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首页> 外文期刊>Journal of healthcare engineering. >Graph Analysis and Visualization for Brain Function Characterization Using EEG Data
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Graph Analysis and Visualization for Brain Function Characterization Using EEG Data

机译:使用脑电图数据进行脑功能表征的图形分析和可视化

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Over the past few years, there has been an increased interest in studying the underlying neural mechanism of cognitive brain activity as well as in diagnosing certain pathologies. Noninvasive imaging modalities such as functional magnetic resonance imaging (fMRI), positron emission tomography (PET), and dynamic signal acquisition techniques such as quantitative electroencephalography (EEG) have been vastly used to estimate cortical connectivity and identify functional interdependencies among synchronized brain lobes. In this area, graph-theoretic concepts and tools are used to describe large scale brain networks while performing cognitive tasks or to characterize certain neuropathologies. Such tools can be of particular value in basic neuroscience and can be potential candidates for future inclusion in a clinical setting. This paper discusses the application of the high time resolution EEG to resolve interdependence patterns using both linear and nonlinear techniques. The network formed by the statistical dependencies between the activations of distinct and often well separated neuronal populations is further analyzed using a number of graph theoretic measures capable of capturing and quantifying its structure and summarizing the information that it contains. Finally, graph visualization reveals the hidden structure of the networks and amplifies human understanding. A number of possible applications of the graph theoretic approach are also listed. A freely available standalone brain visualization tool to benefit the healthcare engineering community is also provided (http://www.ics.forth.gr/bmi/tools.html).
机译:在过去的几年中,人们对研究认知脑活动的潜在神经机制以及诊断某些病理学的兴趣日益浓厚。功能磁共振成像(fMRI),正电子发射断层扫描(PET)等非侵入性成像方式以及定量脑电图(EEG)等动态信号采集技术已被广泛用于评估皮层连通性并识别同步脑叶之间的功能相互依赖性。在这个领域,图论的概念和工具被用来描述大型大脑网络,同时执行认知任务或表征某些神经病理学。此类工具在基础神经科学中可能具有特殊价值,并且可能是将来纳入临床环境的潜在候选者。本文讨论了使用线性和非线性技术的高分辨率脑电图在解决相互依存模式中的应用。使用许多能够捕获和量化其结构并汇总其所包含信息的图形理论方法,进一步分析由不同且经常分离得很好的神经元群体的激活之间的统计依赖性所形成的网络。最后,图形可视化揭示了网络的隐藏结构并增强了人们的理解力。图论方法的许多可能的应用也被列出。还提供了一个免费的独立的大脑可视化工具,可以使医疗保健工程界受益(http://www.ics.forth.gr/bmi/tools.html)。

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