Liu Yi-Wen, Kao Sheng-Lun, Wu Hau-Tieng, Liu Tzu-Chi, Fang Te-Yung, Wang Pa-Chun
Department of Electrical Engineering, National Tsing Hua University, Hsinchu, Taiwan.
Department of Mathematics and Department of Statistical Science, Duke University, Durham, NC, USA.
Acta Otolaryngol. 2020 Mar;140(3):230-235. doi: 10.1080/00016489.2019.1704865. Epub 2020 Jan 31.
Fluctuating hearing loss is characteristic of Ménière's disease (MD) during acute episodes. However, no reliable audiometric hallmarks are available for counselling the hearing recovery possibility. To find parameters for predicting MD hearing outcomes. We applied machine learning techniques to analyse transient-evoked otoacoustic emission (TEOAE) signals recorded from patients with MD. Thirty unilateral MD patients were recruited prospectively after onset of acute cochleo-vestibular symptoms. Serial TEOAE and pure-tone audiogram (PTA) data were recorded longitudinally. Denoised TEOAE signals were projected onto the three most prominent principal directions through a linear transformation. Binary classification was performed using a support vector machine (SVM). TEOAE signal parameters, including signal energy and group delay, were compared between improved (PTA improvement: ≥15 dB) and nonimproved groups using Welch's t-test. Signal energy did not differ ( = .64) but a significant difference in 1-kHz ( = .045) group delay was recorded between improved and nonimproved groups. The SVM achieved a cross-validated accuracy of >80% in predicting hearing outcomes. This study revealed that baseline TEOAE parameters obtained during acute MD episodes, when processed through machine learning technology, may provide information on outer hair cell function to predict hearing recovery.
波动性听力损失是梅尼埃病(MD)急性发作期的特征。然而,目前尚无可靠的听力测试指标可用于指导听力恢复的可能性。为了找到预测梅尼埃病听力结果的参数,我们应用机器学习技术分析了梅尼埃病患者记录的瞬态诱发耳声发射(TEOAE)信号。在急性耳蜗前庭症状发作后,前瞻性招募了30名单侧梅尼埃病患者。纵向记录连续的TEOAE和纯音听力图(PTA)数据。通过线性变换将去噪后的TEOAE信号投影到三个最突出的主方向上。使用支持向量机(SVM)进行二元分类。使用韦尔奇t检验比较改善组(PTA改善:≥15 dB)和未改善组之间的TEOAE信号参数,包括信号能量和群延迟。改善组和未改善组之间信号能量无差异(P = 0.64),但1 kHz处的群延迟有显著差异(P = 0.045)。支持向量机在预测听力结果方面的交叉验证准确率>80%。这项研究表明,在梅尼埃病急性发作期获得的基线TEOAE参数,通过机器学习技术处理后,可能提供有关外毛细胞功能的信息,以预测听力恢复情况。