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Improved Parallel Magnetic Resonance Imaging Reconstruction with Sampling based on Normal Distribution

机译:基于正态分布的采样改进平行磁共振成像重建

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摘要

Generalized autocalibrating partially parallel acquisitions (GRAPPA) is a k-space-based magnetic resonance imaging (MRI) reconstruction algorithm that obtains coefficients by acquiring k-space center data with the Nyquist frequency requirement, fitting these data as auto-calibration signal (ACS). The under-sampled k-space data are then filled using the linear correlation of the neighboring points of the k-space. At high reduction factors, images reconstructed by using GRAPPA have high levels of noise even when the number of ACS lines is significantly increased. NL-GRAPPA (Non-linear GRAPPA) can improve GRAPPA for a comparatively impressive image quality. However, it is extremely difficult to reduce the sampling time significantly because of the high number of ACS lines that must be sampled. In this paper, we proposed an undersampling parallel MRI (pMRI) reconstruction technique based on the ideology of normal distribution to improve the traditional GRAPPA and NL-GRAPPA methods. The proposed method mainly takes advantage of the fact that the data in the center of the k-space had a greater impact on the imaging quality than the data at the edges, and then samples the data based on the ideology of normal distribution, i.e., discarding part of the data at the edges of the k-space. The experimental results show that our proposed method can significantly reduce the number of sampled lines and have higher imaging quality with a lower number of ACS lines.
机译:广义自动校准部分并行采集 (GRAPPA) 是一种基于 k 空间的磁共振成像 (MRI) 重建算法,它通过采集具有奈奎斯特频率要求的 k 空间中心数据来获得系数,并将这些数据拟合为自动校准信号 (ACS)。然后,使用 k 空间相邻点的线性相关性填充欠采样的 k 空间数据。在高折减系数下,即使ACS线的数量显着增加,使用GRAPPA重建的图像也具有很高的噪点水平。NL-GRAPPA(非线性 GRAPPA)可以改善 GRAPPA,以获得相对令人印象深刻的图像质量。但是,由于必须采样的ACS线路数量众多,因此很难显著减少采样时间。本文提出了一种基于正态分布思想的欠采样平行MRI(pMRI)重建技术,以改进传统的GRAPPA和NL-GRAPPA方法。该方法主要利用了k空间中心的数据比边缘的数据对成像质量影响更大的事实,然后基于正态分布的意识形态对数据进行采样,即丢弃k空间边缘的部分数据。实验结果表明,所提方法能够显著减少采样线数量,以较少的ACS线数量获得更高的成像质量。

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