Kernel-based Nonlinear Manifold Learning for EEG Functional Connectivity Analysis with Application to Alzheimer's Disease

R. Gunawardena, P. Sarrigiannis, D. Blackburn, F. He
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引用次数: 1

Abstract

Dynamical, causal and cross-frequency coupling analysis using the EEG has received significant interest for the analysis and diagnosis of neurological disorders [1]–[3]. Due to the high computational requirements needed for some of these methods, EEG channel selection is crucial [4]. Functional connectivity (FC) between EEG channels is often used for channel selection and connectivity analysis [4, S, 6]. Ideally, in the case of selecting channels for dynamical and causal analysis, FC methods should be able to account for linear and nonlinear spatial and temporal interactions between EEG channels. In neuroscience, FC is quantified using different measures of (dis) similarity to assess the statistical dependence between two signals [5]. However, the interpretation of FC measures can differ significantly from one measure to another[5, 7]. In the early diagnosis of AD, [7] showed correlations among various (dis)similarity measures, and therefore these measures can be grouped. Thus, one from each is sufficient to extract information from the data [7]. Therefore, the development of a generic measure of (dis)similarity is important in FC analysis.
基于核的非线性流形学习脑电功能连通性分析及其在阿尔茨海默病中的应用
利用脑电图进行动态、因果和交叉频率耦合分析在神经系统疾病的分析和诊断方面受到了极大的关注[1]-[3]。由于其中一些方法需要很高的计算量,因此EEG通道选择至关重要[4]。脑电信号通道间的功能连通性(FC)常用于通道选择和连通性分析[4,S, 6]。理想情况下,在选择通道进行动态和因果分析的情况下,FC方法应该能够考虑EEG通道之间的线性和非线性时空相互作用。在神经科学中,FC使用不同的(非)相似性度量来量化,以评估两个信号之间的统计依赖性[5]。然而,不同测量方法对FC测量的解释可能存在显著差异[5,7]。在AD的早期诊断中,[7]显示了各种(非)相似性度量之间的相关性,因此这些度量可以进行分组。因此,各取一个就足以从数据中提取信息[7]。因此,开发一种通用的(非)相似性度量在FC分析中是重要的。
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