Tran Anh Quang, Nguyen Tien-Anh, Duong Van Tu, Tran Quang-Huy, Tran Duc Nghia, Tran Duc-Tan
Department of Biomedical Engineering, Le Quy Don Technical University, Ha Noi, Vietnam.
Department of Physics, Le Quy Don Technical University, Ha Noi, Vietnam.
Math Biosci Eng. 2020 Jun 4;17(4):4048-4063. doi: 10.3934/mbe.2020224.
Compressive sampling (CS) has been commonly employed in the field of magnetic resonance imaging (MRI) to accurately reconstruct sparse and compressive signals. In a MR image, a large amount of encoded information focuses on the origin of the k-space. For the 2D Cartesian K-space MRI, under-sampling the frequency-encoding () dimension does not affect to the acquisition time, thus, only the phase-encoding () dimension can be exploited. In the traditional random under-sampling approach, it acquired Gaussian random measurements along the phaseencoding () in the k-space. In this paper, we proposed a hybrid under-sampling approach; the number of measurements in () is divided into two portions: 70% of the measurements are for random under-sampling and 30% are for definite under-sampling near the origin of the k-space. The numerical simulation consequences pointed out that, in the lower region of the under-sampling ratio r, both the average error and the universal image quality index of the appointed scheme are drastically improved up to 55 and 77% respectively as compared to the traditional scheme. For the first time, instead of using highly computational complexity of many advanced reconstruction techniques, a simple and efficient CS method based simulation is proposed for MRI reconstruction improvement. These findings are very useful for designing new MRI data acquisition approaches for reducing the imaging time of current MRI systems.
压缩采样(CS)已在磁共振成像(MRI)领域中普遍用于精确重建稀疏和压缩信号。在磁共振图像中,大量编码信息集中在k空间的原点。对于二维笛卡尔k空间MRI,对频率编码()维度进行欠采样不会影响采集时间,因此,只能利用相位编码()维度。在传统的随机欠采样方法中,它在k空间中沿相位编码()获取高斯随机测量值。在本文中,我们提出了一种混合欠采样方法;()中的测量次数分为两部分:70%的测量用于随机欠采样,30%用于在k空间原点附近进行确定性欠采样。数值模拟结果表明,在欠采样率r较低的区域,与传统方案相比,指定方案的平均误差和通用图像质量指数分别大幅提高了55%和77%。首次提出了一种基于简单高效的CS方法模拟,而不是使用许多先进重建技术的高计算复杂度,以改进MRI重建。这些发现对于设计新的MRI数据采集方法以减少当前MRI系统的成像时间非常有用。