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Objective Auditory Brainstem Response Classification Using Machine Learning

Overview
Journal Int J Audiol
Publisher Informa Healthcare
Date 2019 Jan 22
PMID 30663907
Citations 14
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Abstract

Objective: The objective of this study was to use machine learning in the form of a deep neural network to objectively classify paired auditory brainstem response waveforms into either: 'clear response', 'inconclusive' or 'response absent'.

Design: A deep convolutional neural network was constructed and fine-tuned using stratified 10-fold cross-validation on 190 paired ABR waveforms. The final model was evaluated on a test set of 42 paired waveforms.

Study Sample: The full dataset comprised 232 paired ABR waveforms recorded from eight normal-hearing individuals. The dataset was obtained from the PhysioBank database. The paired waveforms were independently labelled by two audiological scientists in order to train the network and evaluate its performance.

Results: The trained neural network was able to classify paired ABR waveforms with 92.9% accuracy. The sensitivity and the specificity were 92.9% and 96.4%, respectively.

Conclusions: This neural network may have clinical utility in assisting clinicians with waveform classification for the purpose of hearing threshold estimation. Further evaluation using a large clinically obtained dataset would provide further validation with regard to the clinical potential of the neural network in diagnostic adult testing, newborn testing and in automated newborn hearing screening.

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Objective hearing threshold identification from auditory brainstem response measurements using supervised and self-supervised approaches.

Thalmeier D, Miller G, Schneltzer E, Hurt A, Hrabe deAngelis M, Becker L BMC Neurosci. 2022; 23(1):81.

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Fawcett T, Longenecker R, Brunelle D, Berger J, Wallace M, Galazyuk A Hear Res. 2022; 428:108667.

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