Key Laboratory of Behavioral Science, Laboratory for Functional Connectome and Development, and Magnetic Resonance Imaging Research Center, Institute of Psychology, Chinese Academy of Sciences, Beijing, China.
Neuroimage. 2012 Oct 15;63(1):403-14. doi: 10.1016/j.neuroimage.2012.06.060. Epub 2012 Jul 9.
Existing spatial independent component analysis (ICA) methods for multi-subject fMRI datasets have mainly focused on detecting common components across subjects, under the assumption that all the subjects in a group share the same (identical) components. However, as a data-driven approach, ICA could potentially serve as an exploratory tool at multi-subject level, and help us uncover inter-subject differences in patterns of connectivity (e.g., find subtypes in patient populations). In this work, we propose a methodology named gRAICAR that exploits the data-driven nature of ICA to allow discovery of sub-groupings of subjects based on reproducibility of their ICA components. This technique allows us not only to find highly reproducible common components across subjects but also to explore (without a priori subject groupings) components that could classify all subjects into sub-groups. gRAICAR generalizes the reproducibility framework previously developed for single subjects (Ranking and averaging independent component analysis by reproducibility-RAICAR-Yang et al., Hum Brain Mapp, 2008) to multiple-subject analysis. For each group-level component, gRAICAR generates its reproducibility matrix and further computes two metrics, inter-subject consistency and intra-subject reliability, to characterize inter-subject variability and reflect contributions from individual subjects. Nonparametric tests are employed to examine the significance of both the inter-subject consistency and the separation of subject groups reflected in the component. Our validations based on simulated and experimental resting-state fMRI datasets demonstrated the advantage of gRAICAR in extracting features reflecting potential subject groupings. It may facilitate discovery of the underlying brain functional networks with substantial potential to inform our understandings of development, neurodegenerative conditions, and psychiatric disorders.
现有的多体素功能磁共振成像 (fMRI) 数据的空间独立成分分析 (ICA) 方法主要集中于检测组内共同成分,其假设是组内所有个体都共享相同(相同)的成分。然而,作为一种数据驱动的方法,ICA 可以作为一种探索性的工具在多体素水平上使用,并帮助我们发现连接模式中的个体间差异(例如,在患者群体中找到亚型)。在这项工作中,我们提出了一种名为 gRAICAR 的方法,利用 ICA 的数据驱动性质,允许根据其 ICA 成分的可重复性来发现受试者的分组。该技术不仅可以找到在个体间高度可重复的共同成分,还可以探索(无需事先分组)可以将所有个体分类为亚组的成分。gRAICAR 将先前为单个体开发的可重复性框架(通过可重复性-RAICAR-Yang 等人对排名和平均独立成分分析进行了推广,Hum Brain Mapp,2008)推广到多体素分析。对于每个组水平的成分,gRAICAR 生成其可重复性矩阵,并进一步计算两个度量,个体间一致性和个体内可靠性,以表征个体间的可变性并反映个体的贡献。非参数检验用于检验组件中反映的个体间一致性和个体分组分离的显著性。我们基于模拟和实验静息态 fMRI 数据集的验证表明了 gRAICAR 在提取反映潜在个体分组特征方面的优势。它可以促进对潜在脑功能网络的发现,这对于我们理解发展、神经退行性疾病和精神障碍具有重要意义。