Young Karl, Govind Varan, Sharma Khema, Studholme Colin, Maudsley Andrew A, Schuff Norbert
Center for Imaging of Neurodegenerative Diseases, Department of Veterans Affairs Medical Center, San Francisco, California 94121, USA.
Magn Reson Med. 2010 Jan;63(1):20-4. doi: 10.1002/mrm.22190.
For magnetic resonance spectroscopic imaging studies of the brain, it is important to measure the distribution of metabolites in a regionally unbiased way; that is, without restrictions to a priori defined regions of interest. Since magnetic resonance spectroscopic imaging provides measures of multiple metabolites simultaneously at each voxel, there is furthermore great interest in utilizing the multidimensional nature of magnetic resonance spectroscopic imaging for gains in statistical power. Voxelwise multivariate statistical mapping is expected to address both of these issues, but it has not been previously employed for spectroscopic imaging (SI) studies of brain. The aims of this study were to (1) develop and validate multivariate voxel-based statistical mapping for magnetic resonance spectroscopic imaging and (2) demonstrate that multivariate tests can be more powerful than univariate tests in identifying patterns of altered brain metabolism. Specifically, we compared multivariate to univariate tests in identifying known regional patterns in simulated data and regional patterns of metabolite alterations due to amyotrophic lateral sclerosis, a devastating brain disease of the motor neurons.
对于脑部磁共振波谱成像研究而言,以区域无偏倚的方式测量代谢物分布非常重要;也就是说,不受限于预先定义的感兴趣区域。由于磁共振波谱成像能在每个体素同时提供多种代谢物的测量值,因此人们对利用磁共振波谱成像的多维特性来提高统计功效也极为感兴趣。基于体素的多变量统计映射有望解决这两个问题,但此前尚未用于脑部的波谱成像(SI)研究。本研究的目的是:(1)开发并验证用于磁共振波谱成像的基于多变量体素的统计映射;(2)证明在识别脑部代谢改变模式方面,多变量检验比单变量检验更具效力。具体而言,我们在模拟数据中识别已知区域模式以及在肌萎缩侧索硬化(一种严重的运动神经元脑部疾病)导致的代谢物改变区域模式时,将多变量检验与单变量检验进行了比较。