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Enhancing reproducibility of fMRI statistical maps using generalized canonical correlation analysis in NPAIRS framework

机译:在NPAIRS框架中使用广义规范相关分析增强fMRI统计图的可重复性

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摘要

Common fMRI data processing techniques usually minimize a temporal cost function or fit a temporal model to extract an activity map. Here, we focus on extracting a highly, spatially reproducible statistical parametric map (SPM) from fMRI data using a cost function that does not depend on a model of the subjects' temporal response. Based on a generalized version of canonical correlation analysis (gCCA), we propose a method to extract a highly reproducible map by maximizing the sum of pair-wise correlations between some maps. In a group analysis, each map is calculated from a linear combination of fMRI scans of a subset of subjects under study. The proposed method is applied to BOLD fMRI datasets without any spatial smoothing from 10 subjects performing a simple reaction time (RT) task. Using the NPAIRS split-half resampling framework with a reproducibility measure based on SPM correlations, we compare the proposed approach with canonical variate analysis (CVA) and a simple general linear model (GLM). gCCA provides statistical parametric maps with higher reproducibility than CVA and GLM with correlation reproducibilities across independent split-half SPMs of 0.78, 0.46, and 0.41, respectively. Our results show that gCCA is an efficient approach for extracting the default mode network, assessing brain connectivity, and processing event-related and resting-state datasets in which the temporal BOLD signal varies from subject to subject.
机译:常用的fMRI数据处理技术通常会最小化时间成本函数或拟合时间模型以提取活动图。在这里,我们专注于使用不依赖于受试者时间反应模型的代价函数从fMRI数据中提取高度空间可再现的统计参数图(SPM)。基于规范化相关分析(gCCA)的通用版本,我们提出了一种通过最大化某些图之间的成对相关总和来提取高度可复制图的方法。在小组分析中,每个图都是根据研究对象的子集的fMRI扫描的线性组合计算得出的。所提出的方法适用于BOLD fMRI数据集,而无需对10位执行简单反应时间(RT)任务的受试者进行任何空间平滑处理。使用具有基于SPM相关性的重现性度量的NPAIRS分半重采样框架,我们将建议的方法与规范变量分析(CVA)和简单的通用线性模型(GLM)进行了比较。与CVA和GLM相比,gCCA提供的统计参数图具有更高的重现性,独立半SPM的相关重现性分别为0.78、0.46和0.41。我们的结果表明,gCCA是一种有效的方法,可用于提取默认模式网络,评估大脑的连通性以及处理事件相关和静止状态的数据集,其中时间BOLD信号因受试者而异。

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