Department of Computer Engineering, University of Engineering and Technology, Taxila 47050, Pakistan.
Department of Software Engineering, University of Engineering and Technology, Taxila 47050, Pakistan.
Sensors (Basel). 2020 Mar 29;20(7):1886. doi: 10.3390/s20071886.
Stress research is a rapidly emerging area in the field of electroencephalography (EEG) signal processing. The use of EEG as an objective measure for cost effective and personalized stress management becomes important in situations like the nonavailability of mental health facilities. In this study, long-term stress was classified with machine learning algorithms using resting state EEG signal recordings. The labeling for the stress and control groups was performed using two currently accepted clinical practices: (i) the perceived stress scale score and (ii) expert evaluation. The frequency domain features were extracted from five-channel EEG recordings in addition to the frontal and temporal alpha and beta asymmetries. The alpha asymmetry was computed from four channels and used as a feature. Feature selection was also performed to identify statistically significant features for both stress and control groups (via t-test). We found that support vector machine was best suited to classify long-term human stress when used with alpha asymmetry as a feature. It was observed that the expert evaluation-based labeling method had improved the classification accuracy by up to 85.20%. Based on these results, it is concluded that alpha asymmetry may be used as a potential bio-marker for stress classification, when labels are assigned using expert evaluation.
应激研究是脑电图(EEG)信号处理领域中一个迅速兴起的研究方向。在精神卫生设施缺乏等情况下,将 EEG 用作一种经济有效且个性化的应激管理的客观手段变得尤为重要。在这项研究中,使用机器学习算法对静息态 EEG 信号记录进行分类,以区分长期应激。应激组和对照组的标签是通过两种当前公认的临床实践来确定的:(i)感知压力量表评分和(ii)专家评估。除了额部和颞部的α和β不对称性之外,还从五个通道的 EEG 记录中提取频域特征。α不对称性是从四个通道计算得出的,并用作特征。还进行了特征选择,以确定两组(通过 t 检验)的统计显著特征。结果表明,当使用α不对称性作为特征时,支持向量机最适合用于分类长期的人类应激。观察到,基于专家评估的标签方法可以将分类准确性提高 85.20%。基于这些结果,得出结论,当使用专家评估来分配标签时,α不对称性可以用作应激分类的潜在生物标志物。