Graduate Institute of Applied Physics, National Chengchi University, Taipei, Taiwan.
Research Center for Mind, Brain and Learning, National Chengchi University, Taipei, Taiwan.
Magn Reson Med. 2019 Mar;81(3):1486-1498. doi: 10.1002/mrm.27496. Epub 2018 Sep 11.
Lipid contamination can complicate the metabolite quantification in MR spectroscopic imaging (MRSI). In addition to various experimental methods demonstrated to be feasible for lipid suppression, the postprocessing method is beneficial in the flexibility of applications. In this study, the signal space projection (SSP) algorithm is proposed to suppress the lipid signal in the MRSI.
The performance of lipid suppression using SSP and SSP combined with the Papoulis-Gerchberg (PG) algorithm (PG+SSP) is examined in 2D MRSI data and the results were compared with outer volume saturation (OVS) methods. Up to 10 lipid spatial components were extracted by SSP from lipid signals in the range of 0.8~1.5 ppm.
Our results show that most lipid signals were found in the first 4 to 5 components and that lipid signals on the spectra can be suppressed using 4 to 5 components. Metabolites concentrations were quantified using LCModel. Two regions of interest (ROIs) were manually selected on the peripheral and inner brain regions. The quantification of metabolites in terms of fitting reliability (CRLB) and spatial variations within ROIs (SpaVar) is improved using SSP. When 5 to 6 components were used in SSP and PG+SSP, the metabolite concentrations and the associated SpaVar and CRLB are at the same level as those from the OVS.
We have demonstrated that the SSP method can be used to suppress the lipid signals of MRSI and SSP with 5 to 6 components is suggested to have a similar suppression performance as the OVS method.
脂质污染可能会使磁共振波谱成像(MRSI)中的代谢物定量变得复杂。除了已经证明各种可行的实验方法来抑制脂质外,后处理方法在应用的灵活性方面也具有优势。在本研究中,提出了信号空间投影(SSP)算法来抑制 MRSI 中的脂质信号。
在 2D MRSI 数据中检查了 SSP 和 SSP 与 Papoulis-Gerchberg(PG)算法(PG+SSP)结合使用时的脂质抑制性能,并将结果与外体积饱和(OVS)方法进行了比较。SSP 从 0.8-1.5ppm 范围内的脂质信号中提取了多达 10 个脂质空间分量。
我们的结果表明,大多数脂质信号存在于前 4 到 5 个分量中,并且可以使用 4 到 5 个分量来抑制谱上的脂质信号。使用 LCModel 定量代谢物。手动在大脑的外周和内部区域选择了两个感兴趣区域(ROI)。使用 SSP 提高了代谢物定量的拟合可靠性(CRLB)和 ROI 内的空间变化(SpaVar)。当在 SSP 和 PG+SSP 中使用 5 到 6 个分量时,代谢物浓度以及相关的 SpaVar 和 CRLB 与 OVS 相同。
我们已经证明了 SSP 方法可用于抑制 MRSI 的脂质信号,并且建议使用 5 到 6 个分量的 SSP 具有与 OVS 方法相似的抑制性能。