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QUANTIFICATION OF MENTAL STRESS USING COMPLEXITY ANALYSIS OF EEG SIGNALS

机译:eEG信号复杂性分析的精神胁迫量化

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摘要

Detection of mental stress has been receiving great attention from the researchers for many years. Many studies have analyzed electroencephalogram signals in order to estimate mental stress using linear methods. In this paper, a novel nonlinear stress assessment method based on multivariate multiscale entropy has been introduced. Since the multivariate multiscale entropy method characterizes the complexity of nonlinear time series, this research determines the mental stress of human during cognitive workload using complexity of electroencephalogram (EEG) signals. To perform this work, 36 subjects including 9 men and 27 women were participated in the cognitive workload experiment. Multivariate multiscale entropy method has been applied to electroencephalogram data collected from those subjects for estimating mental stress in terms of complexity. The complexity feature of brain electroencephalogram signals collected during resting and cognitive workload has shown statistically significant (p < 0:01) differences across brain regions and mental tasks which can be implemented practically for building stress detection system. In addition, the complexity profile of electroencephalogram signals has shown that higher stress is reflected in good counting compared to bad counting. Moreover, the support vector machine (SVM) has shown promising classification between resting and mental counting states by providing 80% sensitivity, 100% specificity and 90% classification accuracy.
机译:许多年份,精神压力的检测得到了研究人员的极大关注。许多研究已经分析了脑电图信号以使用线性方法来估计精神胁迫。本文介绍了一种基于多变量多尺度熵的新型非线性应力评估方法。由于多变量多体熵方法表征了非线性时间序列的复杂性,因此使用脑电图(EEG)信号的复杂性,该研究确定了人类的心理应力。为了执行这项工作,参加了36个科目,包括9名男子和27名妇女参加了认知工作量实验。多变量多尺度熵方法已应用于从这些受试者收集的脑电图数据,以便在复杂性方面估算精神压力。在休息和认知工作量期间收集的脑脑电图信号的复杂性特征在脑区域和精神任务中示出了统计学上显着的(P <0.01)差异,其可以实际地用于构建应力检测系统。另外,与差计数相比,脑电图信号的复杂性曲线表明,良好的计数较高的压力反映。此外,通过提供80%的灵敏度,100%特异性和90%的分类准确度,支持向量机(SVM)在休息和心理计数状态之间显示了有希望的分类。

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