Literature DB >> 23122719

Classifying depression patients and normal subjects using machine learning techniques and nonlinear features from EEG signal.

Behshad Hosseinifard1, Mohammad Hassan Moradi, Reza Rostami.   

Abstract

Diagnosing depression in the early curable stages is very important and may even save the life of a patient. In this paper, we study nonlinear analysis of EEG signal for discriminating depression patients and normal controls. Forty-five unmedicated depressed patients and 45 normal subjects were participated in this study. Power of four EEG bands and four nonlinear features including detrended fluctuation analysis (DFA), higuchi fractal, correlation dimension and lyapunov exponent were extracted from EEG signal. For discriminating the two groups, k-nearest neighbor, linear discriminant analysis and logistic regression as the classifiers are then used. Highest classification accuracy of 83.3% is obtained by correlation dimension and LR classifier among other nonlinear features. For further improvement, all nonlinear features are combined and applied to classifiers. A classification accuracy of 90% is achieved by all nonlinear features and LR classifier. In all experiments, genetic algorithm is employed to select the most important features. The proposed technique is compared and contrasted with the other reported methods and it is demonstrated that by combining nonlinear features, the performance is enhanced. This study shows that nonlinear analysis of EEG can be a useful method for discriminating depressed patients and normal subjects. It is suggested that this analysis may be a complementary tool to help psychiatrists for diagnosing depressed patients.
Copyright © 2012 Elsevier Ireland Ltd. All rights reserved.

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Year:  2012        PMID: 23122719     DOI: 10.1016/j.cmpb.2012.10.008

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  46 in total

1.  Automatic detection of sleep apnea based on EEG detrended fluctuation analysis and support vector machine.

Authors:  Jing Zhou; Xiao-ming Wu; Wei-jie Zeng
Journal:  J Clin Monit Comput       Date:  2015-02-08       Impact factor: 2.502

2.  A machine learning framework involving EEG-based functional connectivity to diagnose major depressive disorder (MDD).

Authors:  Wajid Mumtaz; Syed Saad Azhar Ali; Mohd Azhar Mohd Yasin; Aamir Saeed Malik
Journal:  Med Biol Eng Comput       Date:  2017-07-13       Impact factor: 2.602

3.  Long range temporal correlations in EEG oscillations of subclinically depressed individuals: their association with brooding and suppression.

Authors:  Xavier Bornas; Aina Fiol-Veny; Maria Balle; Alfonso Morillas-Romero; Miquel Tortella-Feliu
Journal:  Cogn Neurodyn       Date:  2014-10-12       Impact factor: 5.082

4.  Classification of normal and depressed EEG signals based on centered correntropy of rhythms in empirical wavelet transform domain.

Authors:  Hesam Akbari; Muhammad Tariq Sadiq; Ateeq Ur Rehman
Journal:  Health Inf Sci Syst       Date:  2021-02-06

5.  Resting-state EEG delta power is associated with psychological pain in adults with a history of depression.

Authors:  Esther L Meerwijk; Judith M Ford; Sandra J Weiss
Journal:  Biol Psychol       Date:  2015-01-17       Impact factor: 3.251

6.  Mild Depression Detection of College Students: an EEG-Based Solution with Free Viewing Tasks.

Authors:  Xiaowei Li; Bin Hu; Ji Shen; Tingting Xu; Martyn Retcliffe
Journal:  J Med Syst       Date:  2015-10-21       Impact factor: 4.460

7.  Classification of Depression Patients and Normal Subjects Based on Electroencephalogram (EEG) Signal Using Alpha Power and Theta Asymmetry.

Authors:  Shalini Mahato; Sanchita Paul
Journal:  J Med Syst       Date:  2019-12-13       Impact factor: 4.460

8.  The successful discrimination of depression from EEG could be attributed to proper feature extraction and not to a particular classification method.

Authors:  Milena Čukić; Miodrag Stokić; Slobodan Simić; Dragoljub Pokrajac
Journal:  Cogn Neurodyn       Date:  2020-03-25       Impact factor: 5.082

9.  Major depressive disorder diagnosis based on effective connectivity in EEG signals: a convolutional neural network and long short-term memory approach.

Authors:  Abdolkarim Saeedi; Maryam Saeedi; Arash Maghsoudi; Ahmad Shalbaf
Journal:  Cogn Neurodyn       Date:  2020-07-26       Impact factor: 5.082

10.  Depression detection from social network data using machine learning techniques.

Authors:  Md Rafiqul Islam; Muhammad Ashad Kabir; Ashir Ahmed; Abu Raihan M Kamal; Hua Wang; Anwaar Ulhaq
Journal:  Health Inf Sci Syst       Date:  2018-08-27
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