Dominant Lyapunov exponent and approximate entropy in heart rate variability during emotional visual elicitation.

Frontiers in neuroengineering Pub Date : 2012-02-29 eCollection Date: 2012-01-01 DOI:10.3389/fneng.2012.00003
Gaetano Valenza, Paolo Allegrini, Antonio Lanatà, Enzo Pasquale Scilingo
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引用次数: 106

Abstract

In this work we characterized the non-linear complexity of Heart Rate Variability (HRV) in short time series. The complexity of HRV signal was evaluated during emotional visual elicitation by using Dominant Lyapunov Exponents (DLEs) and Approximate Entropy (ApEn). We adopted a simplified model of emotion derived from the Circumplex Model of Affects (CMAs), in which emotional mechanisms are conceptualized in two dimensions by the terms of valence and arousal. Following CMA model, a set of standardized visual stimuli in terms of arousal and valence gathered from the International Affective Picture System (IAPS) was administered to a group of 35 healthy volunteers. Experimental session consisted of eight sessions alternating neutral images with high arousal content images. Several works can be found in the literature showing a chaotic dynamics of HRV during rest or relax conditions. The outcomes of this work showed a clear switching mechanism between regular and chaotic dynamics when switching from neutral to arousal elicitation. Accordingly, the mean ApEn decreased with statistical significance during arousal elicitation and the DLE became negative. Results showed a clear distinction between the neutral and the arousal elicitation and could be profitably exploited to improve the accuracy of emotion recognition systems based on HRV time series analysis.

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情绪视觉诱发时心率变异性的显性李雅普诺夫指数和近似熵。
在这项工作中,我们表征了心率变异性(HRV)在短时间序列中的非线性复杂性。采用显性李雅普诺夫指数(ledles)和近似熵(ApEn)评价情绪视觉诱发过程中HRV信号的复杂性。本研究采用了一种简化的情绪模型,该模型源自圆周效应模型(CMAs),其中情绪机制在两个维度上被概念化,即效价和唤醒。根据CMA模型,对35名健康志愿者进行了从国际情感图像系统(IAPS)中收集的一组唤醒和效价方面的标准化视觉刺激。实验部分由8个部分组成,中性图像与高唤醒内容图像交替进行。在一些文献中可以发现,在休息或放松条件下,HRV的动力学是混乱的。这项工作的结果表明,当从中性到唤醒激发的转换时,在规则和混沌动力学之间有一个明确的转换机制。相应的,唤醒激发时ApEn平均值下降,且有统计学意义,DLE变为负值。结果表明,中性和唤醒激发之间存在明显的区别,可以有效地用于提高基于HRV时间序列分析的情绪识别系统的准确性。
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