Physiological Indicators of The Relation Between Autistic Traits and Empathy: Evidence From Electrocardiogram and Skin Conductance Signals

Soroosh Golbabaei, Negar Sammaknejad, K. Borhani
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引用次数: 1

Abstract

Difficulty in empathy is thought to be one of the problems in people with autism spectrum disorder (ASD), leading to impairment in social abilities and communication. However, despite the recent evidence on the effect of physiological bodily states on affective experiences, the exact role of physiological signals on different aspects of empathy (i.e., cognitive and affective empathy), as well as empathy dysfunction in ASD is yet unknown. To tackle this problem, in this study, 36 neurotypical subjects with different levels of autistic traits, participated in a well-established empathy for pain task, while Electrocardiogram (ECG) and Skin Conductance (SC) signals were recorded. Several features were extracted from each signal. Our results indicated that both cognitive and affective empathy are positively related to a higher level of cardiac activity (e.g., negative correlation with R-R interval) and arousal (e.g., positive correlation with average SC). More importantly, higher level of autistic traits, measured with Autism Quotient (AQ), was negatively correlated with Heart Rate Variability as measured with HRV-RMSSD and variability in tonic SC. Finally, we classified the participants into groups with high and low cognitive empathy, affective empathy, and level of autistic traits and investigated the extent to which machine learning approaches can automatically classify participants based on ECG and SC extracted features. Using a Support Vector Machine, reasonable results were obtained (in the range of. 73 to. 84), proving the possibility of implementing automatic detection systems for classifying subjects with different levels of autistic traits. Our results are suggestive of the effect of bodily simulation on empathy, and how the inability to regulate physiological signals leads to empathy dysfunction in individuals with high autistic traits.
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自闭症特征与共情关系的生理指标:来自心电图和皮肤电导信号的证据
移情困难被认为是自闭症谱系障碍(ASD)患者的问题之一,导致社交能力和沟通能力受损。然而,尽管最近有证据表明生理身体状态对情感体验的影响,但生理信号在共情的不同方面(即认知和情感共情)以及ASD的共情功能障碍中的确切作用尚不清楚。为了解决这一问题,在本研究中,36名具有不同程度自闭症特征的神经正常受试者参与了一项完善的疼痛共情任务,同时记录了心电图(ECG)和皮肤电导(SC)信号。从每个信号中提取几个特征。研究结果表明,认知共情和情感共情均与较高水平的心脏活动(与R-R间隔负相关)和觉醒(与平均SC正相关)呈正相关。更重要的是,高水平的自闭症特征与HRV-RMSSD测量的心率变异性和张力SC变异性呈负相关。最后,我们将参与者分为高和低认知共情、情感共情和自闭症特征组,并研究了机器学习方法在多大程度上可以根据ECG和SC提取的特征自动分类参与者。使用支持向量机,得到了合理的结果(在。73年。84),证明了实现自动检测系统对具有不同程度自闭症特征的受试者进行分类的可能性。我们的研究结果提示了身体模拟对共情的影响,以及无法调节生理信号如何导致高自闭症特征个体的共情功能障碍。
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