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Efficient methods for acute stress detection using heart rate variability data from Ambient Assisted Living sensors

机译:使用环境辅助活敏传感器的心率可变性数据进行急性应力检测的高效方法

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Using Ambient Assisted Living sensors to detect acute stress could help people mitigate the harmful effects of everyday stressful situations. This would help both the healthy and those affected more by sudden stressors, e.g., people with diabetes or heart conditions. The study aimed to develop a method for providing reliable stress detection based on heart rate variability features extracted from portable devices. Features extracted from portable electrocardiogram sensor recordings were used for training various classification algorithms for stress detection purposes. Data were recorded in a clinical trial with 7 participants and two stressors, the Trier Social Stress Test and the Stroop colour word test, both validated by standardised questionnaires. Different heart rate variability feature sets (all, time-domain and non-linear only, frequency-domain only) were tested to investigate how classification performance is affected, in addition to various time window length setups and participant-wise training sessions. The accuracy and F1 score of the trained models were compared and analysed. The best results were achieved with models using time-domain and non-linear heart rate variability features with 5-min-long overlapping time windows, yielding 96.31% accuracy and 96.26% F1 score. Shorter overlapping windows had slightly lower performance, with 91.62–94.55% accuracy and 91.77–94.55% F1 score ranges. Non-overlapping window configurations were less effective, with both accuracy and F1 score below 88%. For participant-wise learning, average F1 scores of 99.47%, 98.93% and 96.1% were achieved for feature sets using all, time-domain and non-linear, and frequency-domain features, respectively. The tested stress detector models based on heart rate variability data recorded by a single electrocardiogram sensor performed just as well as those published in the literature working with multiple sensors, or even better. This suggests that once portable devices such as smartwatches provide reliable hear rate variability recordings, efficient stress detection can be achieved without the need for additional physiological measurements.
机译:使用环境辅助生活传感器来检测急性压力可以帮助人们减轻日常压力情况的有害影响。这将有助于健康和那些受到突然压力源影响的人,例如患有糖尿病或心脏病的人。该研究旨在开发一种基于从便携式设备提取的心率变异特征提供可靠应力检测的方法。从便携式心电图传感器录制中提取的功能用于培训各种分类算法,以进行应力检测目的。数据在临床试验中记录了7名参与者和两个压力源,Thelier社会压力测试和Troop颜色词测试,由标准化问卷验证。除了各种时间窗口长度设置和参与者的培训会话之外,还测试了不同心率变异特征集(仅限时域和非线性,仅限频域,仅频率域),以研究分类性能如何受到影响。比较和分析了培训模型的准确性和F1得分。使用时间域和非线性心率可变性特征的模型实现了最佳结果,具有5分长的重叠时间窗口,精度为96.31%和96.26%F1分数。较短的重叠窗口的性能略低,精度为91.62-94.55%和91.77-94.55%F1分数范围。非重叠窗口配置效果较低,精度和F1得分低于88%。对于参与者学习,使用所有时域和非线性和频域特征,为特征集实现了99.47%,98.93%和96.1%的平均f1分数。基于心率可变性数据的测试应力检测器模型由单个心电图传感器记录,以及在使用多个传感器的文献中发布的那些,甚至更好。这表明一旦智能手表等便携式设备提供可靠的听觉速率变化记录,就可以实现有效的应力检测,而无需额外的生理测量。

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