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Estimating hearing aid fitting presets with machine learning–based clustering strategies
Author(s) -
Chelzy Belitz,
Hussnain Ali,
John H. L. Hansen
Publication year - 2021
Publication title -
jasa express letters
Language(s) - English
Resource type - Journals
ISSN - 2691-1191
DOI - 10.1121/10.0007149
Subject(s) - cluster analysis , audiogram , computer science , convergence (economics) , machine learning , tone (literature) , artificial intelligence , speech recognition , audiology , hearing loss , medicine , economics , art , literature , economic growth
Although there exist nearly 35 × 10 6 hearing impaired people in the U.S., only an estimated 25% use hearing aids (HA), while others elect not to use prescribed HAs. Lack of HA acceptance can be attributed to several factors including (i) performance variability in diverse environments, (ii) time-to-convergence for best HA operating configuration, (iii) unrealistic expectations, and (iv) cost/insurance. This study examines a nationwide dataset of pure-tone audiograms and HA fitting configurations. An overview of data characteristics is presented, followed by use of machine learning clustering to suggest ways of obtaining effective starting configurations, thereby reducing time-to-convergence to improve HA retention.

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