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Heart Rate Variability and Electrodermal Activity in Mental Stress Aloud: Predicting the Outcome

机译:心脏率变异性和精神压力的电沉积活性和大声:预测结果

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The assessment of changes in the autonomous nervous system (ANS), have important prognostic and diagnostic value, and can be used to assess stress levels. There are many approaches to directly measure the sympathetic and parasympathetic nervous system, although, most of them are invasive and unable to provide continuous monitoring. Heart rate variability (HRV) and Electrodermal activity (EDA) are noninvasive methods to assess the autonomous nervous system, by computing the spectral analysis of both HRV and EDA biosignals. In order to provide continuous monitoring, a wearable device is used, obtaining HRV features with photoplethysmography signals from the wrist and EDA from the fingers. The extraction of the HRV and EDA features, were obtained by submitting the subjects to a mental arithmetic stress test. The distinct response to stress was then classified using machine-learning techniques. The constructed models have the ability to predict how the subjects will respond, with an accuracy of approximately 80% in terms of HRV features in baseline and an accuracy of approximately 77% in terms of HRV and EDA simultaneous baseline features, when submitted to a situation of stress.
机译:对自主神经系统(ANS)的变化进行评估具有重要的预后和诊断价值,可用于评估应力水平。有许多方法可以直接测量交感神经和副交感神经系统,但它们中的大多数是侵入性的,无法提供连续监测。心率变异性(HRV)和电台活性(EDA)是评估自主神经系统的非侵入性方法,通过计算HRV和EDA生物信号的光谱分析。为了提供连续监测,使用可穿戴设备,从手指中获取具有来自手腕和EDA的光电觉模型信号的HRV特征。通过将受试者提交到精神算术应力测试来获得HRV和EDA特征的提取。然后使用机器学习技术对压力的不同响应。构建的模型具有预测受试者如何响应的能力,在基线中的HRV特征方面的精度约为80%,并且在提交某种情况时,在HRV和EDA同时基线特征方面的准确性约为77%压力。

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