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Dynamic changes of spatial functional network connectivity in healthy individuals and schizophrenia patients using independent vector analysis

机译:使用独立向量分析的健康个体和精神分裂症患者空间功能网络连通性的动态变化

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摘要

Recent work on both task-induced and resting-state functional magnetic resonance imaging (fMRI) data suggests that functional connectivity may fluctuate, rather than being stationary during an entire scan. Most dynamic studies are based on second-order statistics between fMRI time series or time courses derived from blind source separation, e.g., independent component analysis (ICA), to investigate changes of temporal interactions among brain regions. However, fluctuations related to spatial components over time are of interest as well. In this paper, we examine higher-order statistical dependence between pairs of spatial components, which we define as spatial functional network connectivity (sFNC), and changes of sFNC across a resting-state scan. We extract time-varying components from healthy controls and patients with schizophrenia to represent brain networks using independent vector analysis (IVA), which is an extension of ICA to multiple data sets and enables one to capture spatial variations. Based on mutual information among IVA components, we perform statistical analysis and Markov modeling to quantify the changes in spatial connectivity. Our experimental results suggest significantly more fluctuations in patient group and show that patients with schizophrenia have more variable patterns of spatial concordance primarily between frontoparietal, cerebellum and temporal lobe regions. This study extends upon earlier studies showing temporal connectivity differences in similar areas on average by providing evidence that the dynamic spatial interplay between these regions is also impacted by schizophrenia.
机译:任务诱发和静​​止状态功能磁共振成像(fMRI)数据的最新研究表明,功能连接性可能会波动,而不是在整个扫描过程中保持稳定。大多数动态研究基于fMRI时间序列或源自盲源分离的时间过程之间的二阶统计量,例如独立成分分析(ICA),以研究大脑区域之间时间相互作用的变化。但是,与空间成分有关的随时间变化的波动也很重要。在本文中,我们研究了成对的空间分量之间的高阶统计依赖性,我们将其定义为空间功能网络连接(sFNC),以及整个静止状态扫描中sFNC的变化。我们使用独立向量分析(IVA)从健康对照和精神分裂症患者中提取随时间变化的成分来代表大脑网络,这是ICA扩展到多个数据集的功能,可以捕获空间变化。基于IVA组件之间的相互信息,我们执行统计分析和Markov建模以量化空间连通性的变化。我们的实验结果表明,患者组的波动更大,并且表明精神分裂症患者主要在额前额,小脑和颞叶区域之间具有更多的空间一致性模式。这项研究扩展了先前的研究,通过提供证据表明这些区域之间的动态空间相互作用也受到精神分裂症的影响,从而显示出平均相似区域的时间连通性差异。

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