Lam Fan, Liang Zhi-Pei
Department of Electrical and Computer Engineering, Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, Urbana, Illinois, 61801, USA.
Magn Reson Med. 2014 Apr;71(4):1349-57. doi: 10.1002/mrm.25168. Epub 2014 Feb 4.
To accelerate spectroscopic imaging using sparse sampling of (k,t)-space and subspace (or low-rank) modeling to enable high-resolution metabolic imaging with good signal-to-noise ratio.
The proposed method, called SPectroscopic Imaging by exploiting spatiospectral CorrElation, exploits a unique property known as partial separability of spectroscopic signals. This property indicates that high-dimensional spectroscopic signals reside in a very low-dimensional subspace and enables special data acquisition and image reconstruction strategies to be used to obtain high-resolution spatiospectral distributions with good signal-to-noise ratio. More specifically, a hybrid chemical shift imaging/echo-planar spectroscopic imaging pulse sequence is proposed for sparse sampling of (k,t)-space, and a low-rank model-based algorithm is proposed for subspace estimation and image reconstruction from sparse data with the capability to incorporate prior information and field inhomogeneity correction.
The performance of the proposed method has been evaluated using both computer simulations and phantom studies, which produced very encouraging results. For two-dimensional spectroscopic imaging experiments on a metabolite phantom, a factor of 10 acceleration was achieved with a minimal loss in signal-to-noise ratio compared to the long chemical shift imaging experiments and with a significant gain in signal-to-noise ratio compared to the accelerated echo-planar spectroscopic imaging experiments.
The proposed method, SPectroscopic Imaging by exploiting spatiospectral CorrElation, is able to significantly accelerate spectroscopic imaging experiments, making high-resolution metabolic imaging possible.
利用(k,t)空间的稀疏采样和子空间(或低秩)建模来加速光谱成像,以实现具有良好信噪比的高分辨率代谢成像。
所提出的方法称为利用空间光谱相关性的光谱成像,它利用了一种称为光谱信号部分可分离性的独特特性。该特性表明高维光谱信号存在于一个非常低维的子空间中,并使得可以使用特殊的数据采集和图像重建策略来获得具有良好信噪比的高分辨率空间光谱分布。更具体地说,提出了一种混合化学位移成像/回波平面光谱成像脉冲序列用于(k,t)空间的稀疏采样,并提出了一种基于低秩模型的算法用于从稀疏数据中进行子空间估计和图像重建,该算法能够纳入先验信息和场不均匀性校正。
已使用计算机模拟和体模研究对所提出方法的性能进行了评估,结果非常令人鼓舞。对于代谢物体模上的二维光谱成像实验,与长时间化学位移成像实验相比,在信噪比损失最小的情况下实现了10倍的加速,与加速回波平面光谱成像实验相比,信噪比有显著提高。
所提出的利用空间光谱相关性的光谱成像方法能够显著加速光谱成像实验,使高分辨率代谢成像成为可能。