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Information Flow Between Resting-State Networks

机译:静止状态网络之间的信息流

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摘要

The resting brain dynamics self-organize into a finite number of correlated patterns known as resting-state networks (RSNs). It is well known that techniques such as independent component analysis can separate the brain activity at rest to provide such RSNs, but the specific pattern of interaction between RSNs is not yet fully understood. To this aim, we propose here a novel method to compute the information flow (IF) between different RSNs from resting-state magnetic resonance imaging. After hemodynamic response function blind deconvolution of all voxel signals, and under the hypothesis that RSNs define regions of interest, our method first uses principal component analysis to reduce dimensionality in each RSN to next compute IF (estimated here in terms of transfer entropy) between the different RSNs by systematically increasing k (the number of principal components used in the calculation). When k=1, this method is equivalent to computing IF using the average of all voxel activities in each RSN. For k≥1, our method calculates the k multivariate IF between the different RSNs. We find that the average IF among RSNs is dimension dependent, increasing from k=1 (i.e., the average voxel activity) up to a maximum occurring at k=5 and to finally decay to zero for k≥10. This suggests that a small number of components (close to five) is sufficient to describe the IF pattern between RSNs. Our method—addressing differences in IF between RSNs for any generic data—can be used for group comparison in health or disease. To illustrate this, we have calculated the inter-RSN IF in a data set of Alzheimer's disease (AD) to find that the most significant differences between AD and controls occurred for k=2, in addition to AD showing increased IF w.r.t. controls. The spatial localization of the k=2 component, within RSNs, allows the characterization of IF differences between AD and controls.
机译:静止的大脑动力学自行组织成有限数量的相关模式,称为静止状态网络(RSN)。众所周知,诸如独立成分分析之类的技术可以将静止时的大脑活动分开,以提供此类RSN,但是尚未完全理解RSN之间相互作用的具体模式。为此,我们在这里提出一种新颖的方法,用于从静止状态磁共振成像计算不同RSN之间的信息流(IF)。在对所有体素信号进行血流动力学响应函数盲解卷积之后,并在RSN定义了感兴趣区域的假设下,我们的方法首先使用主成分分析来降低每个RSN中的维数,然后在两个RSN之间计算IF(以传递熵的形式估算)。通过系统地增加k(计算中使用的主分量的数量)来获得不同的RSN。当k = 1时,此方法等效于使用每个RSN中所有体素活动的平均值计算IF。对于k≥1,我们的方法计算不同RSN之间的k个多元IF。我们发现RSN中的平均IF与尺寸有关,从k = 1(即平均体素活性)增加到在k = 5处出现的最大值,最后在k≥10时衰减到零。这表明少量的分量(接近五个)足以描述RSN之间的IF模式。我们的方法(针对任何通用数据解决RSN之间的IF差异)可用于健康或疾病的组比较。为了说明这一点,我们在阿尔茨海默氏病(AD)数据集中计算了RSN间IF,发现AD与对照组之间的最显着差异发生在k = 2上,此外AD的IF w.r.t.也增加了。控件。 RSN中k = 2分量的空间定位可以表征AD和控件之间的IF差异。

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