典型相关分析在脑磁图功能连接中的应用

Juan L. P. Soto, D. Pantazis, K. Jerbi, Sylvain Bailler, R. Leahy
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引用次数: 14

摘要

我们提出了一种基于典型相关分析的多变量方法,用于脑磁图数据的功能连接研究。我们在皮层表面获得大脑活动的时频表示,并使用特定频段的信号功率作为我们模型的输入。我们对两个空间位置之间相互作用的度量是典型相关,与之相关的向量表明了每个单独频带对相互作用的贡献。使用错误发现率对得到的典型相关图的显著性设定阈值。我们进一步提供了一种新的方法来控制线性混合,通过测试相关向量是否共线。我们将我们的方法应用于MEG视觉运动研究的模拟和实验数据,并证明它能够检测跨空间的功能相互作用以及有助于这些相互作用的频带。
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Canonical correlation analysis applied to functional connectivity in MEG
We present a multivariate method based on canonical correlation analysis for the study of functional connectivity in the brain with MEG data. We obtain a time-frequency representation of the brain activity on the cortical surface, and use the signal power at specific frequency bands as inputs to our model. Our measure of interaction between two spatial locations is the canonical correlation, and the vectors associated with it indicate the contribution of each individual frequency band to the interaction. The resulting canonical correlation maps are thresholded for significance using false discovery rate. We further provide a novel way to control for linear mixing by testing whether the correlation vectors are collinear. We apply our method to simulations and experimental data from an MEG visuomotor study, and demonstrate that it is able to detect functional interactions across space as well as the frequency bands that contribute to these interactions.
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