Xu Jiansong
Department of Psychiatry, Yale University, School of Medicine, 1 Church St., Room 729, New Haven, CT 06519, USA.
Neurosci Biobehav Rev. 2015 Oct;57:264-70. doi: 10.1016/j.neubiorev.2015.08.018. Epub 2015 Sep 1.
Blood-oxygenation-level-dependent (BOLD) functional magnetic resonance imaging (fMRI) studies often report inconsistent findings, probably due to brain properties such as balanced excitation and inhibition and functional heterogeneity. These properties indicate that different neurons in the same voxels may show variable activities including concurrent activation and deactivation, that the relationships between BOLD signal and neural activity (i.e., neurovascular coupling) are complex, and that increased BOLD signal may reflect reduced deactivation, increased activation, or both. The traditional general-linear-model-based-analysis (GLM-BA) is a univariate approach, cannot separate different components of BOLD signal mixtures from the same voxels, and may contribute to inconsistent findings of fMRI. Spatial independent component analysis (sICA) is a multivariate approach, can separate the BOLD signal mixture from each voxel into different source signals and measure each separately, and thus may reconcile previous conflicting findings generated by GLM-BA. We propose that methods capable of separating mixed signals such as sICA should be regularly used for more accurately and completely extracting information embedded in fMRI datasets.
血氧水平依赖(BOLD)功能磁共振成像(fMRI)研究常常报告不一致的结果,这可能归因于大脑的一些特性,如兴奋与抑制的平衡以及功能异质性。这些特性表明,同一体素内的不同神经元可能表现出可变的活动,包括同时激活和失活,BOLD信号与神经活动之间的关系(即神经血管耦合)很复杂,并且BOLD信号增强可能反映失活减少、激活增加或两者兼有。传统的基于一般线性模型的分析(GLM-BA)是一种单变量方法,无法从同一体素中分离BOLD信号混合的不同成分,这可能导致fMRI研究结果不一致。空间独立成分分析(sICA)是一种多变量方法,能够将每个体素的BOLD信号混合分离为不同的源信号并分别进行测量,因此可能调和先前由GLM-BA产生的相互矛盾的结果。我们建议,像sICA这样能够分离混合信号的方法应经常使用,以便更准确、完整地提取fMRI数据集中所包含的信息。