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Detecting Connectivity Changes in Autism Spectrum Disorder Using Large-Scale Granger Causality

机译:使用大规模格兰杰因果关系检测自闭症谱系障碍的连通性变化

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We investigated functional MRI connectivity changes in brain networks of subjects with Autism Spectrum Disorder(ASD) using large-scale Granger causality (lsGC), which can provide a truly multivariate representation of directedconnectivity. To this end, we investigated the use of lsGC for capturing pair-wise interactions between regional timeseriesextracted using ROIs from different resting-state brain networks. We studied these measures in a datasetcomprising 59 subjects (34 healthy, 25 autistic; age-matched) from the Autism Brain Imaging Data Exchange (ABIDE)project. A general linear model was used to study the differences between the two groups when controlling for age whencomparing: (i) connectivity strength and diversity of each node in the network, (ii) global graph measures, and (iii)regional graph statistics. Clustering coefficient and small-worldness properties were significantly (p<0.05) increased inASD subjects. Furthermore, we were able to localize differences in connectivity strength within the nodes of the frontoparietal,cingulo-opercular, as well as the sensorimotor network, in line with previously published literature. Forcomparison, a corresponding analysis using correlation-based connectivity did not reveal any significant differencesbetween groups. Our results indicate that lsGC, in combination with a network analysis framework can serve as analternative methodology for the analysis of clinical resting-state fMRI data.
机译:我们研究了自闭症谱系障碍患者大脑网络中功能性MRI连通性的变化 (ASD)使用大规模格兰杰因果关系(lsGC),它可以提供有向数的真实多变量表示 连接性。为此,我们调查了使用lsGC捕获区域时间序列之间的成对交互的情况 使用来自不同静止状态大脑网络的ROI提取。我们在数据集中研究了这些指标 包括来自自闭症脑成像数据交换(ABIDE)的59位受试者(34位健康,25位自闭症;年龄匹配) 项目。当控制年龄时,使用通用线性模型研究两组之间的差异。 比较:(i)网络中每个节点的连接强度和多样性,(ii)全局图度量,以及(iii) 区域图统计。聚类系数和小世界性显着增加(p <0.05)。 ASD主题。此外,我们能够定位额顶节点之间的连接强度差异, 耳鞘神经元以及感觉运动网络与先前发表的文献一致。为了 比较,使用基于相关性的连通性的相应分析没有发现任何显着差异 组之间。我们的结果表明,lsGC与网络分析框架结合可以用作 临床静息状态功能磁共振成像数据分析的另一种方法。

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