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利用白天的心率变异性模式检测自我报告压力得分较高的受试者。

Detection of subjects with higher self-reporting stress scores using heart rate variability patterns during the day.

作者信息

Kim Desok, Seo Yunhwan, Cho Jaegeol, Cho Chul-Ho

机构信息

Information and Communications University, Daejeon, Korea.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2008;2008:682-5. doi: 10.1109/IEMBS.2008.4649244.

Abstract

Heart rate variability (HRV) has been well established to measure instantaneous levels of mental stress. Circadian patterns of HRV features have been reported but their use to estimate levels of mental stress were not studied thoroughly. In this study, we investigated time dependent variations of HRV features to detect subjects under chronic mental stress. Sixty eight subjects were divided into high (n=10) and low stress group (n=43) depending on their self-reporting stress scores. HRV features were calculated during three different time periods of the day. High stress group showed decreased patterns of HRV features compared to low stress group. When logistic regression analysis was performed with raw multiple HRV features, the classification was 63.2% accurate. A new % deviance score reflecting the degree of difference from normal reference patterns increased the accuracy to 66.1%. Our data suggested that HRV patterns obtained at multiple time points of the day could provide useful data to monitor subjects under chronic stress.

摘要

心率变异性(HRV)已被充分确立为测量瞬时心理压力水平的指标。已有报道称HRV特征存在昼夜节律模式,但尚未对其用于估计心理压力水平进行深入研究。在本研究中,我们调查了HRV特征随时间的变化情况,以检测处于慢性心理压力下的受试者。根据自我报告的压力得分,68名受试者被分为高压力组(n = 10)和低压力组(n = 43)。在一天中的三个不同时间段计算HRV特征。与低压力组相比,高压力组的HRV特征呈现下降模式。当对多个原始HRV特征进行逻辑回归分析时,分类准确率为63.2%。一个反映与正常参考模式差异程度的新的%偏差得分将准确率提高到了66.1%。我们的数据表明,在一天中的多个时间点获得的HRV模式可为监测处于慢性压力下的受试者提供有用数据。

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