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Monitoring of mental workload levels during an everyday life office-work scenario

机译:在日常生活办公室工作场景中监控精神工作量水平

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Personal and ubiquitous healthcare applications offer new opportunities to prevent long-term health damage due to increased mental workload by continuously monitoring physiological signs related to prolonged high workload and providing just-in-time feedback. In order to achieve a quantification of mental load, different load levels that occur during a workday have to be discriminated. In this work, we present how mental workload levels in everyday life scenarios can be discriminated with data from a mobile ECG logger by incorporating individual calibration measures. We present an experiment design to induce three different levels of mental workload in calibration sessions and to monitor mental workload levels in everyday life scenarios of seven healthy male subjects. Besides the recording of ECG data, we collect subjective ratings of the perceived workload with the NASA Task Load Index (TLX), whereas objective measures are assessed by collecting salivary cortisol. According to the subjective ratings, we show that all participants perceived the induced load levels as intended from the experiment design. The heart rate variability (HRV) features under investigation can be classified into two distinct groups. Features in the first group, representing markers associated with parasympathetic nervous system activity, show a decrease in their values with increased workload. Features in the second group, representing markers associated with sympathetic nervous system activity or predominance, show an increase in their values with increased workload. We employ multiple regression analysis to model the relationship between relevant HRV features and the subjective ratings of NASA-TLX in order to predict the mental workload levels during office-work. The resulting predictions were correct for six out of the seven subjects. In addition, we compare the performance of three classification methods to identify the mental workload level during office-work. The best results were obtained with linear discriminant analysis (LDA) that yielded a correct classification for six out of the seven subjects. The k-nearest neighbor algorithm (k-NN) and the support vector machine (SVM) resulted in a correct classification of the mental workload level during office-work for five out of the seven subjects.
机译:个人和无处不在的医疗保健应用程序提供了新的机会,可以通过持续监视与长时间高负荷工作有关的生理征兆并提供及时的反馈,来防止由于精神负荷增加而造成的长期健康损害。为了量化精神负荷,必须区分工作日期间发生的不同负荷水平。在这项工作中,我们介绍了如何通过结合单独的校准措施,用移动ECG记录器中的数据来区分日常生活中的心理工作量水平。我们提出了一项实验设计,以在校准会话中诱导三种不同级别的心理工作量,并监视七个健康男性受试者在日常生活中的心理工作量水平。除了记录ECG数据外,我们还通过NASA任务负荷指数(TLX)收集感知到的工作量的主观评分,而客观的评估则通过收集唾液皮质醇来评估。根据主观评分,我们显示所有参与者都按照实验设计的预期感知到诱导负载水平。被调查的心率变异性(HRV)功能可分为两个不同的组。第一组中的特征代表与副交感神经系统活动相关的标志物,其值随着工作量的增加而降低。第二组特征代表与交感神经系统活动或优势相关的标志物,其值随着工作量的增加而增加。为了预测办公室工作期间的精神工作量,我们采用多元回归分析来建模相关HRV功能与NASA-TLX的主观评分之间的关​​系。得出的预测对七个对象中的六个是正确的。此外,我们比较了三种分类方法的性能,以确定办公室工作期间的心理工作量水平。使用线性判别分析(LDA)可获得最佳结果,该线性判别分析对7位受试者中的6位给出了正确的分类。 k近邻算法(k-NN)和支持向量机(SVM)对七个对象中的五个对象的办公室工作期间的心理工作量水平进行了正确分类。

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