Department of Computing and Mathematics, Manchester Metropolitan University, Manchester M15 6BH, UK.
Sensors (Basel). 2021 Apr 19;21(8):2873. doi: 10.3390/s21082873.
Stress has been identified as one of the major causes of automobile crashes which then lead to high rates of fatalities and injuries each year. Stress can be measured via physiological measurements and in this study the focus will be based on the features that can be extracted by common wearable devices. Hence, the study will be mainly focusing on heart rate variability (HRV). This study is aimed at investigating the role of HRV-derived features as stress markers. This is achieved by developing a good predictive model that can accurately classify stress levels from ECG-derived HRV features, obtained from automobile drivers, by testing different machine learning methodologies such as K-Nearest Neighbor (KNN), Support Vector Machines (SVM), Multilayer Perceptron (MLP), Random Forest (RF) and Gradient Boosting (GB). Moreover, the models obtained with highest predictive power will be used as reference for the development of a machine learning model that would be used to classify stress from HRV features derived from heart rate measurements obtained from wearable devices. We demonstrate that HRV features constitute good markers for stress detection as the best machine learning model developed achieved a Recall of 80%. Furthermore, this study indicates that HRV metrics such as the Average of normal-to-normal (NN) intervals (AVNN), Standard deviation of the average NN intervals (SDNN) and the Root mean square differences of successive NN intervals (RMSSD) were important features for stress detection. The proposed method can be also used on all applications in which is important to monitor the stress levels in a non-invasive manner, e.g., in physical rehabilitation, anxiety relief or mental wellbeing.
压力已被确定为导致每年汽车事故高发的主要原因之一,进而导致高死亡率和高受伤率。压力可以通过生理测量来衡量,在本研究中,重点将基于可以从常见可穿戴设备中提取的特征。因此,本研究将主要关注心率变异性(HRV)。本研究旨在研究 HRV 衍生特征作为压力标志物的作用。这是通过开发一个良好的预测模型来实现的,该模型可以通过测试不同的机器学习方法,如 K 最近邻(KNN)、支持向量机(SVM)、多层感知机(MLP)、随机森林(RF)和梯度提升(GB),从汽车驾驶员的心电图衍生 HRV 特征中准确分类压力水平。此外,将使用获得最高预测能力的模型作为参考,开发一个机器学习模型,用于从可穿戴设备获得的心率测量中 HRV 特征来分类压力。我们证明 HRV 特征是压力检测的良好标志物,因为开发的最佳机器学习模型的召回率达到了 80%。此外,这项研究表明,HRV 指标,如正常到正常(NN)间隔的平均值(AVNN)、平均 NN 间隔的标准差(SDNN)和连续 NN 间隔的均方根差(RMSSD),对于压力检测是重要的特征。所提出的方法也可以用于所有需要以非侵入性方式监测压力水平的应用,例如在物理康复、焦虑缓解或心理健康中。