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A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss
OBJECTIVE: Childhood hearing loss has well-known, lifelong consequences. Infection-related hearing loss disproportionately affects underserved communities yet can be prevented with early identification and treatment. This study evaluates the utility of machine learning in automating tympanogram clas...
Autores principales: | , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Lippincott Williams & Wilkins
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10426782/ https://www.ncbi.nlm.nih.gov/pubmed/37318215 http://dx.doi.org/10.1097/AUD.0000000000001380 |
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author | Jin, Felix Q. Huang, Ouwen Kleindienst Robler, Samantha Morton, Sarah Platt, Alyssa Egger, Joseph R. Emmett, Susan D. Palmeri, Mark L. |
author_facet | Jin, Felix Q. Huang, Ouwen Kleindienst Robler, Samantha Morton, Sarah Platt, Alyssa Egger, Joseph R. Emmett, Susan D. Palmeri, Mark L. |
author_sort | Jin, Felix Q. |
collection | PubMed |
description | OBJECTIVE: Childhood hearing loss has well-known, lifelong consequences. Infection-related hearing loss disproportionately affects underserved communities yet can be prevented with early identification and treatment. This study evaluates the utility of machine learning in automating tympanogram classifications of the middle ear to facilitate layperson-guided tympanometry in resource-constrained communities. DESIGN: Diagnostic performance of a hybrid deep learning model for classifying narrow-band tympanometry tracings was evaluated. Using 10-fold cross-validation, a machine learning model was trained and evaluated on 4810 pairs of tympanometry tracings acquired by an audiologist and layperson. The model was trained to classify tracings into types A (normal), B (effusion or perforation), and C (retraction), with the audiologist interpretation serving as reference standard. Tympanometry data were collected from 1635 children from October 10, 2017, to March 28, 2019, from two previous cluster-randomized hearing screening trials (NCT03309553, NCT03662256). Participants were school-aged children from an underserved population in rural Alaska with a high prevalence of infection-related hearing loss. Two-level classification performance statistics were calculated by treating type A as pass and types B and C as refer. RESULTS: For layperson-acquired data, the machine-learning model achieved a sensitivity of 95.2% (93.3, 97.1), specificity of 92.3% (91.5, 93.1), and area under curve of 0.968 (0.955, 0.978). The model’s sensitivity was greater than that of the tympanometer’s built-in classifier [79.2% (75.5, 82.8)] and a decision tree based on clinically recommended normative values [56.9% (52.4, 61.3)]. For audiologist-acquired data, the model achieved a higher AUC of 0.987 (0.980, 0.993), had an equivalent sensitivity of 95.2 (93.3, 97.1), and a higher specificity of 97.7 (97.3, 98.2). CONCLUSIONS: Machine learning can detect middle ear disease with comparable performance to an audiologist using tympanograms acquired either by an audiologist or a layperson. Automated classification enables the use of layperson-guided tympanometry in hearing screening programs in rural and underserved communities, where early detection of treatable pathology in children is crucial to prevent the lifelong adverse effects of childhood hearing loss. |
format | Online Article Text |
id | pubmed-10426782 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Lippincott Williams & Wilkins |
record_format | MEDLINE/PubMed |
spelling | pubmed-104267822023-08-16 A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss Jin, Felix Q. Huang, Ouwen Kleindienst Robler, Samantha Morton, Sarah Platt, Alyssa Egger, Joseph R. Emmett, Susan D. Palmeri, Mark L. Ear Hear Inclusion, Diversity, Equity, Accessibility Article OBJECTIVE: Childhood hearing loss has well-known, lifelong consequences. Infection-related hearing loss disproportionately affects underserved communities yet can be prevented with early identification and treatment. This study evaluates the utility of machine learning in automating tympanogram classifications of the middle ear to facilitate layperson-guided tympanometry in resource-constrained communities. DESIGN: Diagnostic performance of a hybrid deep learning model for classifying narrow-band tympanometry tracings was evaluated. Using 10-fold cross-validation, a machine learning model was trained and evaluated on 4810 pairs of tympanometry tracings acquired by an audiologist and layperson. The model was trained to classify tracings into types A (normal), B (effusion or perforation), and C (retraction), with the audiologist interpretation serving as reference standard. Tympanometry data were collected from 1635 children from October 10, 2017, to March 28, 2019, from two previous cluster-randomized hearing screening trials (NCT03309553, NCT03662256). Participants were school-aged children from an underserved population in rural Alaska with a high prevalence of infection-related hearing loss. Two-level classification performance statistics were calculated by treating type A as pass and types B and C as refer. RESULTS: For layperson-acquired data, the machine-learning model achieved a sensitivity of 95.2% (93.3, 97.1), specificity of 92.3% (91.5, 93.1), and area under curve of 0.968 (0.955, 0.978). The model’s sensitivity was greater than that of the tympanometer’s built-in classifier [79.2% (75.5, 82.8)] and a decision tree based on clinically recommended normative values [56.9% (52.4, 61.3)]. For audiologist-acquired data, the model achieved a higher AUC of 0.987 (0.980, 0.993), had an equivalent sensitivity of 95.2 (93.3, 97.1), and a higher specificity of 97.7 (97.3, 98.2). CONCLUSIONS: Machine learning can detect middle ear disease with comparable performance to an audiologist using tympanograms acquired either by an audiologist or a layperson. Automated classification enables the use of layperson-guided tympanometry in hearing screening programs in rural and underserved communities, where early detection of treatable pathology in children is crucial to prevent the lifelong adverse effects of childhood hearing loss. Lippincott Williams & Wilkins 2023-06-15 2023 /pmc/articles/PMC10426782/ /pubmed/37318215 http://dx.doi.org/10.1097/AUD.0000000000001380 Text en Copyright © 2023 The Authors. Ear & Hearing is published on behalf of the American Auditory Society, by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License 4.0 (CCBY (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Inclusion, Diversity, Equity, Accessibility Article Jin, Felix Q. Huang, Ouwen Kleindienst Robler, Samantha Morton, Sarah Platt, Alyssa Egger, Joseph R. Emmett, Susan D. Palmeri, Mark L. A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title | A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title_full | A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title_fullStr | A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title_full_unstemmed | A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title_short | A Hybrid Deep Learning Approach to Identify Preventable Childhood Hearing Loss |
title_sort | hybrid deep learning approach to identify preventable childhood hearing loss |
topic | Inclusion, Diversity, Equity, Accessibility Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10426782/ https://www.ncbi.nlm.nih.gov/pubmed/37318215 http://dx.doi.org/10.1097/AUD.0000000000001380 |
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