机器学习模型可以预测耳鸣和噪音性听力损失。

IF 2.6 2区 医学 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY
Zahra Jafari, Ryan E Harari, Glenn Hole, Bryan E Kolb, Majid H Mohajerani
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引用次数: 0

摘要

目的:尽管机器学习(ML)模型在健康科学中广泛用于结果预测和疾病分类,但它们在区分各种类型听觉障碍方面的应用仍然有限。本研究旨在通过评估五种ML模型在区分(a)耳鸣个体和非耳鸣个体以及(b)噪声性听力损失(NIHL)和年龄相关性听力损失(ARHL)方面的功效来解决这一差距。设计:我们使用的数据来自加拿大人口的横断面研究,其中包括928名年龄在30至100岁之间的成年人的听力学和人口统计学信息,这些成年人因长期职业性噪声暴露而被诊断为ARHL或NIHL。本研究中应用的机器学习模型包括人工神经网络(ann)、k近邻、逻辑回归、随机森林(RF)和支持向量机。结果:研究显示,NIHL组耳鸣患病率是ARHL组的两倍多,恒耳鸣发生率为27.85%比8.85%,间歇性耳鸣发生率为18.55%比10.86%。在模式识别中,与ARHL相比,NIHL在中高频带的听力损失明显更大。在NIHL和ARHL中,有耳鸣的个体比没有耳鸣的个体表现出更好的纯音敏感性。在ML模型中,ANN预测耳鸣的总体准确度(70%)、精度(60%)和f1评分(87%)最高,曲线下面积为0.71。RF在区分NIHL和ARHL方面优于其他模型,精度最高(NIHL为79%,ARHL为85%),召回率最高(NIHL为85%),f1评分最高(NIHL为81%),曲线下面积最高(0.90)。结论:我们的研究结果强调了ML模型,特别是ANN和RF在提高耳鸣和NIHL诊断精度方面的应用,可能为将ML技术整合到临床听力学中以提高诊断精度提供了一个框架。未来的研究建议扩大数据集,包括不同的人群和整合纵向数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models Can Predict Tinnitus and Noise-Induced Hearing Loss.

Objectives: Despite the extensive use of machine learning (ML) models in health sciences for outcome prediction and condition classification, their application in differentiating various types of auditory disorders remains limited. This study aimed to address this gap by evaluating the efficacy of five ML models in distinguishing (a) individuals with tinnitus from those without tinnitus and (b) noise-induced hearing loss (NIHL) from age-related hearing loss (ARHL).

Design: We used data from a cross-sectional study of the Canadian population, which included audiologic and demographic information from 928 adults aged 30 to 100 years, diagnosed with either ARHL or NIHL due to long-term occupational noise exposure. The ML models applied in this study were artificial neural networks (ANNs), K-nearest neighbors, logistic regression, random forest (RF), and support vector machines.

Results: The study revealed that tinnitus prevalence was over twice as high in the NIHL group compared with the ARHL group, with a frequency of 27.85% versus 8.85% in constant tinnitus and 18.55% versus 10.86% in intermittent tinnitus. In pattern recognition, significantly greater hearing loss was found at medium- and high-band frequencies in NIHL versus ARHL. In both NIHL and ARHL, individuals with tinnitus showed better pure-tone sensitivity than those without tinnitus. Among the ML models, ANN achieved the highest overall accuracy (70%), precision (60%), and F1-score (87%) for predicting tinnitus, with an area under the curve of 0.71. RF outperformed other models in differentiating NIHL from ARHL, with the highest precision (79% for NIHL, 85% for ARHL), recall (85% for NIHL), F1-score (81% for NIHL), and area under the curve (0.90).

Conclusions: Our findings highlight the application of ML models, particularly ANN and RF, in advancing diagnostic precision for tinnitus and NIHL, potentially providing a framework for integrating ML techniques into clinical audiology for improved diagnostic precision. Future research is suggested to expand datasets to include diverse populations and integrate longitudinal data.

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来源期刊
Ear and Hearing
Ear and Hearing 医学-耳鼻喉科学
CiteScore
5.90
自引率
10.80%
发文量
207
审稿时长
6-12 weeks
期刊介绍: From the basic science of hearing and balance disorders to auditory electrophysiology to amplification and the psychological factors of hearing loss, Ear and Hearing covers all aspects of auditory and vestibular disorders. This multidisciplinary journal consolidates the various factors that contribute to identification, remediation, and audiologic and vestibular rehabilitation. It is the one journal that serves the diverse interest of all members of this professional community -- otologists, audiologists, educators, and to those involved in the design, manufacture, and distribution of amplification systems. The original articles published in the journal focus on assessment, diagnosis, and management of auditory and vestibular disorders.
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