在不同情绪唤醒的情况下预测每一刻的心率和皮肤电导变化。

IF 2.9 2区 心理学 Q2 NEUROSCIENCES
Harisu Abdullahi Shehu, Matt Oxner, Will N Browne, Hedwig Eisenbarth
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引用次数: 1

摘要

自主神经系统(ANS)反应,如心率(HR)和皮肤电反应(GSR),与情绪背景下的大脑活动有关。虽然很多工作都集中在情绪对ANS反应的总结性影响上,但它们在不断变化的环境中的相互作用却不太清楚。在这里,我们使用了人类情感状态的多模态数据集,其中包括参与者对情绪刺激视频片段的瞬间反应的脑电图(EEG)和周围生理信号,并使用机器学习技术,特别是长短期记忆(LSTM),决策树(DT)和线性回归(LR)来模拟HR和GSR的变化。我们发现,由于LSTM固有的处理顺序数据的能力,与DT和LR相比,LSTM的错误率明显更低。重要的是,当DT和LR与粒子群优化一起使用时,可以显著降低预测误差,为这些算法选择相关/重要特征。与总结性分析不同,与预期相反,我们发现在不同参与者之间进行预测比在参与者内部进行预测的错误率要低得多。此外,预测选择特征表明,预测HR和GSR的模式在电极位置和频段上有很大不同。总的来说,这些结果表明大脑活动的特定模式跟踪自主身体反应。尽管个体大脑差异很重要,但它们可能不是影响ANS反应瞬间变化的唯一因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of moment-by-moment heart rate and skin conductance changes in the context of varying emotional arousal.

Autonomic nervous system (ANS) responses such as heart rate (HR) and galvanic skin responses (GSR) have been linked with cerebral activity in the context of emotion. Although much work has focused on the summative effect of emotions on ANS responses, their interaction in a continuously changing context is less clear. Here, we used a multimodal data set of human affective states, which includes electroencephalogram (EEG) and peripheral physiological signals of participants' moment-by-moment reactions to emotional provoking video clips and modeled HR and GSR changes using machine learning techniques, specifically, long short-term memory (LSTM), decision tree (DT), and linear regression (LR). We found that LSTM achieved a significantly lower error rate compared with DT and LR due to its inherent ability to handle sequential data. Importantly, the prediction error was significantly reduced for DT and LR when used together with particle swarm optimization to select relevant/important features for these algorithms. Unlike summative analysis, and contrary to expectations, we found a significantly lower error rate when the prediction was made across different participants than within a participant. Moreover, the predictive selected features suggest that the patterns predictive of HR and GSR were substantially different across electrode sites and frequency bands. Overall, these results indicate that specific patterns of cerebral activity track autonomic body responses. Although individual cerebral differences are important, they might not be the only factors influencing the moment-by-moment changes in ANS responses.

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来源期刊
Psychophysiology
Psychophysiology 医学-神经科学
CiteScore
6.80
自引率
8.10%
发文量
225
审稿时长
2 months
期刊介绍: Founded in 1964, Psychophysiology is the most established journal in the world specifically dedicated to the dissemination of psychophysiological science. The journal continues to play a key role in advancing human neuroscience in its many forms and methodologies (including central and peripheral measures), covering research on the interrelationships between the physiological and psychological aspects of brain and behavior. Typically, studies published in Psychophysiology include psychological independent variables and noninvasive physiological dependent variables (hemodynamic, optical, and electromagnetic brain imaging and/or peripheral measures such as respiratory sinus arrhythmia, electromyography, pupillography, and many others). The majority of studies published in the journal involve human participants, but work using animal models of such phenomena is occasionally published. Psychophysiology welcomes submissions on new theoretical, empirical, and methodological advances in: cognitive, affective, clinical and social neuroscience, psychopathology and psychiatry, health science and behavioral medicine, and biomedical engineering. The journal publishes theoretical papers, evaluative reviews of literature, empirical papers, and methodological papers, with submissions welcome from scientists in any fields mentioned above.
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