大脑结构-功能耦合是跨多个频带的个体所特有的:一种图形信号处理研究

A. Griffa, M. Preti
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引用次数: 0

摘要

大脑功能活动与基础结构之间的关系是复杂的,并且根据特定的大脑区域而变化。近年来,我们利用图信号处理引入了结构去耦指数(SDI),这是一种基于功能活动图谱滤波的量化脑区结构-功能耦合的新指标。在静息状态功能磁共振成像可获得的慢时间尺度上,SDI显示出从单峰(更耦合)到跨峰(更自由)的有意义的空间梯度。它在大脑指纹识别方面也表现出色;也就是说,个体可以根据他们的SDI进行近乎完美的分类。本文采用静息状态脑磁图(MEG)对84名健康受试者进行快速时间尺度的结构-功能耦合及其个体特异性研究。我们发现MEG SDI形成了一个皮层梯度,从任务阳性区域,高度耦合,到任务阴性区域,高度解耦。SDI对个体有很大的特异性,在β和α波段具有最大的主题分类准确性。我们得出结论,结构-功能耦合在研究的时间尺度上发生了变化,并提供了休息时个体大脑组织的丰富特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain structure-function coupling is unique to individuals across multiple frequency bands: a graph signal processing study
The relation between brain functional activity and the underlying structure is complex and varies depending on the specific brain region. Recently, we used graph signal processing to introduce the structural-decoupling index (SDI), a novel metric quantifying structure-function coupling in brain regions, based on graph spectral filtering of functional activity. At slow temporal scales accessible with resting-state functional magnetic resonance imaging, the SDI showed a meaningful spatial gradient from unimodal (more coupled) to transmodal regions (more liberal). It also showed to perform very well for brain fingerprinting; i.e., individuals could be classified with near perfect accuracy based on their SDI. Here, we investigate structure-function coupling at faster temporal scales and its specificity to individuals, by means of resting-state magnetoencephalography (MEG) of 84 healthy subjects. We found that the MEG SDI forms a cortical gradient from task-positive regions, more coupled, to task-negative regions, highly decoupled. Great specificity of the SDI to individuals was confirmed, with largest subject classification accuracies in the beta and alpha bands. We conclude that structure-function coupling changes across temporal scales of investigation and provides rich signatures of individual brain organization at rest.
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