利用心率变异性在智能手机上持续监测压力

S. Mayya, Vivek Jilla, V. N. Tiwari, Mithun M. Nayak, R. Narayanan
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引用次数: 27

摘要

持续监测个人的压力水平对于有效地管理压力和精神状态至关重要。随着可穿戴式心率监测仪的日益普及及其不显眼性,从心率信号中提取的HRV(心率变异性)已成为连续监测压力的最相关参数之一。在目前的工作中,我们试图解决基于一分钟的IBI(心跳间隔)记录来区分一个人的压力和非压力状态的挑战,并且准确度很高。这种对心率变异的超短期分析特别有利于捕捉精神压力水平的极短期波动,并扩大了频繁监测的范围。我们分析了各种时域、频域和非线性HRV特征,以缩小到最具影响力的一组特征,以准确分类应力和非应力状态。我们已经确定了IBI系列的RMSSD(连续差异的均方根)是应力状态的最直接指标。我们还提供了一个连续的压力评分,当在连续监测场景中使用时,它为用户提供了关于他/她的压力水平的足够详细信息。这有助于用户更好地了解一天中的压力模式,并采取适当的措施来管理压力情况。基于上述概念,我们在智能手机上开发并部署了一个系统,作为实时压力监测的android应用程序。
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Continuous monitoring of stress on smartphone using heart rate variability
Continuous monitoring of an individual's stress levels is essential to manage stress and mental state in an effective way. With increasing ubiquity of wearable heart rate monitors and their unobtrusiveness, HRV (Heart rate variability) derived from heart rate signals has emerged as one of the most relevant parameters for continuous monitoring of stress. In the present work, we have made an attempt to address the challenges about distinguishing between stressed and non-stressed state of a person based on just one minute of IBI (Inter Beat Interval) records with good accuracy. Such ultra-short term analysis of HRV is particularly advantageous towards capturing very short term fluctuations in mental stress levels and enhanced scope for frequent monitoring. We have analyzed various time domain, frequency domain and nonlinear HRV features to narrow down to a most influential set of features for accurate classification between stressed and non-stressed state. We have identified RMSSD (root mean square of successive differences) of IBI series to be the most direct indicator of stressed state. We also provide a continuous stress score which, when used in continuous monitoring scenario, provides the user with adequate details about his/her stress levels. This helps the user to understand stress patterns across a day in a better way and to take appropriate measures to manage stressful situations. We have developed and deployed a system, based on above concept, on smartphone as an android application for real-time stress monitoring.
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