Deniz Sencer Melih, Ademoglu Ahmet, Duru Adil Deniz, Demiralp Tamer
Institute of Biomedical Engineering, Bogazici University, Istanbul 34684, Turkey.
The Scientific and Technological Research Council of Turkey (TÜBITAK) Informatics and Information Security Research Center (BILGEM), Kocaeli 41400, Turkey.
Brain Sci. 2025 Jul 2;15(7):714. doi: 10.3390/brainsci15070714.
Emotion and cognition, two essential components of human mental processes, have traditionally been studied independently. The exploration of emotion and cognition is fundamental for gaining an understanding of human mental functioning. Despite the availability of various methods to measure and evaluate emotional states and cognitive processes, physiological measurements are considered to be one of the most reliable methods due to their objective approach. In particular, electroencephalography (EEG) provides unique insight into emotional and cognitive activity through the analysis of event-related potentials (ERPs). In this study, we discriminated pleasant/unpleasant emotional moods and low/high cognitive states using graph-theoretic features extracted from spatio-temporal components. Emotional data were collected at the Physiology Department of Istanbul Medical Faculty at Istanbul University, whereas cognitive data were obtained from the DepositOnce repository of Technische Universität Berlin. Wavelet coherence values for the N100, N200, and P300 single-trial ERP components in the delta, theta, alpha, and beta frequency bands were investigated individually. Then, graph-theoretic analyses were performed using wavelet coherence-based connectivity maps. Global and local graph metrics such as energy efficiency, strength, transitivity, characteristic path length, and clustering coefficient were used as features for classification using support vector machines (SVMs), k-nearest neighbor(K-NN), and linear discriminant analysis (LDA). The results show that both pleasant/unpleasant emotional moods and low/high cognitive states can be discriminated, with average accuracies of up to 92% and 89%, respectively. Graph-theoretic metrics based on wavelet coherence of ERP components in the delta band with the SVM algorithm allow for the discrimination of emotional and cognitive states with high accuracy.
情感和认知是人类心理过程的两个重要组成部分,传统上是分开研究的。对情感和认知的探索是理解人类心理功能的基础。尽管有各种测量和评估情绪状态及认知过程的方法,但生理测量因其客观的方法被认为是最可靠的方法之一。特别是,脑电图(EEG)通过分析事件相关电位(ERP)为情感和认知活动提供了独特的见解。在本研究中,我们使用从时空成分中提取的图论特征来区分愉快/不愉快的情绪状态和低/高认知状态。情感数据在伊斯坦布尔大学伊斯坦布尔医学院生理系收集,而认知数据则从柏林工业大学的DepositOnce存储库中获取。分别研究了δ、θ、α和β频段中N100、N200和P300单次试验ERP成分的小波相干值。然后,使用基于小波相干的连接图进行图论分析。使用支持向量机(SVM)、k近邻(K-NN)和线性判别分析(LDA),将能量效率、强度、传递性、特征路径长度和聚类系数等全局和局部图指标用作分类特征。结果表明,愉快/不愉快的情绪状态和低/高认知状态都可以被区分,平均准确率分别高达92%和89%。基于δ频段ERP成分小波相干的图论指标与SVM算法能够高精度地区分情感和认知状态。