EEG based Major Depressive disorder and Bipolar disorder detection using
Neural Networks: A review
- URL: http://arxiv.org/abs/2009.13402v2
- Date: Thu, 4 Feb 2021 18:58:54 GMT
- Title: EEG based Major Depressive disorder and Bipolar disorder detection using
Neural Networks: A review
- Authors: Sana Yasin, Syed Asad Hussain, Sinem Aslan, Imran Raza, Muhammad
Muzammel, Alice Othmani
- Abstract summary: There is a big need nowadays for phenotypic characterization of psychiatric disorders with biomarkers.
EEG signals could offer a rich signature for MDD and BD and then they could improve understanding of pathophysiological mechanisms underling these mental disorders.
This review will prove to be a structured and valuable initial point for the researchers working on depression and bipolar disorders recognition by using EEG signals.
- Score: 4.611395301352823
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mental disorders represent critical public health challenges as they are
leading contributors to the global burden of disease and intensely influence
social and financial welfare of individuals. The present comprehensive review
concentrate on the two mental disorders: Major depressive Disorder (MDD) and
Bipolar Disorder (BD) with noteworthy publications during the last ten years.
There is a big need nowadays for phenotypic characterization of psychiatric
disorders with biomarkers. Electroencephalography (EEG) signals could offer a
rich signature for MDD and BD and then they could improve understanding of
pathophysiological mechanisms underling these mental disorders. In this review,
we focus on the literature works adopting neural networks fed by EEG signals.
Among those studies using EEG and neural networks, we have discussed a variety
of EEG based protocols, biomarkers and public datasets for depression and
bipolar disorder detection. We conclude with a discussion and valuable
recommendations that will help to improve the reliability of developed models
and for more accurate and more deterministic computational intelligence based
systems in psychiatry. This review will prove to be a structured and valuable
initial point for the researchers working on depression and bipolar disorders
recognition by using EEG signals.
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