A study of resting-state EEG biomarkers for depression recognition
Shuting Sun, Jianxiu Li, Huayu Chen, Tao Gong, Xiaowei Li, Bin Hu

TL;DR
This study investigates EEG biomarkers, especially phase lagging index (PLI), for depression detection, demonstrating that intrahemispheric PLI features significantly distinguish depressed patients from controls with high accuracy.
Contribution
It identifies intrahemispheric PLI connectivity as a novel biomarker for depression recognition, outperforming other EEG features.
Findings
PLI outperforms linear and nonlinear features in classification accuracy.
Combining all features yields 82.31% accuracy in depression detection.
Intrahemispheric PLI edges are more significant than interhemispheric edges.
Abstract
Background: Depression has become a major health burden worldwide, and effective detection depression is a great public-health challenge. This Electroencephalography (EEG)-based research is to explore the effective biomarkers for depression recognition. Methods: Resting state EEG data was collected from 24 major depressive patients (MDD) and 29 normal controls using 128 channel HydroCel Geodesic Sensor Net (HCGSN). To better identify depression, we extracted different types of EEG features including linear features, nonlinear features and functional connectivity features phase lagging index (PLI) to comprehensively analyze the EEG signals in patients with MDD. And using different feature selection methods and classifiers to evaluate the optimal feature sets. Results: Functional connectivity feature PLI is superior to the linear features and nonlinear features. And when combining all the…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · EEG and Brain-Computer Interfaces · Neural dynamics and brain function
MethodsFeature Selection · Logistic Regression
