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A mixed-modeling framework for analyzing multitask whole-brain network data

机译:用于分析多任务全脑网络数据的混合建模框架

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摘要

The emerging area of brain network analysis considers the brain as a system, providing profound insight into links between system-level properties and health outcomes. Network science has facilitated these analyses and our understanding of how the brain is organized. While network science has catalyzed a paradigmatic shift in neuroscience, methods for statistically analyzing networks have lagged behind. To address this for cross-sectional network data, we developed a mixed-modeling framework that enables quantifying the relationship between phenotype and connectivity patterns, predicting connectivity structure based on phenotype, simulating networks to gain a better understanding of topological variability, and thresholding individual networks leveraging group information. Here we extend this comprehensive approach to enable studying system-level brain properties across multiple tasks. We focus on rest-to-task network changes, but this extension is equally applicable to the assessment of network changes for any repeated task paradigm. Our approach allows (a) assessing population network differences in changes between tasks, and how these changes relate to health outcomes; (b) assessing individual variability in network differences in changes between tasks, and how this variability relates to health outcomes; and (c) deriving more accurate and precise estimates of the relationships between phenotype and health outcomes within a given task.
机译:大脑网络分析的新兴领域将大脑视为一个系统,可以深入了解系统级属性与健康结果之间的联系。网络科学促进了这些分析以及我们对大脑组织方式的理解。虽然网络科学促进了神经科学的范式转变,但对网络进行统计分析的方法却落后了。为了解决横截面网络数据的问题,我们开发了一种混合模型框架,该框架可量化表型和连通性模式之间的关系,基于表型预测连通性结构,模拟网络以更好地理解拓扑可变性以及对单个网络设定阈值利用团体信息。在这里,我们扩展了这种全面的方法,以便能够研究多个任务的系统级大脑特性。我们专注于从任务到任务的网络更改,但是此扩展同样适用于评估任何重复任务范例的网络更改。我们的方法允许(a)评估任务之间变化的人口网络差异,以及这些变化与健康结果的关系; (b)评估任务之间变化的网络差异中的个体变异性,以及这种变异性与健康结果之间的关系; (c)得出给定任务中表型与健康结果之间关系的更准确,更精确的估计。

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