Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)

Recently, Electroencephalogram (EEG)-based computer-aided (CAD) techniques have shown their promise as decision-making tools to diagnose major depressive disorder (MDD) or simply depression. Although the research results have motivated the use of CAD techniques to help assist psychiatrists in clinic...

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Main Authors: Mumtaz, W., Xia, L., Ali, S.S.A., Yasin, M.A.M., Hussain, M., Malik, A.S.
Format: Article
Published: Elsevier Ltd 2017
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-84979895671&doi=10.1016%2fj.bspc.2016.07.006&partnerID=40&md5=c4c7aca0d4aba36b0ed6a72efdd176a3
http://eprints.utp.edu.my/19873/
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spelling my.utp.eprints.198732018-04-22T13:12:29Z Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD) Mumtaz, W. Xia, L. Ali, S.S.A. Yasin, M.A.M. Hussain, M. Malik, A.S. Recently, Electroencephalogram (EEG)-based computer-aided (CAD) techniques have shown their promise as decision-making tools to diagnose major depressive disorder (MDD) or simply depression. Although the research results have motivated the use of CAD techniques to help assist psychiatrists in clinics yet their clinical translation has been less clear and remains a research topic. In this paper, a proposed machine learning (ML) scheme was tested and validated with resting-state EEG data involving 33 MDD patients and 30 healthy controls. The EEG-derived measures such as power of different EEG frequency bands and EEG alpha interhemispheric asymmetry were investigated as input features to the proposed ML scheme to discriminate the MDD patients and healthy controls, and to prove their feasibility for diagnosing depression. The acquired EEG data were subjected to noise removal and feature extraction. As a result, a data matrix was constructed by the columns-wise concatenation of the extracted features. Furthermore, the z-score standardization was performed to standardize each column of the data matrix according to its mean and variance. The data matrix may have redundant and irrelevant features; therefore, to determine the most significant features, a weight was assigned to each feature based on its ability to separate the target classes according to the criterion, i.e., receiver operating characteristics (roc). Hence, only the most significant features were used for testing and training the classifier models: Logistic regression (LR), Support vector machine (SVM), and Naïve Bayesian (NB). Finally, the classifier models were validated with 10-fold cross-validation that has provided the performance metrics such as test accuracy, sensitivity, and specificity. As a result of the investigations, most significant features such as EEG signal power and EEG alpha interhemispheric asymmetry from the brain areas such as frontal, temporal, parietal and occipital were found significant. In addition, the proposed ML framework proved automatic identification of aberrant EEG patterns specific to disease conditions and provide high classification results i.e., LR classifier (accuracy = 97.6, sensitivity = 96.66, specificity = 98.5), NB classification (accuracy = 96.8, sensitivity = 96.6, specificity = 97.02), and SVM (accuracy = 98.4, sensitivity = 96.66, specificity = 100). In conclusion, the proposed ML scheme along with the EEG signal power and EEG alpha interhemispheric asymmetry are proved suitable as clinical diagnostic tools for MDD. © 2016 Elsevier Ltd Elsevier Ltd 2017 Article PeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-84979895671&doi=10.1016%2fj.bspc.2016.07.006&partnerID=40&md5=c4c7aca0d4aba36b0ed6a72efdd176a3 Mumtaz, W. and Xia, L. and Ali, S.S.A. and Yasin, M.A.M. and Hussain, M. and Malik, A.S. (2017) Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD). Biomedical Signal Processing and Control, 31 . pp. 108-115. http://eprints.utp.edu.my/19873/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description Recently, Electroencephalogram (EEG)-based computer-aided (CAD) techniques have shown their promise as decision-making tools to diagnose major depressive disorder (MDD) or simply depression. Although the research results have motivated the use of CAD techniques to help assist psychiatrists in clinics yet their clinical translation has been less clear and remains a research topic. In this paper, a proposed machine learning (ML) scheme was tested and validated with resting-state EEG data involving 33 MDD patients and 30 healthy controls. The EEG-derived measures such as power of different EEG frequency bands and EEG alpha interhemispheric asymmetry were investigated as input features to the proposed ML scheme to discriminate the MDD patients and healthy controls, and to prove their feasibility for diagnosing depression. The acquired EEG data were subjected to noise removal and feature extraction. As a result, a data matrix was constructed by the columns-wise concatenation of the extracted features. Furthermore, the z-score standardization was performed to standardize each column of the data matrix according to its mean and variance. The data matrix may have redundant and irrelevant features; therefore, to determine the most significant features, a weight was assigned to each feature based on its ability to separate the target classes according to the criterion, i.e., receiver operating characteristics (roc). Hence, only the most significant features were used for testing and training the classifier models: Logistic regression (LR), Support vector machine (SVM), and Naïve Bayesian (NB). Finally, the classifier models were validated with 10-fold cross-validation that has provided the performance metrics such as test accuracy, sensitivity, and specificity. As a result of the investigations, most significant features such as EEG signal power and EEG alpha interhemispheric asymmetry from the brain areas such as frontal, temporal, parietal and occipital were found significant. In addition, the proposed ML framework proved automatic identification of aberrant EEG patterns specific to disease conditions and provide high classification results i.e., LR classifier (accuracy = 97.6, sensitivity = 96.66, specificity = 98.5), NB classification (accuracy = 96.8, sensitivity = 96.6, specificity = 97.02), and SVM (accuracy = 98.4, sensitivity = 96.66, specificity = 100). In conclusion, the proposed ML scheme along with the EEG signal power and EEG alpha interhemispheric asymmetry are proved suitable as clinical diagnostic tools for MDD. © 2016 Elsevier Ltd
format Article
author Mumtaz, W.
Xia, L.
Ali, S.S.A.
Yasin, M.A.M.
Hussain, M.
Malik, A.S.
spellingShingle Mumtaz, W.
Xia, L.
Ali, S.S.A.
Yasin, M.A.M.
Hussain, M.
Malik, A.S.
Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
author_facet Mumtaz, W.
Xia, L.
Ali, S.S.A.
Yasin, M.A.M.
Hussain, M.
Malik, A.S.
author_sort Mumtaz, W.
title Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
title_short Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
title_full Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
title_fullStr Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
title_full_unstemmed Electroencephalogram (EEG)-based computer-aided technique to diagnose major depressive disorder (MDD)
title_sort electroencephalogram (eeg)-based computer-aided technique to diagnose major depressive disorder (mdd)
publisher Elsevier Ltd
publishDate 2017
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-84979895671&doi=10.1016%2fj.bspc.2016.07.006&partnerID=40&md5=c4c7aca0d4aba36b0ed6a72efdd176a3
http://eprints.utp.edu.my/19873/
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