首页> 美国卫生研究院文献>PLoS Computational Biology >Modeling of Large-Scale Functional Brain Networks Based on Structural Connectivity from DTI: Comparison with EEG Derived Phase Coupling Networks and Evaluation of Alternative Methods along the Modeling Path
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Modeling of Large-Scale Functional Brain Networks Based on Structural Connectivity from DTI: Comparison with EEG Derived Phase Coupling Networks and Evaluation of Alternative Methods along the Modeling Path

机译:基于DTI的结构连通性的大规模功能性脑网络建模:与EEG衍生相耦合网络的比较以及沿建模路径的替代方法的评估

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摘要

In this study, we investigate if phase-locking of fast oscillatory activity relies on the anatomical skeleton and if simple computational models informed by structural connectivity can help further to explain missing links in the structure-function relationship. We use diffusion tensor imaging data and alpha band-limited EEG signal recorded in a group of healthy individuals. Our results show that about 23.4% of the variance in empirical networks of resting-state functional connectivity is explained by the underlying white matter architecture. Simulating functional connectivity using a simple computational model based on the structural connectivity can increase the match to 45.4%. In a second step, we use our modeling framework to explore several technical alternatives along the modeling path. First, we find that an augmentation of homotopic connections in the structural connectivity matrix improves the link to functional connectivity while a correction for fiber distance slightly decreases the performance of the model. Second, a more complex computational model based on Kuramoto oscillators leads to a slight improvement of the model fit. Third, we show that the comparison of modeled and empirical functional connectivity at source level is much more specific for the underlying structural connectivity. However, different source reconstruction algorithms gave comparable results. Of note, as the fourth finding, the model fit was much better if zero-phase lag components were preserved in the empirical functional connectome, indicating a considerable amount of functionally relevant synchrony taking place with near zero or zero-phase lag. The combination of the best performing alternatives at each stage in the pipeline results in a model that explains 54.4% of the variance in the empirical EEG functional connectivity. Our study shows that large-scale brain circuits of fast neural network synchrony strongly rely upon the structural connectome and simple computational models of neural activity can explain missing links in the structure-function relationship.
机译:在这项研究中,我们调查快速振荡活动的锁相是否依赖于解剖骨架,以及由结构连通性告知的简单计算模型是否可以帮助进一步解释结构-功能关系中的缺失环节。我们使用扩散张量成像数据和记录在一组健康个体中的alpha带限脑电信号。我们的结果表明,静止状态功能连通性经验网络中约23.4%的方差由基本的白质体系解释。使用基于结构连接性的简单计算模型来模拟功能连接性可以将匹配度提高到45.4%。在第二步中,我们使用建模框架来探索建模路径上的几种技术替代方案。首先,我们发现结构连接矩阵中同位连接的增加改善了功能连接的链接,而光纤距离的校正则稍微降低了模型的性能。其次,基于仓本振子的更复杂的计算模型导致模型拟合的轻微改善。第三,我们表明,在源代码级别上对建模功能和经验功能连接的比较对于基础结构连接更加具体。但是,不同的源重构算法给出了可比的结果。值得注意的是,作为第四个发现,如果将零相位滞后分量保留在经验功能连接器中,则模型拟合会更好,这表明发生了大量功能相关的同步,且接近零或零相位滞后。管道中每个阶段的最佳性能替代方案的组合产生了一个模型,该模型可以解释经验EEG功能连通性的54.4%的差异。我们的研究表明,快速神经网络同步的大规模脑电路强烈依赖于结构连接体,而简单的神经活动计算模型可以解释结构-功能关系中的缺失环节。

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