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Objective comparison of audiometric profile frameworks across large-scale datasets

Objective comparison of audiometric profile frameworks across large-scale datasets
Objective comparison of audiometric profile frameworks across large-scale datasets

Audiometric profiles classify individuals according to patterns of hearing loss derived from the audiogram. Although several audiogram-based profiling frameworks have been proposed, the influence of dataset characteristics on their structural performance has not been systematically examined. This study compared six established audiometric profiling frameworks across five large-scale datasets from the United States and Germany using the Davies-Bouldin score and principal component analysis. Clustering performance based on the Davies-Bouldin score was largely comparable across datasets, although profile-specific differences were observed. These findings inform the robustness and generalizability of audiogram-based classification frameworks across large-scale samples.

2691-1191
Xu, Chen
73268368-81b7-46b9-b752-5d0392977212
Xu, Chen
73268368-81b7-46b9-b752-5d0392977212

Xu, Chen (2026) Objective comparison of audiometric profile frameworks across large-scale datasets. JASA Express Letters, 6 (4), [044402]. (doi:10.1121/10.0043212).

Record type: Article

Abstract

Audiometric profiles classify individuals according to patterns of hearing loss derived from the audiogram. Although several audiogram-based profiling frameworks have been proposed, the influence of dataset characteristics on their structural performance has not been systematically examined. This study compared six established audiometric profiling frameworks across five large-scale datasets from the United States and Germany using the Davies-Bouldin score and principal component analysis. Clustering performance based on the Davies-Bouldin score was largely comparable across datasets, although profile-specific differences were observed. These findings inform the robustness and generalizability of audiogram-based classification frameworks across large-scale samples.

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Accepted/In Press date: 13 March 2026
e-pub ahead of print date: 1 April 2026
Published date: 1 April 2026

Identifiers

Local EPrints ID: 511513
URI: http://eprints.soton.ac.uk/id/eprint/511513
ISSN: 2691-1191
PURE UUID: b21f75f6-e68e-4ebb-beb3-0a6138aefb83
ORCID for Chen Xu: ORCID iD orcid.org/0000-0003-3233-3179

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Date deposited: 18 May 2026 16:51
Last modified: 19 May 2026 02:13

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Contributors

Author: Chen Xu ORCID iD

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