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Genetic-Optimized Classifier Ensemble for Cortisol Salivary Measurement Mapping to Electrocardiogram Features for Stress Evaluation

机译:用于皮质醇唾液测量的遗传优化分类器集合映射到心电图特征以进行压力评估

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This work presents our findings to map salivary cortisol measurements to electrocardiogram (ECG) features to create a physiological stress identification system. An experiment modelled on the Trier Social Stress Test (TSST) was used to simulate stress and control conditions, whereby salivary measurements and ECG measurements were obtained from student volunteers. The salivary measurements of stress biomarkers were used as objective stress measures to assign a three-class labelling (Low-Medium-High stress) to the extracted ECG features. The labelled features were then used for training and classification using a genetic-ordered ARTMAP with probabilistic voting for analysis on the efficacy of the ECG features used for physiological stress recognition. The ECG features include time-domain features of the heart rate variability and the ECG signal, and frequency-domain analysis of specific frequency bands related to the autonomic nervous activity. The resulting classification method scored approximately 60-69% success rate for predicting the three stress classes.
机译:这项工作提出了我们的发现,以将唾液皮质醇测量值映射到心电图(ECG)功能,以创建生理压力识别系统。使用以特里尔社会压力测试(TSST)为模型的实验来模拟压力和控制条件,从而从学生志愿者那里获得唾液测量值和心电图测量值。压力生物标志物的唾液测量值用作客观压力测量值,以为提取的ECG特征指定三级标记(低-中-高应力)。然后使用带有概率投票的遗传排序ARTMAP将标记的特征用于训练和分类,以分析用于生理压力识别的ECG特征的功效。 ECG功能包括心率变异性和ECG信号的时域特征,以及与自主神经活动相关的特定频段的频域分析。所得的分类方法在预测这三种压力类别时获得了大约60-69%的成功率。

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