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Hybrid ICA-Seed-Based Methods for fMRI Functional Connectivity Assessment: A Feasibility Study

机译:fMRI功能连接性评估的基于ICA种子的混合方法:可行性研究

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摘要

Brain functional connectivity (FC) is often assessed from fMRI data using seed-based methods, such as those of detecting temporal correlation between a predefined region (seed) and all other regions in the brain; or using multivariate methods, such as independent component analysis (ICA). ICA is a useful data-driven tool, but reproducibility issues complicate group inferences based on FC maps derived with ICA. These reproducibility issues can be circumvented with hybrid methods that use information from ICA-derived spatial maps as seeds to produce seed-based FC maps. We report results from five experiments to demonstrate the potential advantages of hybrid ICA-seed-based FC methods, comparing results from regressing fMRI data against task-related a priori time courses, with “back-reconstruction” from a group ICA, and with five hybrid ICA-seed-based FC methods: ROI-based with (1) single-voxel, (2) few-voxel, and (3) many-voxel seed; and dual-regression-based with (4) single ICA map and (5) multiple ICA map seed.
机译:通常使用基于种子的方法从功能磁共振成像数据中评估大脑功能连通性(FC),例如检测预定区域(种子)与大脑中所有其他区域之间的时间相关性的方法。或使用多元方法,例如独立成分分析(ICA)。 ICA是有用的数据驱动工具,但是可再现性问题使基于ICA派生的FC映射的组推论变得复杂。可以使用将ICA衍生的空间图的信息用作种子来生成基于种子的FC图的混合方法来避免这些可重复性问题。我们报告了五个实验的结果,以证明基于ICA种子的混合FC方法的潜在优势,将MRI数据与任务相关的先验时间过程的回归结果进行比较,并与ICA组进行“反向重建”,并与五个基于ICA种子的混合FC方法:基于ROI的(1)单体素,(2)少体素,和(3)多体素种子;和基于双回归的(4)单个ICA映射和(5)多个ICA映射种子。

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