情绪激发对心血管系统的影响分析

E. M. Polo, Maximiliano Mollura, M. Zanet, Marta Lenatti, A. Paglialonga, Riccardo Barbieri
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摘要

情绪在我们的日常生活中扮演着重要的角色,影响着我们的决策过程,也影响着我们的生理。一些文献研究提出了结合多模态生理指标的成功情绪识别分类模型,但没有考虑这些指标的生理意义。我们的研究旨在寻找与自主神经系统相关的心血管指数,这些指数可以解释心脏的自主控制如何对特定情绪做出反应:快乐、恐惧、放松和无聊。脉搏到达时间和脉压测量已经被证明可以显著地区分这四种情绪,尤其是在唤醒维度上,正如之前的研究结果所预期的那样。重要的是,当观察高唤醒和低唤醒子集时,这些与血压相关的指数也为表征价态维度提供了相关的见解。此外,这些测量与经典的自主神经指标相关,并解释了不同情绪引起的心血管和自主神经变化。然后利用自主指数训练基本支持向量机模型,得到快乐、放松、无聊、恐惧的四类测试准确率分别为44%、67%、55%、44%。
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Analysis of the Effect of Emotion Elicitation on the Cardiovascular System
Emotions play an important role in our everyday life, influencing our decision-making process, and also affecting our physiology. Several studies in literature have proposed successful classification models for emotion recognition combining multimodal physiological measures without dwelling on the physiological significance of the measures. Our study aims at finding cardiovascular indices related to the autonomic nervous system that can explain how autonomic control of the heart responds with respect to specific emotions: happiness, fear, relaxation and boredom. Pulse arrival time and pulse pressure measurements have been shown to be significantly separating the 4 emotions, especially along the arousal dimension as expected from previous findings. Importantly, these blood pressure related indices also yielded relevant insights into characterizing the valence dimension when looking at high and low arousal subsets. In addition, these measures were found to be correlated with classical autonomic indices and explanatory in the cardiovascular and autonomic changes elicited by different emotions. Autonomic indices were then used to train a basic support vector machine model obtaining four-class test accuracy in discriminating happiness, relaxation, boredom and fear equal to 44%, 67%, 55%, 44% respectively.
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