首页> 外文会议>2012 Joint 6th International Conference on Soft Computing and Intelligent Systems and 13th International Symposium on Advanced Intelligent Systems >Personal optimization method to estimate mood using heart rate variability in daily life: Mood estimation using heart rate variability
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Personal optimization method to estimate mood using heart rate variability in daily life: Mood estimation using heart rate variability

机译:个人优化方法,可在日常生活中使用心率变异性来评估情绪:使用心率变异性来评估情绪

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The aim of this study is to present a method of assessing eight types of mood that is optimized to every individual on the basis of the heart rate variability (HRV) data which, to eliminate the influence of the inter-individual variability, are measured in a long time period during daily life. Eight types of mood are happiness, tension, fatigue, anxiety, depression, anger, vigor, and confusion. HRV and body accelerations were recorded from nine normal subjects for two months of normal daily life. Fourteen HRV indices were calculated with the HRV data at 512 seconds prior to the time of every mood level report. Data to be analyzed were limited to those with body accelerations of 30 mG (0.294 m/s2) and lower. Further, the differences from the reference values in the same time zone were calculated with both the mood score (Δmood) and HRV index values (ΔHRVI). The multiple linear regression model that estimates Δmood from the scores for principal components of ΔHRVI were then constructed for each individual. The data were divided into training data set and test data set in accordance with the 2-fold cross validation method. Multiple linear regression coefficients were determined using the training data set, and with the optimized model its generalization capability was checked using the test data set. The model was most effective on estimating tension compared with other seven types of mood. The subjects' mean Pearson correlation coefficient was 0.52 with the training data set and 0.40 with the test data set. We proposed a method of assessing mood that is optimized to every individual based on HRV data measured over a long period of daily life.
机译:这项研究的目的是提出一种评估八种类型的情绪的方法,该方法根据心率变异性(HRV)数据对每个人进行优化,以消除个体差异的影响。日常生活中很长一段时间。八种类型的情绪是幸福,紧张,疲劳,焦虑,沮丧,愤怒,活力和混乱。在正常的两个月中,记录了九名正常受试者的HRV和身体加速度。在每个情绪水平报告时间之前的512秒,使用HRV数据计算了14个HRV指数。待分析的数据仅限于身体加速度为30 mG(0.294 m / s 2 )或更低的数据。此外,利用心情得分(Δmood)和HRV指数值(ΔHRVI)两者计算与相同时区的参考值的差异。然后为每个人构建一个多元线性回归模型,该模型可以根据ΔHRVI主成分的分数估算Δmood。根据2倍交叉验证方法,将数据分为训练数据集和测试数据集。使用训练数据集确定多个线性回归系数,并使用优化的模型使用测试数据集检查其泛化能力。与其他七种类型的情绪相比,该模型在估计紧张感方面最有效。受试者的平均皮尔逊相关系数在训练数据集中为0.52,在测试数据集中为0.40。我们提出了一种评估情绪的方法,该方法可根据在长期日常生活中测得的HRV数据对每个人进行优化。

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