Kojima Shinya, Shinohara Hiroyuki, Hashimoto Takeyuki, Suzuki Shigeru
Department of Radiology, Tokyo Women's Medical University Medical Center East, 2-1-10 Arakawa-ku, Tokyo, Japan.
Tokyo Metropolitan University, 7-2-10 Arakawa-ku, Tokyo, Japan.
Radiol Phys Technol. 2018 Sep;11(3):303-319. doi: 10.1007/s12194-018-0469-y. Epub 2018 Aug 4.
In compressed sensing magnetic resonance imaging (CS-MRI), undersampling of k-space is performed to achieve faster imaging. For this process, it is important to acquire data randomly, and an optimal random undersampling pattern is required. However, random undersampling is difficult in two-dimensional (2D) Cartesian sampling. In this study, the effect of random undersampling patterns on image reconstruction was clarified using phantom and in vivo MRI, and a sampling pattern relevant for 2D Cartesian sampling in CS-MRI is suggested. The precision of image restoration was estimated with various acceleration factors and extents for the fully sampled central region of k-space. The root-mean-square error, structural similarity index, and modulation transfer function were measured, and visual assessments were also performed. The undersampling pattern was shown to influence the precision of image restoration, and an optimal undersampling pattern should be used to improve image quality; therefore, we suggest that the ideal undersampling pattern in CS-MRI for 2D Cartesian sampling is one with a high extent for the fully sampled central region of k-space.
在压缩感知磁共振成像(CS-MRI)中,通过对k空间进行欠采样来实现更快的成像。对于这个过程,随机采集数据很重要,并且需要一个最佳的随机欠采样模式。然而,在二维(2D)笛卡尔采样中进行随机欠采样很困难。在本研究中,使用体模和活体MRI阐明了随机欠采样模式对图像重建的影响,并提出了一种与CS-MRI中2D笛卡尔采样相关的采样模式。针对k空间完全采样的中心区域,以各种加速因子和范围估计图像恢复的精度。测量了均方根误差、结构相似性指数和调制传递函数,并进行了视觉评估。结果表明,欠采样模式会影响图像恢复的精度,应使用最佳欠采样模式来提高图像质量;因此,我们建议CS-MRI中用于2D笛卡尔采样的理想欠采样模式是k空间完全采样中心区域范围较大的模式。