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Estimating brain network activity through back-projection of ICA components to GLM maps

机译:通过对GLM地图的ICA组件的后投影估算大脑网络活动

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摘要

Independent component analysis (ICA) is a data-driven approach frequently used in neuroimaging to model functional brain networks. Despite ICA's increasing popularity, methods for replicating published ICA components across independent datasets have been underemphasized. Traditionally, the task-dependent activation of a component is evaluated by first back-projecting the component to a functional MRI (fMRI) dataset, then performing general linear modeling (GLM) on the resulting timecourse. We propose the alternative approach of back-projecting the component directly to univariate GLM results. Using a sample of 37 participants performing the Multi-Source Interference Task, we demonstrate these two approaches to yield identical results. Furthermore, while replicating an ICA component requires back-projection of component beta-values (βs), components are typically depicted only by t-scores. We show that while back-projection of component βs and t-scores yielded highly correlated results (ρ= 0.95), group-level statistics differed between the two methods. We conclude by stressing the importance of reporting ICA component βs, rather than component t-scores, so that functional networks may be independently replicated across datasets.
机译:独立分量分析(ICA)是一种经常用于模型功能性脑网络的数据驱动方法。尽管ICA越来越受欢迎,但对独立数据集的复制发布的ICA组件的方法受到强制。传统上,通过首先将组件重新投影到功能MRI(FMRI)数据集,然后在得到的时间表上执行一般线性建模(GLM)来评估组件的任务依赖性激活。我们提出了将组件的替代方法直接返回到单变量GLM结果。使用37名参与者进行执行多源干扰任务的样本,我们展示了这两种方法以产生相同的结果。此外,在复制ICA组分的同时需要对组分β值(βS)的后投影,通常仅被T分数描绘成分。我们表明,虽然组分βS和T分数的后投影产生高度相关的结果(ρ= 0.95),但两种方法之间的组级统计值不同。我们通过强调报告ICA组件βS而不是组件T分数的重要性,使得功能网络可以在数据集中独立复制。

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