闭环个体特异性脑电图神经反馈对情绪调节的影响

Xiaotong Liu, Jiayuan Zhao, Siyu Wang, Guangying Pei, S. Funahashi, Tianyi Yan
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引用次数: 0

摘要

个体差异是影响情绪调节神经反馈训练效果的主要因素。基于机器学习,可以构建个体情感识别模型。然而,目前的研究仅仅是为了满足实时反馈而进行预处理,导致分类精度降低。提出了一种反馈信息精度高的闭环脑电图神经反馈处理方案。利用伪影子空间重构优化脑电信号处理。5个频带的积极、中性和消极情绪地形图验证了个体间的差异。基于功率谱密度特征,采用支持向量机和粒子群算法构建个体情感识别模型。5个被试的平均分类准确率为97.49%。情绪面部Go/No-go任务客观地证明了神经反馈训练对情绪调节的有效性。闭环个体特异性脑电图神经反馈程序为情绪调节训练提供了一种很有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Closed-loop Individual-specific EEG Neurofeedback for Emotion Regulation
Individual difference is the main factor affecting the effect of emotion regulation neurofeedback training. An individual-specific emotion recognition model can be constructed based on machine learning. However, the current researches simply the preprocessing process to meet real-time feedback, resulting in a reduction in classification accuracy. This paper proposes a closed-loop electroencephalogram (EEG) neurofeedback processing program with high accuracy in feedback information. Artifact subspace reconstruction is used to optimize EEG processing. The positive, neutral, and negative emotion topographic maps of the 5 frequency bands verify inter-individual differences. A support vector machine with particle swarm optimization is used to construct an individual emotion recognition model based on the power spectral density features. The average classification accuracy of 5 subjects is 97.49%. The emotion facial Go/No-go task objectively demonstrates the effectiveness of neurofeedback training on emotion regulation. The closed-loop individual-specific EEG neurofeedback program provides a promising method for emotion regulation training.
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