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Characteristics of Voxel Prediction Power in Full-brain Granger Causality Analysis of fMRI Data

机译:fMRI数据全脑Granger因果关系分析中体素预测能力的特征

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Functional neuroimaging research is moving from the study of "activations" to the study of "interactions" among brain regions. Granger causality analysis provides a powerful technique to model spatio-temporal interactions among brain regions. We apply this technique to full-brain fMRI data without aggregating any voxel data into regions of interest (ROIs). We circumvent the problem of dimensionality using sparse regression from machine learning. On a simple finger-tapping experiment we found that (1) a small number of voxels in the brain have very high prediction power, explaining the future time course of other voxels in the brain; (2) these voxels occur in small sized clusters (of size 1-4 voxels) distributed throughout the brain; (3) albeit small, these clusters overlap with most of the clusters identified with the non-temporal General Linear Model (GLM); and (4) the method identifies clusters which, while not determined by the task and not detectable by GLM, still influence brain activity.
机译:功能性神经影像学研究正从“激活”的研究转移到大脑区域之间“相互作用”的研究。 Granger因果关系分析提供了一种强大的技术来对大脑区域之间的时空交互进行建模。我们将此技术应用于全脑fMRI数据,而无需将任何体素数据聚合到感兴趣的区域(ROI)中。我们使用来自机器学习的稀疏回归来规避维度问题。在一个简单的敲击实验中,我们发现(1)大脑中的少量体素具有很高的预测能力,这说明了大脑中其他体素的未来时间进程; (2)这些体素出现在分布在整个大脑中的小型簇(大小为1-4体素)中; (3)尽管很小,但这些聚类与非时间通用线性模型(GLM)识别的大多数聚类重叠; (4)该方法识别出虽然不是由任务确定并且不能由GLM检测到但仍会影响大脑活动的簇。

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