Improving Hearing Healthcare with Big Data Analytics of Real-Time Hearing Aid Data
Creators
- 1. Eriksholm Research Centre, Oticon A/S, Snekkersten, Denmark
- 2. Department of Computer Science, Universit`a degli Studi di Milano
Description
Modern hearing aids are not simple passive sound enhancers, but rather complex devices that can log (via smartphones) multivariate real-time data from the acoustic environment of a user. In the evotion project (http://h2020evotion.eu)
such hearing aids are integrated with a Big Data analytics platform to bring about ecologically valid evidence to support the
hearing healthcare sector. Here, we present the background of the Big Data analytics platform and demonstrate that modeling
of longitudinally sampled data from hearing aids can support clinical investigations with hypotheses about hearing aid usage
prognosis, and support public health decision-making within the hearing healthcare sector by simulation techniques. We
found, that distinct characteristics of the acoustic environment significantly modulate how hearing impaired individuals use
their hearing aids. Higher sound levels and an increased sound diversity but degraded signal quality all predicts more minutes
of use per hour. By simulation, we show that a projected increase in the overall sound levels by 10dB followed by a 4dB
increase in noise exposure will increase the need for hearing aid use by an additional 1 hour/day
Files
Christensen et al 2019 IEEE2019services.pdf
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