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A brain connectivity characterization of children with different levels of mathematical achievement based on graph metrics

机译:基于图形指标的不同数学成就水平的脑连接性格

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Recent studies aiming to facilitate mathematical skill development in primary school children have explored the electrophysiological characteristics associated with different levels of arithmetic achievement. The present work introduces an alternative EEG signal characterization using graph metrics and, based on such features, a classification analysis using a decision tree model. This proposal aims to identify group differences in brain connectivity networks with respect to mathematical skills in elementary school children. The methods of analysis utilized were signal-processing (EEG artifact removal, Laplacian filtering, and magnitude square coherence measurement) and the characterization (Graph metrics) and classification (Decision Tree) of EEG signals recorded during performance of a numerical comparison task. Our results suggest that the analysis of quantitative EEG frequency-band parameters can be used successfully to discriminate several levels of arithmetic achievement. Specifically, the most significant results showed an accuracy of 80.00% ( α band), 78.33% ( δ band), and 76.67% ( θ band) in differentiating high-skilled participants from low-skilled ones, averaged-skilled subjects from all others, and averaged-skilled participants from low-skilled ones, respectively. The use of a decision tree tool during the classification stage allows the identification of several brain areas that seem to be more specialized in numerical processing.
机译:旨在促进小学生数学技能发展的最近研究探讨了与不同水平的算术成果相关的电生理学特征。本工作用图形指标引入了替代EEG信号特性,并且基于这些特征,使用决策树模型进行分类分析。该提案旨在识别小学儿童数学技能的脑连接网络群体差异。利用的分析方法是信号处理(EEG伪像去除,拉普拉斯滤波和幅度方相干测量)以及在数值比较任务的性能期间记录的EEG信号的表征(图标准)和分类(决策树)。我们的研究结果表明,定量EEG频带参数的分析可以成功地用于区分几个算术成就。具体地,最显着的结果显示了80.00%(α波段),78.33%(δBAY)和76.67%(θ带)的精度,用于区分高熟练的参与者来自低技能的参与者,来自所有其他人的平均熟练的受试者分别来自低技能人员的平均技术参与者。在分类阶段期间使用决策树工具允许识别似乎在数值处理中更专业的若干脑区域。

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