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脑电图相干性分析反映了童年中期数学成绩的差异。

The analysis of EEG coherence reflects middle childhood differences in mathematical achievement.

作者信息

González-Garrido Andrés A, Gómez-Velázquez Fabiola R, Salido-Ruiz Ricardo A, Espinoza-Valdez Aurora, Vélez-Pérez Hugo, Romo-Vazquez Rebeca, Gallardo-Moreno Geisa B, Ruiz-Stovel Vanessa D, Martínez-Ramos Alicia, Berumen Gustavo

机构信息

Instituto de Neurociencias, Universidad de Guadalajara, Francisco de Quevedo 180, Col. Arcos Vallarta, Guadalajara, Jalisco 44130, Mexico; O.P.D. Hospital Civil de Guadalajara, Calle Coronel Calderón #777, El Retiro, 44280 Guadalajara, Jalisco, Mexico.

Instituto de Neurociencias, Universidad de Guadalajara, Francisco de Quevedo 180, Col. Arcos Vallarta, Guadalajara, Jalisco 44130, Mexico.

出版信息

Brain Cogn. 2018 Jul;124:57-63. doi: 10.1016/j.bandc.2018.04.006. Epub 2018 May 7.

DOI:10.1016/j.bandc.2018.04.006
PMID:29747149
Abstract

Symbolic numerical magnitude processing is crucial to arithmetic development, and it is thought to be supported by the functional activation of several brain-interconnected structures. In this context, EEG beta oscillations have been recently associated with attention and working memory processing that underlie math achievement. Due to that EEG coherence represents a useful measure of brain functional connectivity, we aimed to contrast the EEG coherence in forty 8-to-9-year-old children with different math skill levels (High: HA, and Low achievement: LA) according to their arithmetic scores in the Fourth Edition of the Wide Range Achievement Test (WRAT-4) while performing a symbolic magnitude comparison task (i.e. determining which of two numbers is numerically larger). The analysis showed significantly greater coherence over the right hemisphere in the two groups, but with a distinctive connectivity pattern. Whereas functional connectivity in the HA group was predominant in parietal areas, especially involving beta frequencies, the LA group showed more extensive frontoparietal relationships, with higher participation of delta, theta and alpha band frequencies, along with a distinct time-frequency domain expression. The results seem to reflect that lower math achievements in children mainly associate with cognitive processing steps beyond stimulus encoding, along with the need of further attentional resources and cognitive control than their peers, suggesting a lower degree of numerical processing automation.

摘要

符号数字大小处理对算术发展至关重要,并且人们认为它受到几个大脑相互连接结构的功能激活的支持。在这种背景下,脑电图β振荡最近与作为数学成绩基础的注意力和工作记忆处理相关联。由于脑电图相干性是大脑功能连接性的一种有用测量方法,我们旨在根据40名8至9岁儿童在《广泛成就测验第四版》(WRAT - 4)中的算术分数,将他们分为不同数学技能水平(高:HA,低成就:LA),并在他们执行符号大小比较任务(即确定两个数字中哪个在数值上更大)时对比两组儿童的脑电图相干性。分析表明,两组在右半球的相干性均显著更高,但具有独特的连接模式。HA组的功能连接主要在顶叶区域,尤其涉及β频率,而LA组则表现出更广泛的额顶叶关系,δ、θ和α频段频率的参与度更高,同时具有独特的时频域表达。结果似乎反映出,儿童较低的数学成绩主要与刺激编码之外的认知处理步骤相关,并且与同龄人相比,他们需要更多的注意力资源和认知控制,这表明数字处理自动化程度较低。

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