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在环境噪声中从语音学习的脑电图相关因素

EEG Correlates of Learning From Speech Presented in Environmental Noise.

作者信息

Eqlimi Ehsan, Bockstael Annelies, De Coensel Bert, Schönwiesner Marc, Talsma Durk, Botteldooren Dick

机构信息

WAVES Research Group, Department of Information Technology, Ghent University, Ghent, Belgium.

École d'Orthophonie et d'Audiologie, Université de Montréal, Montreal, QC, Canada.

出版信息

Front Psychol. 2020 Nov 5;11:1850. doi: 10.3389/fpsyg.2020.01850. eCollection 2020.

Abstract

How the human brain retains relevant vocal information while suppressing irrelevant sounds is one of the ongoing challenges in cognitive neuroscience. Knowledge of the underlying mechanisms of this ability can be used to identify whether a person is distracted during listening to a target speech, especially in a learning context. This paper investigates the neural correlates of learning from the speech presented in a noisy environment using an ecologically valid learning context and electroencephalography (EEG). To this end, the following listening tasks were performed while 64-channel EEG signals were recorded: (1) attentive listening to the lectures in background sound, (2) attentive listening to the background sound presented alone, and (3) inattentive listening to the background sound. For the first task, 13 lectures of 5 min in length embedded in different types of realistic background noise were presented to participants who were asked to focus on the lectures. As background noise, multi-talker babble, continuous highway, and fluctuating traffic sounds were used. After the second task, a written exam was taken to quantify the amount of information that participants have acquired and retained from the lectures. In addition to various power spectrum-based EEG features in different frequency bands, the peak frequency and long-range temporal correlations (LRTC) of alpha-band activity were estimated. To reduce these dimensions, a principal component analysis (PCA) was applied to the different listening conditions resulting in the feature combinations that discriminate most between listening conditions and persons. Linear mixed-effect modeling was used to explain the origin of extracted principal components, showing their dependence on listening condition and type of background sound. Following this unsupervised step, a supervised analysis was performed to explain the link between the exam results and the EEG principal component scores using both linear fixed and mixed-effect modeling. Results suggest that the ability to learn from the speech presented in environmental noise can be predicted by the several components over the specific brain regions better than by knowing the background noise type. These components were linked to deterioration in attention, speech envelope following, decreased focusing during listening, cognitive prediction error, and specific inhibition mechanisms.

摘要

人类大脑如何在抑制无关声音的同时保留相关语音信息,是认知神经科学中一个持续存在的挑战。了解这种能力的潜在机制可用于识别一个人在听目标语音时是否分心,尤其是在学习环境中。本文使用生态有效学习环境和脑电图(EEG),研究了在嘈杂环境中从语音学习的神经相关性。为此,在记录64通道EEG信号的同时,进行了以下听力任务:(1)在背景声音中专注听讲座,(2)专注听单独呈现的背景声音,以及(3)不专注听背景声音。对于第一个任务,向参与者呈现13个时长为5分钟、嵌入不同类型逼真背景噪声的讲座,要求他们专注于讲座。作为背景噪声,使用了多人交谈声、持续的高速公路声音和波动的交通声音。在第二个任务之后,进行了书面考试,以量化参与者从讲座中获取和保留的信息量。除了不同频段基于各种功率谱的EEG特征外,还估计了α波段活动的峰值频率和长程时间相关性(LRTC)。为了减少这些维度,对不同的听力条件应用主成分分析(PCA),得到在听力条件和个体之间区分度最大的特征组合。使用线性混合效应模型来解释提取的主成分的来源,表明它们对听力条件和背景声音类型的依赖性。在这个无监督步骤之后,进行了监督分析,使用线性固定效应和混合效应模型来解释考试成绩与EEG主成分得分之间的联系。结果表明,与了解背景噪声类型相比,特定脑区上的几个成分能更好地预测从环境噪声中语音学习的能力。这些成分与注意力下降、语音包络跟随、听力过程中注意力不集中、认知预测误差和特定抑制机制有关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e97b/7676901/f353b9b01e3e/fpsyg-11-01850-g0001.jpg

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