| Literature DB >> 31607841 |
Jonas Vanthornhout1, Lien Decruy1, Tom Francart1.
Abstract
EEG-based measures of neural tracking of natural running speech are becoming increasingly popular to investigate neural processing of speech and have applications in audiology. When the stimulus is a single speaker, it is usually assumed that the listener actively attends to and understands the stimulus. However, as the level of attention of the listener is inherently variable, we investigated how this affected neural envelope tracking. Using a movie as a distractor, we varied the level of attention while we estimated neural envelope tracking. We varied the intelligibility level by adding stationary noise. We found a significant difference in neural envelope tracking between the condition with maximal attention and the movie condition. This difference was most pronounced in the right-frontal region of the brain. The degree of neural envelope tracking was highly correlated with the stimulus signal-to-noise ratio, even in the movie condition. This could be due to residual neural resources to passively attend to the stimulus. When envelope tracking is used to measure speech understanding objectively, this means that the procedure can be made more enjoyable and feasible by letting participants watch a movie during stimulus presentation.Entities:
Keywords: EEG; attention; auditory processing; decoding; envelope tracking
Year: 2019 PMID: 31607841 PMCID: PMC6756133 DOI: 10.3389/fnins.2019.00977
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Figure 1Neural envelope tracking as a function of SNR for multiple integration windows. Significant differences in envelope tracking between the attention and movie condition are indicated with a star. The lines are a cubic spline interpolating the medians of each SNR. (Left) Neural envelope tracking as a function of SNR in the delta band (0.5–4 Hz) using a 0–75 ms integration window. (Right) Neural envelope tracking as a function of SNR in the delta band (0.5–4 Hz) using a 0–500 ms integration window.
Figure 2The difference in topography of the attention condition and the movie condition for the matrix data at different latencies. This was obtained by subtracting the TRFs for the movie and attention conditions. Channels and latencies that were found to contribute significantly to this difference in a cluster-based analysis are indicated with black dots.
Figure 3The topography of the attention condition using the Matrix data between 141 and 203 ms.
Figure 4The topography of the movie condition using the Matrix data between 141 and 203 ms.
Figure 5The TRF of the attention and the movie condition for the Matrix sentences using a 0–500 ms integration window and unfiltered data. The TRFs are significantly different, and the difference is most pronounced from 141 to 188 ms.