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首页> 外文期刊>Ear and hearing. >Machine Learning Models for the Hearing Impairment Prediction in Workers Exposed to Complex Industrial Noise: A Pilot Study
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Machine Learning Models for the Hearing Impairment Prediction in Workers Exposed to Complex Industrial Noise: A Pilot Study

机译:机器学习模型,用于复杂产业噪声的工人损伤预测:试点研究

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摘要

Objectives: To demonstrate the feasibility of developing machine learning models for the prediction of hearing impairment in humans exposed to complex non-Gaussian industrial noise. Design: Audiometric and noise exposure data were collected on a population of screened workers (N = 1,113) from 17 factories located in Zhejiang province, China. All the subjects were exposed to complex noise. Each subject was given an otologic examination to determine their pure-tone hearing threshold levels and had their personal full-shift noise recorded. For each subject, the hearing loss was evaluated according to the hearing impairment definition of the National Institute for Occupational Safety and Health. Age, exposure duration, equivalent A-weighted SPL (L-Aeq), and median kurtosis were used as the input for four machine learning algorithms, that is, support vector machine, neural network multilayer perceptron, random forest, and adaptive boosting. Both classification and regression models were developed to predict noise-induced hearing loss applying these four machine learning algorithms. Two indexes, area under the curve and prediction accuracy, were used to assess the performances of the classification models for predicting hearing impairment of workers. Root mean square error was used to quantify the prediction performance of the regression models. Results: A prediction accuracy between 78.6 and 80.1% indicated that the four classification models could be useful tools to assess noise-induced hearing impairment of workers exposed to various complex occupational noises. A comprehensive evaluation using both the area under the curve and prediction accuracy showed that the support vector machine model achieved the best score and thus should be selected as the tool with the highest potential for predicting hearing impairment from the occupational noise exposures in this study. The root mean square error performance indicated that the four regression models could be used to predict noise-induced hearing loss quantitatively and the multilayer perceptron regression model had the best performance. Conclusions: This pilot study demonstrated that machine learning algorithms are potential tools for the evaluation and prediction of noise-induced hearing impairment in workers exposed to diverse complex industrial noises.
机译:目的:展示开发机器学习模型的可行性,以预测暴露于复杂的非高斯工业噪声的人类听力障碍。设计:从位于浙江省浙江省的17家工厂的筛选工人(n = 1,113)上收集了听力测量和噪声暴露数据。所有受试者都暴露于复杂的噪音。每个受试者都有一个耳科检查,以确定其纯音听力阈值水平,并记录了他们的个人全移噪声。对于每个主题,根据国家职业安全和健康研究所的听证障碍定义评估助听损失。年龄,曝光持续时间,等同的A加权SPL(L-AEQ)和中位峰度被用作四种机器学习算法的输入,即支持向量机,神经网络多层意识形,随机林和自适应提升。开发了分类和回归模型,以预测应用这四种机器学习算法的噪声引起的助听器。用于曲线和预测精度下的两个索引,区域,用于评估预测工人听力减值的分类模型的性能。 root均方误差用于量化回归模型的预测性能。结果:78.6和80.1%之间的预测精度表明,四种分类模型可能是有用的工具,以评估暴露于各种复杂职业噪声的工人的噪音引起的听力障碍。使用曲线和预测精度下的所述面积的综合评估表明,支持向量机模型实现了最佳分数,因此应该被选择为具有最高潜力的工具,以预测来自本研究中的职业噪声暴露的听力障碍。根均方误差性能表明,四个回归模型可用于定量地预测噪声引起的助听器,并且多层的Perceptron回归模型具有最佳性能。结论:这项试验研究表明,机器学习算法是评估和预测噪声引起的噪声引起的噪声诱导的工人的潜在工具,暴露于各种复杂的工业噪声。

著录项

  • 来源
    《Ear and hearing. 》 |2019年第3期| 共10页
  • 作者单位

    Zhejiang Univ Collaborat Innovat Ctr Diag &

    Treatment Infect Di Coll Biomed Engn &

    Instrument Sci;

    Zhejiang Univ Collaborat Innovat Ctr Diag &

    Treatment Infect Di Coll Biomed Engn &

    Instrument Sci;

    Zhejiang Prov Ctr Dis Control &

    Prevent Inst Environm &

    Occupat Hlth Hangzhou Zhejiang Peoples;

    Zhejiang Univ Collaborat Innovat Ctr Diag &

    Treatment Infect Di Coll Biomed Engn &

    Instrument Sci;

    Zhejiang Prov Ctr Dis Control &

    Prevent Inst Environm &

    Occupat Hlth Hangzhou Zhejiang Peoples;

    Zhejiang Univ Collaborat Innovat Ctr Diag &

    Treatment Infect Di Coll Biomed Engn &

    Instrument Sci;

    Zhejiang Univ Collaborat Innovat Ctr Diag &

    Treatment Infect Di Coll Biomed Engn &

    Instrument Sci;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 耳鼻咽喉科学 ;
  • 关键词

    Complex noise exposure; Hearing impairment; Machine learning; Noise-induced hearing loss;

    机译:复杂的噪音曝光;听力障碍;机器学习;噪声引起的听力损失;

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