Level-Dependent Subcortical Electroencephalography Responses to Continuous Speech.

IF 2.7 3区 医学 Q3 NEUROSCIENCES
eNeuro Pub Date : 2024-08-27 Print Date: 2024-08-01 DOI:10.1523/ENEURO.0135-24.2024
Joshua P Kulasingham, Hamish Innes-Brown, Martin Enqvist, Emina Alickovic
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Abstract

The auditory brainstem response (ABR) is a measure of subcortical activity in response to auditory stimuli. The wave V peak of the ABR depends on the stimulus intensity level, and has been widely used for clinical hearing assessment. Conventional methods estimate the ABR average electroencephalography (EEG) responses to short unnatural stimuli such as clicks. Recent work has moved toward more ecologically relevant continuous speech stimuli using linear deconvolution models called temporal response functions (TRFs). Investigating whether the TRF waveform changes with stimulus intensity is a crucial step toward the use of natural speech stimuli for hearing assessments involving subcortical responses. Here, we develop methods to estimate level-dependent subcortical TRFs using EEG data collected from 21 participants listening to continuous speech presented at 4 different intensity levels. We find that level-dependent changes can be detected in the wave V peak of the subcortical TRF for almost all participants, and are consistent with level-dependent changes in click-ABR wave V. We also investigate the most suitable peripheral auditory model to generate predictors for level-dependent subcortical TRFs and find that simple gammatone filterbanks perform the best. Additionally, around 6 min of data may be sufficient for detecting level-dependent effects and wave V peaks above the noise floor for speech segments with higher intensity. Finally, we show a proof-of-concept that level-dependent subcortical TRFs can be detected even for the inherent intensity fluctuations in natural continuous speech.

连续语音的皮层下脑电图反应水平依赖性。
听性脑干反应(ABR)是皮层下活动对听觉刺激反应的一种测量方法。ABR 的波峰 V 值取决于刺激强度水平,已被广泛用于临床听力评估。传统的 ABR 估算方法是将脑电图(EEG)反应平均到短的非自然刺激,如咔嗒声。最近的工作已转向使用称为时序响应函数(TRF)的线性解卷积模型来估算与生态逻辑更相关的连续语音刺激。调查 TRF 波形是否随刺激强度变化是使用自然语音刺激进行听力评估(涉及皮层下反应)的关键一步。在此,我们利用从 21 位聆听以 4 种不同强度水平呈现的连续语音的参与者处收集的脑电图数据,开发了估算皮层下 TRF 随强度变化的方法。我们发现,几乎所有参与者的皮层下 TRF 的 V 波峰值都能检测到电平依赖性变化,并且与点击-ABR V 波的电平依赖性变化一致。我们还研究了最适合生成预测电平依赖性皮层下 TRF 的外周听觉模型,并发现简单的伽马通滤波器库表现最佳。此外,大约 6 分钟的数据可能足以检测出电平依赖效应,以及强度较高的语音片段中高于噪声底限的 V 波峰值。最后,我们展示了一个概念证明,即即使是自然连续语音中固有的强度波动,也能检测到与电平相关的皮层下 TRF。 意义声明 皮层下脑电图对声音的反应取决于刺激强度水平,并为早期人类听觉通路提供了一个窗口。然而,目前的方法是使用非自然的瞬时刺激(如咔嗒声或啾啾声)来检测反应。我们开发的方法可检测对连续语音刺激的水平依赖性反应,这与生态学更加相关,而且与瞬时刺激相比可能具有一些优势。重要的是,我们在个体水平上发现了对连续语音的皮层下反应与水平相关的一致模式,这种模式可直接与对点击刺激的传统反应相媲美。我们的研究为将来在临床听力评估和听力辅助技术等应用中使用皮层下对自然语音刺激的反应奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
eNeuro
eNeuro Neuroscience-General Neuroscience
CiteScore
5.00
自引率
2.90%
发文量
486
审稿时长
16 weeks
期刊介绍: An open-access journal from the Society for Neuroscience, eNeuro publishes high-quality, broad-based, peer-reviewed research focused solely on the field of neuroscience. eNeuro embodies an emerging scientific vision that offers a new experience for authors and readers, all in support of the Society’s mission to advance understanding of the brain and nervous system.
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