IEEE Trans Med Imaging. 2018 Nov;37(11):2414-2427. doi: 10.1109/TMI.2018.2833288. Epub 2018 Jun 4.
In quantitative magnetic resonance mapping, the variable flip angle (VFA) steady state spoiled gradient recalled echo (SPGR) imaging technique is popular as it provides a series of high resolution weighted images in a clinically feasible time. Fast, linear methods that estimate maps from these weighted images have been proposed, such as DESPOT1 and iterative re-weighted linear least squares. More accurate, non-linear least squares (NLLS) estimators are in play, but these are generally much slower and require careful initialization. In this paper, we present NOVIFAST, a novel NLLS-based algorithm specifically tailored to VFA SPGR mapping. By exploiting the particular structure of the SPGR model, a computationally efficient, yet accurate and precise map estimator is derived. Simulation and in vivo human brain experiments demonstrate a twenty-fold speed gain of NOVIFAST compared with conventional gradient-based NLLS estimators while maintaining a high precision and accuracy. Moreover, NOVIFAST is eight times faster than the efficient implementations of the variable projection (VARPRO) method. Furthermore, NOVIFAST is shown to be robust against initialization.
在定量磁共振成像中,可变翻转角(VFA)稳态扰相梯度回波(SPGR)成像技术很受欢迎,因为它可以在临床可行的时间内提供一系列高分辨率加权图像。已经提出了一些从这些加权图像中估计图谱的快速、线性方法,例如 DESPOT1 和迭代重加权线性最小二乘。更准确、非线性最小二乘(NLLS)估计器也在使用中,但这些通常要慢得多,需要仔细初始化。在本文中,我们提出了 NOVIFAST,这是一种专门针对 VFA SPGR 映射的新型基于 NLLS 的算法。通过利用 SPGR 模型的特殊结构,推导出了一种计算效率高、但准确和精确的图谱估计器。模拟和体内人脑实验表明,与传统基于梯度的 NLLS 估计器相比,NOVIFAST 的速度提高了二十倍,同时保持了高精度和准确性。此外,NOVIFAST 比高效的变量投影(VARPRO)方法实现快八倍。此外,还证明 NOVIFAST 对初始化具有鲁棒性。