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使用深度神经网络诊断军事服役期间持续的噪声性听力损失。

Diagnosing Noise-Induced Hearing Loss Sustained During Military Service Using Deep Neural Networks.

机构信息

Cambridge Hearing Group, Department of Psychology, University of Cambridge, Cambridge, UK.

Department of Speech, Hearing and Phonetic Sciences, University College London, London, UK.

出版信息

Trends Hear. 2023 Jan-Dec;27:23312165231184982. doi: 10.1177/23312165231184982.

Abstract

The diagnosis of noise-induced hearing loss (NIHL) is based on three requirements: a history of exposure to noise with the potential to cause hearing loss; the absence of known causes of hearing loss other than noise exposure; and the presence of certain features in the audiogram. All current methods for diagnosing NIHL have involved examination of the typical features of the audiograms of noise-exposed individuals and the formulation of quantitative rules for the identification of those features. This article describes an alternative approach based on the use of multilayer perceptrons (MLPs). The approach was applied to databases containing the ages and audiograms of individuals claiming compensation for NIHL sustained during military service (M-NIHL), who were assumed mostly to have M-NIHL, and control databases with no known exposure to intense sounds. The MLPs were trained so as to classify individuals as belonging to the exposed or control group based on their audiograms and ages, thereby automatically identifying the features of the audiogram that provide optimal classification. Two databases (noise exposed and nonexposed) were used for training and validation of the MLPs and two independent databases were used for evaluation and further analyses. The best-performing MLP was one trained to identify whether or not an individual had M-NIHL based on age and the audiogram for both ears. This achieved a sensitivity of 0.986 and a specificity of 0.902, giving an overall accuracy markedly higher than for previous methods.

摘要

噪声性听力损失(NIHL)的诊断基于三个要求:有暴露于可能导致听力损失的噪声的历史;除了噪声暴露之外,没有已知的听力损失原因;以及听力图中存在某些特征。目前所有用于诊断 NIHL 的方法都涉及检查噪声暴露个体听力图的典型特征,并制定用于识别这些特征的定量规则。本文描述了一种基于使用多层感知器(MLP)的替代方法。该方法应用于包含声称因军事服务期间遭受噪声性听力损失(M-NIHL)而要求赔偿的个人的年龄和听力图的数据库(M-NIHL),以及没有已知暴露于强声的对照数据库。MLP 经过训练,可以根据听力图和年龄将个体分类为暴露组或对照组,从而自动识别提供最佳分类的听力图特征。两个数据库(噪声暴露和非暴露)用于 MLP 的训练和验证,两个独立的数据库用于评估和进一步分析。表现最佳的 MLP 是根据年龄和双耳听力图来识别个体是否患有 M-NIHL 的 MLP。该 MLP 的灵敏度为 0.986,特异性为 0.902,总体准确性明显高于以前的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b8d9/10408324/71e77c024098/10.1177_23312165231184982-fig1.jpg

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