Ellis Gregory M, Souza Pamela E
Department of Communication Sciences and Disorders, Northwestern University, Evanston, IL, United States.
Knowles Hearing Center, Evanston, IL, United States.
Front Digit Health. 2021 Aug 18;3:723533. doi: 10.3389/fdgth.2021.723533. eCollection 2021.
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audiology. The ultimate goal of such work was to improve access to hearing healthcare for individuals that might be unable or reluctant to seek audiological help in a clinic. In 2015, Diane Van Tasell patented a method for measuring an audiogram when the precise signal level was unknown (patent US 8,968,209 B2). In this method, the slope between pure-tone thresholds measured at 2 and 4 kHz is calculated and combined with questionnaire information in order to reconstruct the most likely audiograms from a database of options. An approach like the Van Tasell method is desirable because it is quick and feasible to do in a patient's home where exact stimulus levels are unknown. The goal of the present study was to use machine learning to assess the effectiveness of such audiogram-estimation methods. The National Health and Nutrition Examination Survey (NHANES), a database of audiologic and demographic information, was used to train and test several machine learning algorithms. Overall, 9,256 cases were analyzed. Audiometric data were classified using the Wisconsin Age-Related Hearing Impairment Classification Scale (WARHICS), a method that places hearing loss into one of eight categories. Of the algorithms tested, a random forest machine learning algorithm provided the best fit with only a few variables: the slope between 2 and 4 kHz; gender; age; military experience; and self-reported hearing ability. Using this method, 54.79% of the individuals were correctly classified, 34.40% were predicted to have a milder loss than measured, and 10.82% were predicted to have a more severe loss than measured. Although accuracy was low, it is unlikely audibility would be severely affected if classifications were used to apply gains. Based on audibility calculations, underamplification still provided sufficient gain to achieve ~95% correct (Speech Intelligibility Index ≥ 0.45) for sentence materials for 88% of individuals. Fewer than 1% of individuals were overamplified by 10 dB for any audiometric frequency. Given these results, this method presents a promising direction toward remote assessment; however, further refinement is needed before use in clinical fittings.
甚至在新冠疫情之前,对听力学科远程测试解决方案的兴趣就与日俱增。此类工作的最终目标是改善那些可能无法或不愿在诊所寻求听力保健帮助的个人获得听力保健服务的机会。2015年,黛安·范·塔塞尔(Diane Van Tasell)为一种在精确信号水平未知时测量听力图的方法申请了专利(美国专利8,968,209 B2)。在这种方法中,计算在2千赫和4千赫处测得的纯音阈值之间的斜率,并将其与问卷信息相结合,以便从一系列选项的数据库中重建最可能的听力图。像范·塔塞尔方法这样的途径是可取的,因为在患者家中进行这种方法既快速又可行,而在患者家中精确的刺激水平是未知的。本研究的目的是使用机器学习来评估这种听力图估计方法的有效性。国家健康和营养检查调查(NHANES),一个听力和人口统计信息的数据库,被用于训练和测试几种机器学习算法。总体而言,分析了9256个案例。听力数据使用威斯康星年龄相关性听力损失分类量表(WARHICS)进行分类,该方法将听力损失分为八个类别之一。在所测试的算法中,一种随机森林机器学习算法仅用几个变量就能实现最佳拟合:2千赫和4千赫之间的斜率;性别;年龄;军事经历;以及自我报告的听力能力。使用这种方法,54.79%的个体被正确分类,34.40%的个体被预测的听力损失比实际测量的更轻,10.82%的个体被预测的听力损失比实际测量的更严重。尽管准确率较低,但如果将分类用于应用增益,可听度不太可能受到严重影响。基于可听度计算,对于88%的个体,句子材料的欠放大仍能提供足够的增益以实现约95%的正确度(言语可懂度指数≥0.45)。在任何听力测试频率下,被过放大10分贝的个体不到1%。鉴于这些结果,这种方法为远程评估提供了一个有前景的方向;然而,在用于临床验配之前还需要进一步完善。