ESENA: A Novel Spatiotemporal Event Network Information Approach for Mining Scalp EEG Data
Qiwei Dong, Runchen Yang, Xinrui Wang, Zongwen Feng, Chenggan Liu, Shiyu Chen, Yuxi Zhou, Dezhong Yao, Junru Ren, Qi Xu, Li Dong

TL;DR
ESENA is a new method for analyzing EEG data that captures complex spatiotemporal patterns in the brain, revealing insights not found with traditional approaches.
Contribution
ESENA introduces a novel network-based approach to extract spatiotemporal patterns from EEG data.
Findings
ESENA revealed specific spatiotemporal event networks (SENs) in different frequency bands during resting-state EEG.
The method uncovered additional spatiotemporal information in the delta and theta bands during cognitive tasks.
SENs identified by ESENA correlated with behavioral data, showing its potential for deeper brain network analysis.
Abstract
Brain activity possesses unique spatiotemporal characteristics. However, few electroencephalogram (EEG) analysis methods were designed to capture these features. Here, we developed a novel approach to mine spatiotemporal information contained in EEG data. In this work, a novel approach, named EEG Spatiotemporal Event Network Analysis (ESENA), was proposed to fully capture the complex spatiotemporal patterns of EEG data during rich and complex stimulations. The essence of this method is to map power events onto network nodes and define connections on the basis of the temporal sequence of these events, thereby establishing a spatiotemporal network structure. Next, the performance and feasibility of ESENA were tested using three resting‐state and game‐playing state EEG datasets. For eyes‐closed resting‐state EEG, specific patterns of spatiotemporal event networks (SENs) were revealed by…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Neural dynamics and brain function
