Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users

Modern hearing instruments contain logging technology to record data, such as the acoustic environments in which the device is being used and how the signal processing is consequently operating. Combined with patient data, such as the audiogram, this information gives a more comprehensive picture of...

Full description

Bibliographic Details
Main Authors: Joseph Mellor, Michael A. Stone, John Keane
Format: Article
Language:English
Published: SAGE Publishing 2018-05-01
Series:Trends in Hearing
Online Access:https://doi.org/10.1177/2331216518773632
id doaj-239b0c1bcbd34b7eac0dc7d1d2a22dff
record_format Article
spelling doaj-239b0c1bcbd34b7eac0dc7d1d2a22dff2020-11-25T03:24:03ZengSAGE PublishingTrends in Hearing2331-21652018-05-012210.1177/2331216518773632Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and UsersJoseph Mellor0Michael A. Stone1John Keane2School of Computer Science, University of Manchester, Manchester, UKManchester Academic Health Sciences Centre, University of Manchester, Manchester, UKManchester Institute of Biotechnology, University of Manchester, Manchester, UKModern hearing instruments contain logging technology to record data, such as the acoustic environments in which the device is being used and how the signal processing is consequently operating. Combined with patient data, such as the audiogram, this information gives a more comprehensive picture of the user and their relationship with the aid. Here, a relatively large, anonymized dataset (>300,000 devices, >150,000 wearers) from a hearing-aid manufacturer was data mined for connections between subsets of the logged varieties of data. Apart from replicating links that have previously been reported in labor-intensive studies, a link between device style (in-the-ear/behind-the-ear) and the sound levels of encountered environments was demonstrated, suggesting that some device types are more successful from a lifestyle perspective. Furthermore, the data also suggested links between the audiogram and the sound environments in which the aid was operated. Modeling the expected link between the environment and the microphone directionality settings revealed patterns of either abnormal fitting or where the aid was not operating correctly—factors that may indicate a failed fitting. Given the necessarily redacted nature of the dataset, the reported findings represent a proof-of-concept of the use of relatively large-scale data mining to guide and assess hearing-aid fitting procedures for possible benefits to the clinician, manufacturer, and patient.https://doi.org/10.1177/2331216518773632
collection DOAJ
language English
format Article
sources DOAJ
author Joseph Mellor
Michael A. Stone
John Keane
spellingShingle Joseph Mellor
Michael A. Stone
John Keane
Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
Trends in Hearing
author_facet Joseph Mellor
Michael A. Stone
John Keane
author_sort Joseph Mellor
title Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
title_short Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
title_full Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
title_fullStr Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
title_full_unstemmed Application of Data Mining to a Large Hearing-Aid Manufacturer’s Dataset to Identify Possible Benefits for Clinicians, Manufacturers, and Users
title_sort application of data mining to a large hearing-aid manufacturer’s dataset to identify possible benefits for clinicians, manufacturers, and users
publisher SAGE Publishing
series Trends in Hearing
issn 2331-2165
publishDate 2018-05-01
description Modern hearing instruments contain logging technology to record data, such as the acoustic environments in which the device is being used and how the signal processing is consequently operating. Combined with patient data, such as the audiogram, this information gives a more comprehensive picture of the user and their relationship with the aid. Here, a relatively large, anonymized dataset (>300,000 devices, >150,000 wearers) from a hearing-aid manufacturer was data mined for connections between subsets of the logged varieties of data. Apart from replicating links that have previously been reported in labor-intensive studies, a link between device style (in-the-ear/behind-the-ear) and the sound levels of encountered environments was demonstrated, suggesting that some device types are more successful from a lifestyle perspective. Furthermore, the data also suggested links between the audiogram and the sound environments in which the aid was operated. Modeling the expected link between the environment and the microphone directionality settings revealed patterns of either abnormal fitting or where the aid was not operating correctly—factors that may indicate a failed fitting. Given the necessarily redacted nature of the dataset, the reported findings represent a proof-of-concept of the use of relatively large-scale data mining to guide and assess hearing-aid fitting procedures for possible benefits to the clinician, manufacturer, and patient.
url https://doi.org/10.1177/2331216518773632
work_keys_str_mv AT josephmellor applicationofdataminingtoalargehearingaidmanufacturersdatasettoidentifypossiblebenefitsforcliniciansmanufacturersandusers
AT michaelastone applicationofdataminingtoalargehearingaidmanufacturersdatasettoidentifypossiblebenefitsforcliniciansmanufacturersandusers
AT johnkeane applicationofdataminingtoalargehearingaidmanufacturersdatasettoidentifypossiblebenefitsforcliniciansmanufacturersandusers
_version_ 1724603672781914112