BMC Public Health (Nov 2023)

Investigation of critical factors influencing the underestimation of hearing loss predicted by the ISO 1999 predicting model

  • Fei Li,
  • Hong-wei Xie,
  • Shi-biao Su,
  • Hua Zou,
  • Li-Fang ZHou,
  • Qiu-Liang Xu,
  • Fang Wei,
  • Mei-bian Zhang

DOI
https://doi.org/10.1186/s12889-023-17138-w
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 14

Abstract

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Abstract Objective To analyze factors influencing the underestimation of noise-induced permanent threshold shift (NIPTS) among manufacturing workers, providing baseline data for revising noise exposure standard. Design A cross-sectional study was designed with 2702 noise-exposed workers from 35 enterprises from 10 industries. Personal noise exposure level(L Aeq,8h ) and noise kurtosis level were determined by a noise dosimeter. Questionnaires and hearing loss tests were performed for each subject. The predicted NIPTS was calculated using the ISO 1999:2013 model for each participant, and the actual measured NIPTS was corrected for age and sex. The factors influencing the underestimation of NIPTS were investigated. Results The predicted NIPTS at each test frequency (0.5, 1, 2, 3, 4, or 6kHz) and mean NIPTS at 2, 3, 4, and 6kHz (NIPTS2346) using the ISO 1999:2013 model were significantly lower than their corresponding measured NIPTS, respectively (P 90 dB(A)]. The underestimated NIPTS2346 increased with an increase in noise kurtosis after adjusting for the noise exposure level and exposure duration and ultimately exhibiting a linear regression relationship. Conclusions The ISO 1999 predicting model significantly underestimated the noise-induced hearing loss among manufacturing workers. The degree of underestimation became more significant at the noise exposure condition of fewer than ten years, less than 90 dB(A), and higher kurtosis levels. It is necessary to apply kurtosis to adjust the underestimation of hearing loss and consider the applying condition of noise energy metrics when using the ISO predicting model.

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