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A correlation-matrix-based hierarchical clustering method for functional connectivity analysis

机译:基于关联矩阵的层次聚类功能连通性分析方法

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In this study, a correlation matrix based hierarchical clustering (CMBHC) method is introduced to extract multiple correlation patterns from resting-state functional magnetic resonance imaging (fMRI) data. It was applied to spontaneous fMRI signals acquired from anesthetized rats, and the results were then compared with those obtained using independent component analysis (ICA), one of the most popular multivariate analysis method for analyzing spontaneous fMRI signals. It was demonstrated that the CMBHC has a higher sensitivity than the ICA, particularly on a single run data, for identifying correlation structures with relatively weak connections, for instance, the thalamocortical connections. Compared to the seed-based correlation analysis, the CMBHC does not require a priori information and thus can avoid potential biases caused by seed selection, and multiple patterns can be extracted at one time. In contrast to other multivariate methods, the CMBHC is based on spatiotemporal correlations of fMRI signals and its analysis outcomes are easy to interpret as the strength of functional connectivity. Moreover, its sensitivity of detecting patterns remains relatively high even for a single dataset. In conclusion, the CMBHC method could be a useful tool for investigating resting-state brain connectivity and function.
机译:在这项研究中,引入了基于相关矩阵的层次聚类(CMBHC)方法,以从静止状态功能磁共振成像(fMRI)数据中提取多个相关模式。将其应用于从麻醉大鼠获得的自发性fMRI信号,然后将结果与使用独立成分分析(ICA)获得的结果进行比较,后者是分析自发性fMRI信号的最受欢迎的多元分析方法之一。已经证明,CMBHC在识别具有相对较弱的连接(例如,丘脑皮层连接)的相关结构时,比ICA具有更高的灵敏度,尤其是在单次运行数据上。与基于种子的相关性分析相比,CMBHC不需要先验信息,因此可以避免由种子选择引起的潜在偏差,并且可以一次提取多种模式。与其他多元方法相比,CMBHC基于功能磁共振成像信号的时空相关性,其分析结果易于解释为功能连接的强度。而且,即使对于单个数据集,其检测模式的敏感性仍然保持较高。总之,CMBHC方法可能是研究静止状态大脑连接性和功能的有用工具。

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