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

Authors :
Gunawardena, Rajintha
Sarrigiannis, Ptolemaios G.
Blackburn, Daniel J.
He, Fei
Source :
Neuroscience. Jul2023, Vol. 523, p140-156. 17p.
Publication Year :
2023

Abstract

[Display omitted] • New EEG channel selection method integrating (non) linear functional connectivity (FC). • A generic measure of similarity using kernel matrix from nonlinear manifold learning. • FC changes in Alzheimer's between the occipital and regions along the frontoparietal. • FC changes along the frontoparietal and rest of the EEG are important in Alzheimer's. Dynamical, causal, and cross-frequency coupling analysis using the electroencephalogram (EEG) has gained significant attention for diagnosing and characterizing neurological disorders. Selecting important EEG channels is crucial for reducing computational complexity in implementing these methods and improving classification accuracy. In neuroscience, measures of (dis) similarity between EEG channels are often used as functional connectivity (FC) features, and important channels are selected via feature selection. Developing a generic measure of (dis) similarity is important for FC analysis and channel selection. In this study, learning of (dis) similarity information within the EEG is achieved using kernel-based nonlinear manifold learning. The focus is on FC changes and, thereby, EEG channel selection. Isomap and Gaussian Process Latent Variable Model (Isomap-GPLVM) are employed for this purpose. The resulting kernel (dis) similarity matrix is used as a novel measure of linear and nonlinear FC between EEG channels. The analysis of EEG from healthy controls (HC) and patients with mild to moderate Alzheimer's disease (AD) are presented as a case study. Classification results are compared with other commonly used FC measures. Our analysis shows significant differences in FC between bipolar channels of the occipital region and other regions (i.e. parietal, centro-parietal, and fronto-central) between AD and HC groups. Furthermore, our results indicate that FC changes between channels along the fronto-parietal region and the rest of the EEG are important in diagnosing AD. Our results and its relation to functional networks are consistent with those obtained from previous studies using fMRI, resting-state fMRI and EEG. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03064522
Volume :
523
Database :
Academic Search Index
Journal :
Neuroscience
Publication Type :
Academic Journal
Accession number :
164858646
Full Text :
https://doi.org/10.1016/j.neuroscience.2023.05.033