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脑结构连通性预测脑功能复杂性:基于扩散张量成像得出的中心性解释了功能磁共振成像信号分形特性的方差。

Brain Structural Connectivity Predicts Brain Functional Complexity: Diffusion Tensor Imaging Derived Centrality Accounts for Variance in Fractal Properties of Functional Magnetic Resonance Imaging Signal.

作者信息

Neudorf Josh, Ekstrand Chelsea, Kress Shaylyn, Borowsky Ron

机构信息

Cognitive Neuroscience Lab, Department of Psychology, University of Saskatchewan, 9 Campus Dr., Saskatoon, SK S7N 5A5, Canada.

出版信息

Neuroscience. 2020 Jul 1;438:1-8. doi: 10.1016/j.neuroscience.2020.04.048. Epub 2020 May 6.

DOI:10.1016/j.neuroscience.2020.04.048
PMID:32387644
Abstract

The complexity of brain activity has recently been investigated using the Hurst exponent (H), which describes the extent to which functional magnetic resonance imaging (fMRI) blood oxygen-level dependent (BOLD) activity is simple vs. complex. For example, research has demonstrated that fMRI activity is more complex before than after consumption of alcohol and during task than resting state. The measurement of H in fMRI is a novel method that requires the investigation of additional factors contributing to complexity. Graph theory metrics of centrality can assess how centrally important to the brain network each region is, based on diffusion tensor imaging (DTI) counts of probabilistic white matter (WM) tracts. DTI derived centrality was hypothesized to account for the complexity of functional activity, based on the supposition that more sources of information to integrate should result in more complex activity. FMRI BOLD complexity as measured by H was associated with five brain region centrality measures: degree, eigenvector, PageRank, current flow betweenness, and current flow closeness centrality. Multiple regression analyses demonstrated that eigenvector centrality was the most robust predictor of complexity, whereby greater centrality was associated with increased complexity (lower H). Regions known to be highly connected, including the thalamus and hippocampus, notably were among the highest in centrality and complexity. This research has led to a greater understanding of how brain region characteristics such as DTI centrality relate to the novel Hurst exponent approach for assessing brain activity complexity, and implications for future research that employ these measures are discussed.

摘要

最近,人们使用赫斯特指数(H)对大脑活动的复杂性进行了研究,该指数描述了功能磁共振成像(fMRI)血氧水平依赖(BOLD)活动的简单程度与复杂程度。例如,研究表明,饮酒前的fMRI活动比饮酒后的活动更复杂,且任务期间的活动比静息状态下的活动更复杂。在fMRI中测量H是一种新方法,需要研究影响复杂性的其他因素。基于概率性白质(WM)束的扩散张量成像(DTI)计数,中心性的图论指标可以评估每个区域对脑网络的中心重要性。基于更多信息源需要整合会导致更复杂活动的假设,DTI衍生的中心性被认为可以解释功能活动的复杂性。通过H测量的fMRI BOLD复杂性与五种脑区中心性测量指标相关:度中心性、特征向量中心性、PageRank、电流介数中心性和电流接近中心性。多元回归分析表明,特征向量中心性是复杂性最有力的预测指标,中心性越高,复杂性越高(H越低)。已知高度连接的区域,包括丘脑和海马体,在中心性和复杂性方面显著处于最高水平。这项研究使人们对诸如DTI中心性等脑区特征如何与评估大脑活动复杂性的新型赫斯特指数方法相关联有了更深入的理解,并讨论了采用这些测量方法对未来研究的意义。

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