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基于 EEG 的图论网络测量的对比离散情绪状态分类。

Classification of Contrasting Discrete Emotional States Indicated by EEG Based Graph Theoretical Network Measures.

机构信息

Psychiatry Department, Medical Faculty, Hacettepe University, Sıhhiye, Ankara, Turkey.

Biophysics Department, Medical Faculty, Hacettepe University, Sıhhiye, Ankara, Turkey.

出版信息

Neuroinformatics. 2022 Oct;20(4):863-877. doi: 10.1007/s12021-022-09579-2. Epub 2022 Mar 14.

Abstract

The present study shows new findings that reveal the high association between emotional arousal and neuro-functional brain connectivity measures. For this purpose, contrasting discrete emotional states (happiness vs sadness, amusement vs disgust, calmness vs excitement, calmness vs anger, fear vs anger) are classified by using Support Vector Machines (SVMs) driven by Graph Theoretical segregation (clustering coefficients, transitivity, modularity) and integration (global efficiency, local efficiency) measures of the brain network. Emotional EEG data mediated by short duration video film clips is downloaded from publicly available database called DREAMER. Pearson Correlation (PC) and Spearman Correlation have been examined to estimate statistical dependencies between relatively shorter (6 sec) and longer (12 sec) non-overlapped EEG segments across the cortex. Then the corresponding brain connectivity encoded as a graph is transformed into binary numbers with respect to two different thresholds (60%max and mean). Statistical differences between contrasting emotions are obtained by using both one-way Anova tests and step-wise logistic regression modelling in accordance with variables (dependency estimation, segment length, threshold, network measure). Combined integration measures provided the highest classification accuracies (CAs) (75.00% 80.65%) when PC is applied to longer segments in accordance with particular threshold as the mean. The segregation measures also provided useful CAs (74.13% 80.00%), while the combination of both measures did not. The results reveal that discrete emotional states are characterized by balanced network measures even if both segregation and integration measures vary depending on arousal scores of audio-visual stimuli due to neurotransmitter release during video watching.

摘要

本研究显示了新的发现,揭示了情绪唤醒与神经功能大脑连接度测量之间的高度关联。为此,通过使用支持向量机(SVM),根据大脑网络的图论分离(聚类系数、传递性、模块性)和整合(全局效率、局部效率)测量,对离散情绪状态(快乐与悲伤、愉悦与厌恶、平静与兴奋、平静与愤怒、恐惧与愤怒)进行分类。情绪 EEG 数据是通过从称为 DREAMER 的公共可用数据库下载的短时长视频片段介导的。皮尔逊相关系数(PC)和斯皮尔曼相关系数已被检查,以估计皮质中相对较短(6 秒)和较长(12 秒)非重叠 EEG 段之间的统计相关性。然后,将相应的大脑连接度编码为图形,并根据两个不同的阈值(60%max 和平均值)转换为二进制数。通过使用单向方差分析测试和逐步逻辑回归模型,根据变量(依赖性估计、片段长度、阈值、网络测量),获得了对比情绪之间的统计学差异。当 PC 应用于较长的片段并根据特定阈值为平均值时,组合的整合测量提供了最高的分类准确率(CA)(75.00%80.65%)。分离测量也提供了有用的 CA(74.13%80.00%),而两者的组合则没有。结果表明,即使由于观看视频时神经递质的释放,听觉视觉刺激的唤醒评分导致分离和整合测量值发生变化,离散情绪状态也具有平衡的网络测量值特征。

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