全脑动态网络分析的混合建模框架。

IF 3.1
Mohsen Bahrami, Paul J Laurienti, Heather M Shappell, Dale Dagenbach, Sean L Simpson
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引用次数: 1

摘要

近年来,动态脑网络分析这一新兴领域受到了广泛关注。然而,多变量统计框架的发展,允许检查表型特征和大脑系统级属性的动态模式之间的关联,并得出关于这种关联的统计推断,在很大程度上滞后。为了满足这一需求,我们开发了一个混合建模框架,允许评估任何期望的表型与全脑连接和拓扑的动态模式之间的关系。这个新颖的框架也允许模拟相对于期望协变量的动态大脑网络。与目前主要使用数据驱动方法的工具不同,我们基于模型的方法可以将神经科学假设与分析方法结合起来。我们通过使用来自人类连接组项目(HCP)研究的200名参与者的静息状态功能磁共振成像(rfMRI)数据,证明了该模型在识别流体智力和动态脑网络之间关系方面的实用性。我们还演示了该模型在群体和个人水平上模拟动态大脑网络的效用。据我们所知,这种方法提供了第一种基于模型的统计方法,用于检查大脑系统级属性的动态模式及其与表型特征的关系,以及模拟动态大脑网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A mixed-modeling framework for whole-brain dynamic network analysis.

A mixed-modeling framework for whole-brain dynamic network analysis.

A mixed-modeling framework for whole-brain dynamic network analysis.

A mixed-modeling framework for whole-brain dynamic network analysis.

The emerging area of dynamic brain network analysis has gained considerable attention in recent years. However, development of multivariate statistical frameworks that allow for examining the associations between phenotypic traits and dynamic patterns of system-level properties of the brain, and drawing statistical inference about such associations, has largely lagged behind. To address this need we developed a mixed-modeling framework that allows for assessing the relationship between any desired phenotype and dynamic patterns of whole-brain connectivity and topology. This novel framework also allows for simulating dynamic brain networks with respect to desired covariates. Unlike current tools, which largely use data-driven methods, our model-based method enables aligning neuroscientific hypotheses with the analytic approach. We demonstrate the utility of this model in identifying the relationship between fluid intelligence and dynamic brain networks by using resting-state fMRI (rfMRI) data from 200 participants in the Human Connectome Project (HCP) study. We also demonstrate the utility of this model to simulate dynamic brain networks at both group and individual levels. To our knowledge, this approach provides the first model-based statistical method for examining dynamic patterns of system-level properties of the brain and their relationships to phenotypic traits as well as simulating dynamic brain networks.

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