Jean Hadrien, Wallaert Nicolas, Dreumont Antoine, Creff Gwenaelle, Godey Benoit, Paraouty Nihaad
R&D Department, My Medical Assistant SAS, 51100 Reims, France.
Department of Otorhinolaryngology-Head and Neck Surgery, Rennes University Hospital, 35000 Rennes, France.
Biology (Basel). 2025 Feb 12;14(2):191. doi: 10.3390/biology14020191.
In addition to pure-tone audiometry tests and electrophysiological tests, a comprehensive hearing evaluation includes assessing a subject's ability to understand speech in quiet and in noise. In fact, speech audiometry tests are commonly used in clinical practice; however, they are time-consuming as they require manual scoring by a hearing professional. To address this issue, we developed an automated speech recognition (ASR) system for scoring subject responses at the phonetic level. The ASR was built using a deep neural network and trained with pre-recorded French speech materials: Lafon's cochlear lists and Dodelé logatoms. Next, we tested the performance and reliability of the ASR in clinical settings with both normal-hearing and hearing-impaired listeners. Our findings indicate that the ASR's performance is statistically similar to manual scoring by expert hearing professionals, both in quiet and in noisy conditions. Moreover, the test-retest reliability of the automated scoring closely matches that of manual scoring. Together, our results validate the use of this deep neural network in both clinical and research contexts for conducting speech audiometry tests in quiet and in noise.
除了纯音听力测试和电生理测试外,全面的听力评估还包括评估受试者在安静和嘈杂环境中理解言语的能力。事实上,言语听力测试在临床实践中常用;然而,它们很耗时,因为需要听力专业人员进行人工评分。为了解决这个问题,我们开发了一种自动语音识别(ASR)系统,用于在语音层面上对受试者的反应进行评分。该ASR系统是使用深度神经网络构建的,并使用预先录制的法语语音材料进行训练:拉丰的耳蜗列表和多德莱音素。接下来,我们在临床环境中对听力正常和听力受损的听众测试了ASR的性能和可靠性。我们的研究结果表明,在安静和嘈杂条件下,ASR的性能在统计学上与专业听力专家的人工评分相似。此外,自动评分的重测信度与人工评分非常匹配。总之,我们的结果验证了这种深度神经网络在临床和研究环境中用于在安静和嘈杂环境中进行言语听力测试的用途。