Electroencephalogram Functional Connectivity Analysis and Classification of Mental Arithmetic Working Memory Task

Signals Pub Date : 2024-05-08 DOI:10.3390/signals5020016
Harshini Gangapuram, V. Manian
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引用次数: 0

Abstract

Analyzing brain activity during mental arithmetic tasks provides insight into psychological disorders such as ADHD, dyscalculia, and autism. While most research is conducted on the static functional connectivity of the brain while performing a cognitive task, the dynamic changes of the brain, which provide meaningful information for diagnosing individual differences in cognitive tasks, are often ignored. This paper aims to classify electroencephalogram (EEG) signals for rest vs. mental arithmetic task performance, using Bayesian functional connectivity features in the sensor space as inputs into a graph convolutional network. The subject-specific (intrasubject) classification performed on 36 subjects for rest vs. mental arithmetic task performance achieved the highest subject-specific classification accuracy of 98% and an average accuracy of 91% in the beta frequency band, outperforming state-of-the-art methods. In addition, statistical analysis confirms the consistency of Bayesian functional connectivity features compared to traditional functional connectivity features. Furthermore, the graph-theoretical analysis of functional connectivity networks reveals that good-performance subjects had higher global efficiency, betweenness centrality, and closeness centrality than bad-performance subjects. The ablation study on the classification of three cognitive states (subtraction, music, and memory) achieved a classification accuracy of 97%, and visual working memory (n-back task) achieved a classification accuracy of 94%, confirming the consistency and reliability of the proposed methodology.
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脑电图功能连接分析与心算工作记忆任务分类
分析大脑在完成心算任务时的活动可以帮助人们了解多动症、计算障碍和自闭症等心理疾病。大多数研究都是针对大脑在执行认知任务时的静态功能连接进行的,而大脑的动态变化却往往被忽视,而这种变化却能为诊断认知任务中的个体差异提供有意义的信息。本文旨在利用传感器空间中的贝叶斯功能连接特征作为图卷积网络的输入,对休息与心算任务表现的脑电图(EEG)信号进行分类。对 36 名受试者的静息与心算任务表现进行的特定受试者(受试者内)分类达到了 98% 的最高特定受试者分类准确率,β 频段的平均准确率为 91%,优于最先进的方法。此外,统计分析证实了贝叶斯功能连接特征与传统功能连接特征的一致性。此外,功能连接网络的图论分析表明,表现好的受试者比表现差的受试者具有更高的全局效率、间度中心性和接近中心性。对三种认知状态(减法、音乐和记忆)的消融分类研究达到了97%的分类准确率,视觉工作记忆(n-back任务)的分类准确率达到了94%,证实了所提方法的一致性和可靠性。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊最新文献
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