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Detecting functional nodes in large-scale cortical networks with functional magnetic resonance imaging: a principal component analysis of the human visual system.

机译:使用功能磁共振成像检测大型皮质网络中的功能节点:人类视觉系统的主成分分析。

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This study aimed to demonstrate how a regional variant of principal component analysis (PCA) can be used to delineate the known functional subdivisions of the human visual system. Unlike conventional eigenimage analysis, PCA was carried out as a second-level analysis subsequent to model-based General Linear Model (GLM)-type functional activation mapping. Functional homogeneity of the functional magnetic resonance imaging (fMRI) time series within and between clusters was examined on several levels of the visual network, starting from the level of individual clusters up to the network level comprising two or more distinct visual regions. On each level, the number of significant components was identified and compared with the number of clusters in the data set. Eigenimages were used to examine the regional distribution of the extracted components. It was shown that voxels within individual clusters and voxels located in bilateral homologue visual regions can be represented by a single component, constituting the characteristic functional specialization of the cluster(s). If, however, PCA was applied to time series of voxels located in functionally distinct visual regions, more than one component was observed with each component being dominated by voxels in one of the investigated regions. The model of functional connections derived by PCA was in accordance with the well-known functional anatomy and anatomical connectivity of the visual system. PCA in combination with conventional activation mapping might therefore be used to identify the number of functionally distinct nodes in an fMRI data set in order to generate a model of functional connectivity within a neuroanatomical network.
机译:这项研究旨在证明如何使用主成分分析(PCA)的区域变体来描绘人类视觉系统的已知功能细分。与常规本征图像分析不同,PCA作为基于模型的通用线性模型(GLM)类型的功能激活映射之后的第二级分析进行。从单个群集的级别到包含两​​个或多个不同视觉区域的网络级别,在视觉网络的几个级别上检查了群集内部和群集之间的功能磁共振成像(fMRI)时间序列的功能同质性。在每个级别上,识别出重要组成部分的数量,并将其与数据集中的集群数量进行比较。特征图像用于检查提取成分的区域分布。结果表明,单个簇中的体素和位于双侧同源视域中的体素可以由单个成分表示,从而构成了该簇的特征性功能特化。但是,如果将PCA应用于位于功能不同的视觉区域中的体素的时间序列,则会在一个研究区域中观察到一个以上的分量,而每个分量都由体素主导。 PCA导出的功能连接模型符合视觉系统的众所周知的功能解剖和解剖连接。 PCA与常规激活映射的组合因此可用于识别fMRI数据集中功能上不同的节点的数量,以便在神经解剖网络内生成功能连接性模型。

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