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Population Inference for Node Level Differences in Multi-subject Functional Connectivity

机译:多主体功能连接中节点级别差异的总体推断

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Using Gaussian graphical models as the basis for functional connectivity, we propose new models and test statistics to detect whether subject covariates predict differences in network metrics in a population of subjects. Our approach emphasizes the need to account for errors in estimating subject level networks when conducting inference at the population level. Using simulations, we show that failure to do so reduces statistical power in detecting covariate effects for realistic graph structures. We illustrate the benefits of our procedure for clinical neuroimaging using a resting-state fMRI study of neurofibromatosis-I.
机译:使用高斯图形模型作为功能连接的基础,我们提出了新的模型和测试统计数据来检测主体协变量是否预测受试者群体中网络指标的差异。我们的方法强调需要在人口水平进行推断时估算主题级网络的错误。使用模拟,我们表明未能这样做降低统计功率检测现实图形结构的协变量。我们说明了我们使用休息状态的神经纤维瘤病-1的临床神经模仿程序的益处。

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