Transient-evoked otoacoustic emission signals predicting outcomes of acute sensorineural hearing loss in patients with Meniere's Disease
Yi-Wen Liu, Sheng-Lun Kao, Hau-Tieng Wu, Tzu-Chi Liu, Te-Yung Fang,, Pa-Chun Wang

TL;DR
This study demonstrates that machine learning analysis of transient-evoked otoacoustic emission signals during acute Meniere's Disease episodes can predict hearing recovery with over 80% accuracy, offering a potential tool for prognosis.
Contribution
The paper introduces a novel application of machine learning to analyze TEOAE signals for predicting hearing outcomes in MD patients, which was not previously established.
Findings
Significant difference in 1-kHz group delay between outcome groups
Support vector machine achieved >80% accuracy in prediction
Baseline TEOAE parameters can inform prognosis during acute episodes
Abstract
Background: Fluctuating hearing loss is characteristic of Meniere's Disease (MD) during acute episodes. However, no reliable audiometric hallmarks are available for counselling the hearing recovery possibility. Aims/Objectives: To find parameters for predicting MD hearing outcomes. Material and Methods: 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…
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Taxonomy
TopicsVestibular and auditory disorders · Hearing, Cochlea, Tinnitus, Genetics · Hearing Loss and Rehabilitation
MethodsSupport Vector Machine
