Health Psychology Unit, Department of Psychology, University of Graz, 8010 Graz, Austria.
Sensors (Basel). 2022 Apr 11;22(8):2925. doi: 10.3390/s22082925.
Several mobile devices have multiple sensors on board and interact with smartphones. This allows for a complex online evaluation of physiological data, important for interactive psychophysiological assessments, which targets the triggering of psychological states based on physiological data such as heart rate variability (HRV). However, algorithms designed to trigger meaningful physiological processes are rare. One exception is the concept of additional HRV reduction (AddHRVr), which aims to control for metabolic-related changes in cardiac activity. In this study we present an approach, based on data of a previous study, which allows algorithm settings to be derived that could be used to automatically trigger the assessment of psychosocial states by online-analysis of transient HRV changes in a sample of 38 firefighters. Settings of a static and a dynamic AddHRVr algorithm were systematically manipulated and quantified by binary triggers. These triggers were subjected to multilevel models predicting increases of objective stress during a period of 24 h. Effect estimates (i.e., odds) and bootstrap power simulations were calculated to inform about the most robust algorithm settings. This study delivers evidence that a dynamic AddHRVr algorithm can trigger transitions of stress, which should be further validated in future interactive psychophysiological assessments.
几种移动设备都有多个传感器,并与智能手机交互。这使得对生理数据进行复杂的在线评估成为可能,这对于交互式心理生理评估很重要,其目标是根据心率变异性(HRV)等生理数据触发心理状态。然而,旨在触发有意义的生理过程的算法却很少。一个例外是附加 HRV 减少(AddHRVr)的概念,它旨在控制与代谢相关的心脏活动变化。在这项研究中,我们提出了一种方法,该方法基于先前研究的数据,允许导出算法设置,这些设置可用于通过对 38 名消防员样本的瞬时 HRV 变化进行在线分析,自动触发对心理社会状态的评估。通过二进制触发器系统地操纵和量化静态和动态 AddHRVr 算法的设置。这些触发器被用于多水平模型来预测 24 小时内的客观压力增加。计算了效应估计(即几率)和自举功率模拟,以提供有关最稳健的算法设置的信息。这项研究提供了证据表明,动态 AddHRVr 算法可以触发压力的转变,这应该在未来的交互式心理生理评估中进一步验证。