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Data-Driven Audiogram Classification for Mobile Audiometry.

François CharihMatthew BromwichAmy E MarkRenée LefrançoisJames R Green
Published in: Scientific reports (2020)
Recent mobile and automated audiometry technologies have allowed for the democratization of hearing healthcare and enables non-experts to deliver hearing tests. The problem remains that a large number of such users are not trained to interpret audiograms. In this work, we outline the development of a data-driven audiogram classification system designed specifically for the purpose of concisely describing audiograms. More specifically, we present how a training dataset was assembled and the development of the classification system leveraging supervised learning techniques. We show that three practicing audiologists had high intra- and inter-rater agreement over audiogram classification tasks pertaining to audiogram configuration, symmetry and severity. The system proposed here achieves a performance comparable to the state of the art, but is significantly more flexible. Altogether, this work lays a solid foundation for future work aiming to apply machine learning techniques to audiology for audiogram interpretation.
Keyphrases
  • machine learning
  • deep learning
  • healthcare
  • artificial intelligence
  • big data
  • hearing loss
  • high throughput
  • current status