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首页> 外文期刊>NeuroImage >Evaluating frequency-wise directed connectivity of BOLD signals applying relative power contribution with the linear multivariate time-series models.
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Evaluating frequency-wise directed connectivity of BOLD signals applying relative power contribution with the linear multivariate time-series models.

机译:使用线性多元时间序列模型,通过应用相对功率贡献来评估BOLD信号的按频率定向的连通性。

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摘要

In this article, we propose a statistical method to evaluate directed interactions of functional magnetic-resonance imaging (fMRI) data. The multivariate autoregressive (MAR) model was combined with the relative power contribution (RPC) in this analysis. The MAR model was fitted to the data to specify the direction of connections, and the RPC quantifies the strength of connections. As the RPC is computed in the frequency domain, we can evaluate the connectivity for each frequency component. From this, we can establish whether the specified connections represent low- or high-frequency connectivity, which cannot be examined solely using the estimated MAR coefficients. We applied this analysis method to fMRI data obtained during visual motion tasks, confirming previous reports of bottom-up connectivity around the frequency corresponding to the block experimental design. Furthermore, we used the MAR model with exogenous variables (MARX) to extend our understanding of these data, and to show how the input to V1 transfers to higher cortical areas.
机译:在本文中,我们提出了一种统计方法来评估功能性磁共振成像(fMRI)数据的定向相互作用。在此分析中,将多元自回归(MAR)模型与相对功率贡献(RPC)相结合。 MAR模型适合数据以指定连接方向,而RPC量化连接强度。由于RPC是在频域中计算的,因此我们可以评估每个频率分量的连通性。由此,我们可以确定指定的连接代表低频还是高频连接,这不能仅使用估计的MAR系数进行检查。我们将这种分析方法应用于在视觉运动任务期间获得的fMRI数据,从而确认了先前有关自下而上的连通性的报告,该报告涉及与块实验设计相对应的频率。此外,我们将MAR模型与外生变量(MARX)结合使用,以扩展我们对这些数据的理解,并展示V1的输入如何转移至更高的皮层区域。

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