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首页> 外文期刊>Psychometrika >Multilevel Dynamic Generalized Structured Component Analysis for Brain Connectivity Analysis in Functional Neuroimaging Data
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Multilevel Dynamic Generalized Structured Component Analysis for Brain Connectivity Analysis in Functional Neuroimaging Data

机译:功能神经影像数据中大脑连接性分析的多级动态广义结构化成分分析

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摘要

We extend dynamic generalized structured component analysis (GSCA) to enhance its data-analytic capability in structural equation modeling of multi-subject time series data. Time series data of multiple subjects are typically hierarchically structured, where time points are nested within subjects who are in turn nested within a group. The proposed approach, named multilevel dynamic GSCA, accommodates the nested structure in time series data. Explicitly taking the nested structure into account, the proposed method allows investigating subject-wise variability of the loadings and path coefficients by looking at the variance estimates of the corresponding random effects, as well as fixed loadings between observed and latent variables and fixed path coefficients between latent variables. We demonstrate the effectiveness of the proposed approach by applying the method to the multi-subject functional neuroimaging data for brain connectivity analysis, where time series data-level measurements are nested within subjects.
机译:我们扩展了动态广义结构化成分分析(GSCA),以增强其在多主题时间序列数据的结构方程建模中的数据分析能力。多个主题的时间序列数据通常是分层结构的,其中时间点嵌套在主题中,而主题又嵌套在组中。所提出的方法称为多级动态GSCA,可在时间序列数据中容纳嵌套结构。明确考虑嵌套结构,该方法允许通过查看相应随机效应的方差估计值,观察变量和潜在变量之间的固定载荷以及之间的固定路径系数来研究负荷和路径系数的主题变异性。潜在变量。我们通过将方法应用于大脑连接性分析的多对象功能性神经影像数据来证明所提出方法的有效性,其中时间序列数据级别的测量值嵌套在受试者体内。

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