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.
翻译:由于精神失常是造成全球疾病负担和严重影响个人社会和财务福利的主要因素,因此是关键的公共卫生挑战。本全面审查侧重于两种精神失常:重大抑郁症和双极失常,在过去十年中有值得注意的出版物。现在非常需要用生物标志来描述精神失常的生理特征。电脑物理学信号可以提供对MDD和BD的丰富信号,然后可以增进对这些精神失常下病理学机制的了解。在本审查中,我们侧重于文献工作,采用EEEG信号所支持的神经网络。在利用EEEG和神经网络进行的研究中,我们讨论了各种基于EEG的规程、生物标志和公共数据集,用于抑郁症和双极失常检测。我们最后的讨论和宝贵建议将有助于改进已开发模型的可靠性,以及更准确和更具确定性的基于精神失常的计算情报系统。本审查将证明,成为研究者使用EG识别抑郁症和双极障碍的信号的结构性和有价值的起始点。