Predicting speech intelligibility from EEG in a non-linear classification paradigm
Bernd Accou, Mohammad Jalilpour Monesi, Hugo Van hamme, Tom, Francart

TL;DR
This paper introduces a deep learning model using dilated convolutions to objectively predict speech intelligibility from EEG data without subject-specific training, correlating well with behavioral tests.
Contribution
It presents the first EEG-based deep learning approach to estimate speech reception thresholds across unseen subjects, advancing objective speech intelligibility assessment.
Findings
Model outperformed baselines across most EEG bands and receptive fields.
Finetuning improved accuracy on new data.
Significant correlation with behavioral speech reception thresholds.
Abstract
Objective: Currently, only behavioral speech understanding tests are available, which require active participation of the person being tested. As this is infeasible for certain populations, an objective measure of speech intelligibility is required. Recently, brain imaging data has been used to establish a relationship between stimulus and brain response. Linear models have been successfully linked to speech intelligibility but require per-subject training. We present a deep-learning-based model incorporating dilated convolutions that operates in a match/mismatch paradigm. The accuracy of the model's match/mismatch predictions can be used as a proxy for speech intelligibility without subject-specific (re)training. Approach: We evaluated the performance of the model as a function of input segment length, EEG frequency band and receptive field size while comparing it to multiple baseline…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Hearing Loss and Rehabilitation · Blind Source Separation Techniques
