Saf Health Work.  2024 Jun;15(2):220-227. 10.1016/j.shaw.2024.02.004.

Utilizing Artificial Neural Networks for Establishing Hearing-Loss Predicting Models Based on a Longitudinal Dataset and Their Implications for Managing the Hearing Conservation Program

Affiliations
  • 1Department of Environmental and Occupational Health, College of Medicine, National Cheng Kung University, Tainan City, Taiwan
  • 2Department of Occupational Safety and Health, Chung Hwa University of Medical Technology, Tainan County, Taiwan
  • 3Department of Environmental and Occupational Medicine, Medical College, National Taiwan University, Taipei City, Taiwan
  • 4Environmental and Labor Affairs Division, Southern Taiwan Science Park Bureau, Ministry of Science and Technology, Tainan City, Taiwan
  • 5Department of Environmental Health Sciences, Seoul National University Graduate School of Public Health, Seoul, Republic of Korea
  • 6Department of Otolaryngology, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan City, Taiwan

Abstract

Background
Though the artificial neural network (ANN) technique has been used to predict noise-induced hearing loss (NIHL), the established prediction models have primarily relied on cross-sectional datasets, and hence, they may not comprehensively capture the chronic nature of NIHL as a disease linked to long-term noise exposure among workers.
Methods
A comprehensive dataset was utilized, encompassing eight-year longitudinal personal hearing threshold levels (HTLs) as well as information on seven personal variables and two environmental variables to establish NIHL predicting models through the ANN technique. Three subdatasets were extracted from the afirementioned comprehensive dataset to assess the advantages of the present study in NIHL predictions.
Results
The dataset was gathered from 170 workers employed in a steel-making industry, with a median cumulative noise exposure and HTL of 88.40 dBA-year and 19.58 dB, respectively. Utilizing the longitudinal dataset demonstrated superior prediction capabilities compared to cross-sectional datasets. Incorporating the more comprehensive dataset led to improved NIHL predictions, particularly when considering variables such as noise pattern and use of personal protective equipment. Despite fluctuations observed in the measured HTLs, the ANN predicting models consistently revealed a discernible trend.
Conclusions
A consistent correlation was observed between the measured HTLs and the results obtained from the predicting models. However, it is essential to exercise caution when utilizing the model-predicted NIHLs for individual workers due to inherent personal fluctuations in HTLs. Nonetheless, these ANN models can serve as a valuable reference for the industry in effectively managing its hearing conservation program.

Keyword

Arti ficial neural network; Cross-sectional data; Longitudinal data; Noise-induced hearing losses; Predicting model
Full Text Links
  • SHAW
Actions
Cited
CITED
export Copy
Close
Share
  • Twitter
  • Facebook
Similar articles
Copyright © 2024 by Korean Association of Medical Journal Editors. All rights reserved.     E-mail: koreamed@kamje.or.kr