University of Washington.
J Cogn Neurosci. 2019 Jan;31(1):78-94. doi: 10.1162/jocn_a_01337. Epub 2018 Sep 21.
The current study used quantitative electroencephalography (qEEG) to characterize individual differences in neural rhythms at rest and to relate them to fluid reasoning ability, to first language proficiency, and to subsequent second language (L2) learning ability, with the goal of obtaining a better understanding of the neurocognitive bases of L2 aptitude. Mean spectral power, laterality, and coherence metrics were extracted across theta, alpha, beta, and gamma frequency bands obtained from eyes-closed resting-state qEEG data from 41 adults aged 18-34 years. Participants then completed 8 weeks of French training using a virtual language and cultural immersion software. Results replicate and extend previous studies showing that faster learners have higher beta power recorded over right hemisphere (RH) electrode sites, greater laterality (RH - LH/RH + LH) of alpha and beta bands, and greater coherence between RH frontotemporal sites across all frequencies, although only coherence measures survived multiple comparisons. Increased coherence within and between RH networks was also associated with greater posttest declarative memory scores and with more accurate speech during learning. Total speech attempts, in contrast, correlated with bilaterally distributed small-world network configurations, as indexed by lower power and coherence over high-frequency (beta and gamma) bands recorded over frontotemporal networks in both hemispheres. Results from partial correlations and regression analyses suggest that the neural predictors of L2 learning rate, posttest proficiency, and total speech attempts varied in their degree of overlap with qEEG correlates of first language proficiency and fluid reasoning abilities, but that neural predictors alone explained 26-60% of the variance in L2 outcomes.
本研究采用定量脑电图(qEEG)来描述静息状态下神经节律的个体差异,并将其与流体推理能力、第一语言熟练度以及随后的第二语言(L2)学习能力联系起来,旨在更好地理解 L2 能力的神经认知基础。从 41 名 18-34 岁成年人闭眼静息状态 qEEG 数据中提取了theta、alpha、beta 和 gamma 频带的平均光谱功率、侧化和相干性指标。然后,参与者使用虚拟语言和文化沉浸软件完成了 8 周的法语培训。研究结果复制并扩展了先前的研究,表明更快的学习者在右半球(RH)电极位置记录到更高的 beta 功率、alpha 和 beta 波段的更大侧化(RH-LH/RH+LH)以及所有频率下 RH 额颞部位之间更大的相干性,尽管只有相干性测量值通过了多重比较。RH 网络内和之间的相干性增加也与更大的后测陈述性记忆分数以及学习期间更准确的言语相关。相比之下,总言语尝试与双侧分布的小世界网络结构相关,这与双侧额颞网络中高频(beta 和 gamma)带记录的功率和相干性较低有关。偏相关和回归分析的结果表明,L2 学习率、后测熟练度和总言语尝试的神经预测因子与第一语言熟练度和流体推理能力的 qEEG 相关性的重叠程度不同,但神经预测因子单独解释了 26%-60%的 L2 结果的方差。