职业噪声暴露人群的噪声语音理解预测因素

Biology Pub Date : 2024-06-05 DOI:10.3390/biology13060416
G. Andéol, Nihaad Paraouty, Fabrice Giraudet, Nicolas Wallaert, Vincent Isnard, Annie Moulin, Clara Suied
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引用次数: 0

摘要

由于噪声引起的听觉损伤和语音信号的能量掩蔽,职业暴露于噪声中的人尤其难以理解噪声中的语音。多年来,常规听阈监测一直是检查和保护听觉功能的常用方法。最近,阈值上的缺陷,特别是在噪声中理解语音的困难,表明需要新的监测工具。本研究旨在确定预测噪声中言语理解的最重要变量,从而提出一种新的听力状态监测方法。研究人员在职业噪声暴露相对单一的人群中收集了生理(耳声发射的失真产物、耳电图)和行为(振幅和频率调制检测阈值、常规和扩展高频测听阈值)变量。这些变量被用作统计模型(随机森林)的预测因子,以预测三种不同的噪声语音测试得分和噪声语音能力的自我报告。扩展的高频阈值似乎是最好的预测指标,因此是监测暴露于噪声的专业人员的一种新方法的有趣候选指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictors of Speech-in-Noise Understanding in a Population of Occupationally Noise-Exposed Individuals
Understanding speech in noise is particularly difficult for individuals occupationally exposed to noise due to a mix of noise-induced auditory lesions and the energetic masking of speech signals. For years, the monitoring of conventional audiometric thresholds has been the usual method to check and preserve auditory function. Recently, suprathreshold deficits, notably, difficulties in understanding speech in noise, has pointed out the need for new monitoring tools. The present study aims to identify the most important variables that predict speech in noise understanding in order to suggest a new method of hearing status monitoring. Physiological (distortion products of otoacoustic emissions, electrocochleography) and behavioral (amplitude and frequency modulation detection thresholds, conventional and extended high-frequency audiometric thresholds) variables were collected in a population of individuals presenting a relatively homogeneous occupational noise exposure. Those variables were used as predictors in a statistical model (random forest) to predict the scores of three different speech-in-noise tests and a self-report of speech-in-noise ability. The extended high-frequency threshold appears to be the best predictor and therefore an interesting candidate for a new way of monitoring noise-exposed professionals.
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