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Data-driven audiogram classifier using data normalization and multi-stage feature selection

Journal
Scientific Reports
ISSN
2045-2322
Date Issued
2023
Author(s)
Abeer Elkhouly
Universiti Malaysia Perlis
Allan Melvin Andrew
Universiti Malaysia Perlis
Nidhal Abdulaziz
Heriot-Watt University, Dubai Campus
Hasliza A Rahim @ Samsuddin
Universiti Malaysia Perlis
Mohd Fareq Abd Malek
University of Wollongong
Shafiquzzaman Siddique
Universiti Malaysia Sabah
DOI
10.1038/s41598-022-25411-y
Handle (URI)
https://www.nature.com/articles/s41598-022-25411-y
https://hdl.handle.net/20.500.14170/14357
Abstract
Audiograms are used to show the hearing capability of a person at different frequencies. The filter bank in a hearing aid is designed to match the shape of patients’ audiograms. Configuring the hearing aid is done by modifying the designed filters’ gains to match the patient’s audiogram. There are few problems faced in achieving this objective successfully. There is a shortage in the number of audiologists; the filter bank hearing aid designs are complex; and, the hearing aid fitting process is tiring. In this work, a machine learning solution is introduced to classify the audiograms according to the shapes based on unsupervised spectral clustering. The features used to build the ML model are peculiar and describe the audiograms better. Different normalization methods are applied and studied statistically to improve the training data set. The proposed Machine Learning (ML) algorithm outperformed the current existing models, where, the accuracy, precision, recall, specificity, and F-score values are higher. The reason for the better performance is the use of multi-stage feature selection to describe the audiograms precisely. This work introduces a novel ML technique to classify audiograms according to the shape, which, can be integrated to the future and existing studies to change the existing practices in classifying audiograms.
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