Kosteletou Emmanouela, Simos Panagiotis G, Kavroulakis Eleftherios, Antypa Despina, Maris Thomas G, Liavas Athanasios P, Karakasis Paris A, Papadaki Efrosini
Institute of Applied and Computational Mathematics, Foundation for Research and Technology - Hellas (FORTH), Heraklion, Greece.
Computational Biomedicine Laboratory (CBML), Institute of Computer Science, Foundation for Research and Technology - Hellas (FORTH), Heraklion, Greece.
Front Hum Neurosci. 2021 Dec 14;15:771668. doi: 10.3389/fnhum.2021.771668. eCollection 2021.
General Linear Modeling (GLM) is the most commonly used method for signal detection in Functional Magnetic Resonance Imaging (fMRI) experiments, despite its main limitation of not taking into consideration common spatial dependencies between voxels. Multivariate analysis methods, such as Generalized Canonical Correlation Analysis (gCCA), have been increasingly employed in fMRI data analysis, due to their ability to overcome this limitation. This study, evaluates the improvement of sensitivity of the GLM, by applying gCCA to fMRI data after standard preprocessing steps. Data from a block-design fMRI experiment was used, where 25 healthy volunteers completed two action observation tasks at 1.5T. Whole brain analysis results indicated that the application of gCCA resulted in significantly higher intensity of activation in several regions in both tasks and helped reveal activation in the primary somatosensory and ventral premotor area, theoretically known to become engaged during action observation. In subject-level ROI analyses, gCCA improved the signal to noise ratio in the averaged timeseries in each preselected ROI, and resulted in increased extent of activation, although peak intensity was considerably higher in just two of them. In conclusion, gCCA is a promising method for improving the sensitivity of conventional statistical modeling in task related fMRI experiments.
一般线性模型(GLM)是功能磁共振成像(fMRI)实验中最常用的信号检测方法,尽管其主要局限性在于未考虑体素之间常见的空间依赖性。多变量分析方法,如广义典型相关分析(gCCA),因其能够克服这一局限性,已越来越多地应用于fMRI数据分析。本研究通过在标准预处理步骤后将gCCA应用于fMRI数据,评估了GLM敏感性的提高。使用了来自一个组块设计fMRI实验的数据,其中25名健康志愿者在1.5T条件下完成了两项动作观察任务。全脑分析结果表明,应用gCCA在两项任务的几个区域中均导致了显著更高的激活强度,并有助于揭示初级体感区和腹侧运动前区的激活,理论上已知这些区域在动作观察期间会被激活。在个体水平的感兴趣区域(ROI)分析中,gCCA提高了每个预选ROI中平均时间序列的信噪比,并导致激活范围增加,尽管仅在其中两个ROI中峰值强度明显更高。总之,gCCA是一种有前景的方法,可提高任务相关fMRI实验中传统统计建模的敏感性。