4.6 Article

Ensemble Approach for Detection of Depression Using EEG Features

Journal

ENTROPY
Volume 24, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/e24020211

Keywords

depression; electroencephalogram (EEG); feature extraction and selection; machine learning; ensemble learning

Funding

  1. Estonian Centre of Excellence in IT (EXCITE) - European Regional Development Fund

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This research aims to determine the long-lasting effects of depression through EEG signals. After comparing several classifiers and feature selection methods, the results show that the EEG features used for classifying ongoing depression also work for classifying the long-lasting effects of depression.
Depression is a public health issue that severely affects one's well being and can cause negative social and economic effects to society. To raise awareness of these problems, this research aims at determining whether the long-lasting effects of depression can be determined from electroencephalographic (EEG) signals. The article contains an accuracy comparison for SVM, LDA, NB, kNN, and D3 binary classifiers, which were trained using linear (relative band power, alpha power variability, spectral asymmetry index) and nonlinear (Higuchi fractal dimension, Lempel-Ziv complexity, detrended fluctuation analysis) EEG features. The age- and gender-matched dataset consisted of 10 healthy subjects and 10 subjects diagnosed with depression at some point in their lifetime. Most of the proposed feature selection and classifier combinations achieved accuracy in the range of 80% to 95%, and all the models were evaluated using a 10-fold cross-validation. The results showed that the motioned EEG features used in classifying ongoing depression also work for classifying the long-lasting effects of depression.

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