Aliabadi Mohsen, Farhadian Maryam, Darvishi Ebrahim
Department of Occupational Health, School of Public Health, Hamadan University of Medical Science, Hamadan, Iran,
Int Arch Occup Environ Health. 2015 Aug;88(6):779-87. doi: 10.1007/s00420-014-1004-z. Epub 2014 Nov 29.
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.
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.
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.
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.
预测嘈杂工作场所的听力损失被认为是听力保护计划的一个重要方面。人工智能作为一种新方法,可用于预测诸如听力损失等复杂现象。本研究旨在利用人工神经网络,建立一个预测噪声暴露工人听力损失阈值的实证模型。
选取了一家钢铁厂的210名工人,收集他们的职业暴露史。为了确定听力损失阈值,使用校准听力计进行听力测试。还在工人的工作场所使用噪声剂量计测量个人噪声暴露。最后,将获得的五个可能影响听力损失的变量用于预测模型的开发。使用MATLAB软件开发了具有不同结构的多层前馈神经网络。神经网络结构有一个隐藏层,神经元数量约在5到15个之间。
开发出的最佳神经网络有一个隐藏层和10个神经元,能以均方根误差=2.6分贝和R²=0.89准确预测听力损失阈值。结果还证实,神经网络比多元回归能提供更准确的预测。
由于职业性听力损失往往无法治愈,职业健康专家可利用准确的预测结果来改善和优化噪声暴露条件。