Song Jiayu, Liu Yanhui, Gewalt Sally L, Cofer Gary, Johnson G Allan, Liu Qing Huo
Department of Electrical and Computer Engineering, Duke University, Durham, NC 27708, USA.
IEEE Trans Biomed Eng. 2009 Apr;56(4):1134-42. doi: 10.1109/TBME.2009.2012721. Epub 2009 Jan 23.
Radially encoded MRI has gained increasing attention due to its motion insensitivity and reduced artifacts. However, because its samples are collected nonuniformly in the k-space, multidimensional (especially 3-D) radially sampled MRI image reconstruction is challenging. The objective of this paper is to develop a reconstruction technique in high dimensions with on-the-fly kernel calculation. It implements general multidimensional nonuniform fast Fourier transform (NUFFT) algorithms and incorporates them into a k-space image reconstruction framework. The method is then applied to reconstruct from the radially encoded k-space data, although the method is applicable to any non-Cartesian patterns. Performance comparisons are made against the conventional Kaiser-Bessel (KB) gridding method for 2-D and 3-D radially encoded computer-simulated phantoms and physically scanned phantoms. The results show that the NUFFT reconstruction method has better accuracy-efficiency tradeoff than the KB gridding method when the kernel weights are calculated on the fly. It is found that for a particular conventional kernel function, using its corresponding deapodization function as a scaling factor in the NUFFT framework has the potential to improve accuracy. In particular, when a cosine scaling factor is used, the NUFFT method is faster than KB gridding method since a closed-form solution is available and is less computationally expensive than the KB kernel (KB griding requires computation of Bessel functions). The NUFFT method has been successfully applied to 2-D and 3-D in vivo studies on small animals.
径向编码磁共振成像(MRI)因其对运动不敏感且伪影减少而越来越受到关注。然而,由于其样本在k空间中是非均匀采集的,多维(尤其是三维)径向采样MRI图像重建具有挑战性。本文的目的是开发一种具有实时内核计算的高维重建技术。它实现了通用的多维非均匀快速傅里叶变换(NUFFT)算法,并将其纳入k空间图像重建框架。然后将该方法应用于从径向编码的k空间数据进行重建,尽管该方法适用于任何非笛卡尔模式。针对二维和三维径向编码的计算机模拟体模以及物理扫描体模,与传统的凯泽 - 贝塞尔(KB)网格化方法进行了性能比较。结果表明,当实时计算内核权重时,NUFFT重建方法比KB网格化方法具有更好的精度 - 效率权衡。研究发现,对于特定的传统内核函数,在NUFFT框架中使用其相应的去卷积函数作为缩放因子有可能提高精度。特别是,当使用余弦缩放因子时,NUFFT方法比KB网格化方法更快,因为可以得到闭式解,并且计算成本比KB内核低(KB网格化需要计算贝塞尔函数)。NUFFT方法已成功应用于小动物的二维和三维体内研究。