Literature DB >> 25432298

Prediction of hearing loss among the noise-exposed workers in a steel factory using artificial intelligence approach.

Mohsen Aliabadi1, Maryam Farhadian, Ebrahim Darvishi.   

Abstract

PURPOSE: Prediction of hearing loss in noisy workplaces is considered to be an important aspect of hearing conservation program. Artificial intelligence, as a new approach, can be used to predict the complex phenomenon such as hearing loss. Using artificial neural networks, this study aims to present an empirical model for the prediction of the hearing loss threshold among noise-exposed workers.
METHODS: Two hundred and ten workers employed in a steel factory were chosen, and their occupational exposure histories were collected. To determine the hearing loss threshold, the audiometric test was carried out using a calibrated audiometer. The personal noise exposure was also measured using a noise dosimeter in the workstations of workers. Finally, data obtained five variables, which can influence the hearing loss, were used for the development of the prediction model. Multilayer feed-forward neural networks with different structures were developed using MATLAB software. Neural network structures had one hidden layer with the number of neurons being approximately between 5 and 15 neurons.
RESULTS: The best developed neural networks with one hidden layer and ten neurons could accurately predict the hearing loss threshold with RMSE = 2.6 dB and R(2) = 0.89. The results also confirmed that neural networks could provide more accurate predictions than multiple regressions.
CONCLUSIONS: Since occupational hearing loss is frequently non-curable, results of accurate prediction can be used by occupational health experts to modify and improve noise exposure conditions.

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Year:  2014        PMID: 25432298     DOI: 10.1007/s00420-014-1004-z

Source DB:  PubMed          Journal:  Int Arch Occup Environ Health        ISSN: 0340-0131            Impact factor:   3.015


  29 in total

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2.  Combined effect of smoking and occupational exposure to noise on hearing loss in steel factory workers.

Authors:  T Mizoue; T Miyamoto; T Shimizu
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3.  Artificial neural networks and job-specific modules to assess occupational exposure.

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4.  Cigarette smoking, occupational exposure to noise, and self reported hearing difficulties.

Authors:  K T Palmer; M J Griffin; H E Syddall; D Coggon
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5.  Development and validation of a screening questionnaire for noise-induced hearing loss.

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6.  Prevalence and risk factors of noise-induced hearing loss among liquefied petroleum gas (LPG) cylinder infusion workers in Taiwan.

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8.  Time trends analysis of hearing loss: an alternative approach to evaluating hearing loss prevention programs.

Authors:  T Adera; C Amir; L Anderson
Journal:  AIHAJ       Date:  2000 Mar-Apr

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10.  Identification and classification of high risk groups for Coal Workers' Pneumoconiosis using an artificial neural network based on occupational histories: a retrospective cohort study.

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  11 in total

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4.  Diagnosing thyroid disorders: Comparison of logistic regression and neural network models.

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5.  The combined effects of occupational exposure to noise and other risk factors - a systematic review.

Authors:  Rostam Golmohammadi; Ebrahim Darvishi
Journal:  Noise Health       Date:  2019 Jul-Aug       Impact factor: 0.867

6.  A risk model and nomogram for high-frequency hearing loss in noise-exposed workers.

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Journal:  BMC Public Health       Date:  2021-04-17       Impact factor: 3.295

7.  Comparison of data mining algorithms for sex determination based on mastoid process measurements using cone-beam computed tomography.

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8.  Improving classification based on physical surface tension-neural net for the prediction of psychosocial-risk level in public school teachers.

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9.  Status of Hearing Loss and Its Related Factors among Drivers in Zahedan, South-Eastern Iran.

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Journal:  Glob J Health Sci       Date:  2016-08-01

10.  Individual Fit Testing of Hearing Protection Devices Based on Microphone in Real Ear.

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Journal:  Saf Health Work       Date:  2017-04-04
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