matrices (kSPA) is introduced. This algorithm formulates the image reconstruction problem as a system of sparse linear equations in k-space. The inversion of this system of equations is achieved by computing a sparse approximate inverse matrix. The algorithm is demonstrated using both simulated and in vivo data, and the resulting image quality is comparable to that of the iterative sensitivity encoding (SENSE) algorithm. The kSPA algorithm is noniterative and the computed sparse approximate inverse can be applied repetitively to reconstruct all subsequent images. This algorithm, therefore, is particularly suitable for the aforementioned applications. Magn Reson Med, 2007. (c) 2007 Wiley-Liss, Inc.
机译:尽管使用多个线圈同时接收MR信号的概念已经知道了二十多年,但是由于开发了几种有效的并行成像重建算法,该技术直到最近才在临床上可用。尽管这些算法取得了成功,但在许多应用中仍然需要挑战,如何从部分采集的通用非笛卡尔k空间数据中快速可靠地重建图像。这样的应用包括例如三维(3D)成像,功能性MRI(fMRI),灌注加权成像和扩散张量成像(DTI),其中大量图像必须被重建。在这项工作中,介绍了一种基于k空间稀疏矩阵(kSPA)的系统的基于k空间的重构算法。该算法将图像重建问题公式化为k空间中的稀疏线性方程组。通过计算稀疏的近似逆矩阵可以实现此方程组的求逆。该算法使用模拟和体内数据进行了演示,所得到的图像质量与迭代灵敏度编码(SENSE)算法相当。 kSPA算法是非迭代的,并且可以重复应用所计算的稀疏近似逆来重建所有后续图像。因此,该算法特别适合于上述应用。 Magn Reson Med,2007年。(c)2007 Wiley-Liss,Inc.

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