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Detection of mental stress due to oral academic examination via ultra-short-term HRV analysis

机译:通过超短期HRV分析检测因口语考试而产生的精神压力

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Mental stress may cause cognitive dysfunctions, cardiovascular disorders and depression. Mental stress detection via short-term Heart Rate Variability (HRV) analysis has been widely explored in the last years, while ultra-short term (less than 5 minutes) HRV has been not. This study aims to detect mental stress using linear and non-linear HRV features extracted from 3 minutes ECG excerpts recorded from 42 university students, during oral examination (stress) and at rest after a vacation. HRV features were then extracted and analyzed according to the literature using validated software tools. Statistical and data mining analysis were then performed on the extracted HRV features. The best performing machine learning method was the C4.5 tree algorithm, which discriminated between stress and rest with sensitivity, specificity and accuracy rate of 78%, 80% and 79% respectively.
机译:精神压力可能会导致认知功能障碍,心血管疾病和抑郁。近年来,通过短期心率变异性(HRV)分析进行的心理压力检测已得到广泛研究,而超短期(少于5分钟)HRV尚未得到广泛应用。这项研究旨在使用线性和非线性HRV特征检测精神压力,这些特征是从42名大学生的3分钟心电图摘录,口腔检查(压力)和休假后的休息中提取的。然后使用经过验证的软件工具根据文献提取HRV特征并进行分析。然后对提取的HRV特征进行统计和数据挖掘分析。表现最佳的机器学习方法是C4.5树算法,该算法将压力和休息区分开,灵敏度,特异性和准确率分别为78%,80%和79%。

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