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时变连接组指纹图谱:利用动态大脑连接模式识别个体和预测更高的认知功能。

Chronnectome fingerprinting: Identifying individuals and predicting higher cognitive functions using dynamic brain connectivity patterns.

机构信息

National Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing, 100875, China.

Beijing Key Laboratory of Brain Imaging and Connectomics, Beijing Normal University, Beijing, 100875, China.

出版信息

Hum Brain Mapp. 2018 Feb;39(2):902-915. doi: 10.1002/hbm.23890. Epub 2017 Nov 15.

Abstract

The human brain is a large, interacting dynamic network, and its architecture of coupling among brain regions varies across time (termed the "chronnectome"). However, very little is known about whether and how the dynamic properties of the chronnectome can characterize individual uniqueness, such as identifying individuals as a "fingerprint" of the brain. Here, we employed multiband resting-state functional magnetic resonance imaging data from the Human Connectome Project (N = 105) and a sliding time-window dynamic network analysis approach to systematically examine individual time-varying properties of the chronnectome. We revealed stable and remarkable individual variability in three dynamic characteristics of brain connectivity (i.e., strength, stability, and variability), which was mainly distributed in three higher order cognitive systems (i.e., default mode, dorsal attention, and fronto-parietal) and in two primary systems (i.e., visual and sensorimotor). Intriguingly, the spatial patterns of these dynamic characteristics of brain connectivity could successfully identify individuals with high accuracy and could further significantly predict individual higher cognitive performance (e.g., fluid intelligence and executive function), which was primarily contributed by the higher order cognitive systems. Together, our findings highlight that the chronnectome captures inherent functional dynamics of individual brain networks and provides implications for individualized characterization of health and disease.

摘要

人类大脑是一个庞大的、相互作用的动态网络,其脑区之间的耦合结构随时间而变化(称为“chronnectome”)。然而,对于chronnectome 的动态特性是否以及如何能够描述个体独特性,例如将个体识别为大脑的“指纹”,我们知之甚少。在这里,我们使用来自人类连接组计划(N=105)的多频段静息态功能磁共振成像数据和滑动时间窗动态网络分析方法,系统地研究了chronnectome 的个体时变特性。我们揭示了脑连接三个动态特征(即强度、稳定性和可变性)的稳定且显著的个体可变性,这些特征主要分布在三个高级认知系统(即默认模式、背侧注意和额顶叶)和两个主要系统(即视觉和感觉运动系统)中。有趣的是,这些脑连接动态特征的空间模式可以成功地以高精度识别个体,并且可以进一步显著预测个体的高级认知表现(例如,流体智力和执行功能),这主要归因于高级认知系统。总之,我们的研究结果强调了 chronnectome 捕捉了个体大脑网络的内在功能动态,并为健康和疾病的个体化特征提供了启示。

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