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首页> 外文期刊>Neuroscience and Biobehavioral Reviews >Implications of cortical balanced excitation and inhibition, functional heterogeneity, and sparseness of neuronal activity in fMRI
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Implications of cortical balanced excitation and inhibition, functional heterogeneity, and sparseness of neuronal activity in fMRI

机译:功能性磁共振成像中皮质平衡激发和抑制,功能异质性和神经元活动稀疏的含义

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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. (C) 2015 Elsevier Ltd. All rights reserved.
机译:血液氧合水平依赖性(BOLD)功能磁共振成像(fMRI)研究通常报告不一致的发现,这可能是由于大脑特性(如平衡的激发和抑制以及功能异质性)引起的。这些特性表明,同一体素中的不同神经元可能显示出各种活动,包括并发激活和失活; BOLD信号与神经活动(即神经血管耦合)之间的关系很复杂; BOLD信号增加可能反映出失活减少,激活增加, 或两者。传统的基于通用线性模型的分析(GLM-BA)是单变量方法,无法将BOLD信号混合物的不同成分从同一体素中分离出来,并且可能导致fMRI的发现不一致。空间独立成分分析(sICA)是一种多变量方法,可以将BOLD信号混合物从每个体素中分离为不同的源信号,并分别进行测量,因此可以调和以前由GLM-BA产生的矛盾发现。我们建议应定期使用能够分离混合信号(例如sICA)的方法,以更准确和完全地提取嵌入在fMRI数据集中的信息。 (C)2015 Elsevier Ltd.保留所有权利。

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