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Stress and Anxiety Measurement 'In-the-Wild' Using Quality-aware Multi-scale HRV Features

机译:使用质量感知的多尺度HRV功能,“野外”进行压力和焦虑测量

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Heart rate variability (HRV) has been studied in the context of human behavior analysis and many features have been extracted from the inter-beat interval (RR) time series and tested as correlates of constructs such as mental workload, stress and anxiety. Most studies, however, have been conducted in controlled laboratory environments with artificially-induced psychological responses. While this assures that high quality data are collected, the amount of data is limited and the transferability of the findings to more ecologically-appropriate settings (i.e., "in-the-wild") remains unknown. In this paper, we explore the use of motif-based multi-scale HRV features to predict anxiety and stress in-the-wild. To further improve their robustness to artifacts, we propose a quality-aware feature aggregation method. The new quality-aware features are tested on a dataset collected using a wearable biometric sensor from over 200 hospital workers (nurses and staff) during their work shifts. Results show improved stress/anxiety measurement over using conventional time- and frequency-domain HRV measures.
机译:在人类行为分析的背景下研究了心率变异性(HRV),并从心跳间隔(RR)时间序列中提取了许多特征,并测试了这些特征作为构型的相关性,例如心理负荷,压力和焦虑。但是,大多数研究都是在具有人工诱发的心理反应的受控实验室环境中进行的。虽然这确保了收集高质量的数据,但是数据量有限,并且发现是否可转移到更适合生态的环境(即“荒野”)仍是未知的。在本文中,我们探索了基于主题的多尺度HRV功能在野外焦虑和压力预测中的应用。为了进一步提高其对伪像的鲁棒性,我们提出了一种质量感知的特征聚合方法。对新的质量意识功能进行了测试,该数据集是在工作期间使用可穿戴生物识别传感器从200多名医院工作人员(护士和工作人员)收集的数据集中进行测试的。结果显示,与使用常规的时域和频域HRV测量相比,压力/焦虑测量得到了改善。

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