利用机器学习对自动骨导听力计的性能和可靠性进行评估。

IF 2.6 2区 医学 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY Trends in Hearing Pub Date : 2024-01-01 DOI:10.1177/23312165241286456
Nicolas Wallaert, Antoine Perry, Hadrien Jean, Gwenaelle Creff, Benoit Godey, Nihaad Paraouty
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引用次数: 0

摘要

迄今为止,纯音测听仍是临床听觉测试的黄金标准。然而,纯音测听耗时较长,而且只能提供离散的听敏度估计值。在此,我们旨在通过开发一种基于机器学习(ML)的方法来解决这两个主要缺点,即使用前额振动器进行全自动骨传导(BC)听力测试。研究 1 探讨了 BC 前额测试中耳机置于双耳时的闭塞效应。研究 2 介绍了基于 ML 的 BC 听力测量方法,包括自动对侧掩蔽规则、闭塞效应补偿和前额-乳突校正。接下来,研究人员将 ML 测听法的性能与手动测听法和乳突置位的传统 BC 测听法进行了比较。最后,研究 3 检验了 ML 听力测定法的重复测试可靠性。研究结果表明,自动 ML 听力测定法与手动传统听力测定法之间没有明显的性能差异。自动 ML 听力测定法的测试再测可靠性很高。总之,我们的研究结果表明,对于听力正常和听力受损的轻度至重度听力损失的成年听众,基于 ML 的自动 BC 听力测定法都具有良好的性能和可靠性。
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Performance and Reliability Evaluation of an Automated Bone-Conduction Audiometry Using Machine Learning.

To date, pure-tone audiometry remains the gold standard for clinical auditory testing. However, pure-tone audiometry is time-consuming and only provides a discrete estimate of hearing acuity. Here, we aim to address these two main drawbacks by developing a machine learning (ML)-based approach for fully automated bone-conduction (BC) audiometry tests with forehead vibrator placement. Study 1 examines the occlusion effects when the headphones are positioned on both ears during BC forehead testing. Study 2 describes the ML-based approach for BC audiometry, with automated contralateral masking rules, compensation for occlusion effects and forehead-mastoid corrections. Next, the performance of ML-audiometry is examined in comparison to manual and conventional BC audiometry with mastoid placement. Finally, Study 3 examines the test-retest reliability of ML-audiometry. Our results show no significant performance difference between automated ML-audiometry and manual conventional audiometry. High test-retest reliability is achieved with the automated ML-audiometry. Together, our findings demonstrate the performance and reliability of the automated ML-based BC audiometry for both normal-hearing and hearing-impaired adult listeners with mild to severe hearing losses.

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来源期刊
Trends in Hearing
Trends in Hearing AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGYOTORH-OTORHINOLARYNGOLOGY
CiteScore
4.50
自引率
11.10%
发文量
44
审稿时长
12 weeks
期刊介绍: Trends in Hearing is an open access journal completely dedicated to publishing original research and reviews focusing on human hearing, hearing loss, hearing aids, auditory implants, and aural rehabilitation. Under its former name, Trends in Amplification, the journal established itself as a forum for concise explorations of all areas of translational hearing research by leaders in the field. Trends in Hearing has now expanded its focus to include original research articles, with the goal of becoming the premier venue for research related to human hearing and hearing loss.
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