Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) models applied to a speech-in-noise hearing screening test and investigate the contribution of the measured features toward hearing loss detection using explainability techniques.Method: Seven different ML techniques, including transparent (i.e., decision tree and logistic regression) and opaque (e.g., random forest) models, were trained and evaluated on a data set including 215 tested ears (99 with hearing loss of mild degree or higher and 116 with no hearing loss). Post hoc explainability techniques were applied to highlight the role of each feature in predicting hearing loss.Results: Random forest (accuracy =.85, sensitivity =.86, specific...
According to the World Health Organization (WHO), hearing loss is one of the fourth leading causes o...
This article presents a preliminary evaluation of a novel language independent Speech-in-Noise test ...
Abstract:This paper presents the results of applying machine learning algorithms to predict hearing ...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
One of the current gaps in teleaudiology is the lack of methods for adult hearing screening viable f...
This is an accepted manuscript of an article published by Elsevier in Cognitive Computation on 23/10...
Towards implementation of adult hearing screening tests that can be delivered via a mobile app, we h...
Introduction: Auditory brainstem responses (ABRs) offer a unique opportunity to assess the neural in...
Background: The application of machine learning algorithms for assessing the auditory brainstem resp...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
According to the World Health Organization (WHO), hearing loss is one of the fourth leading causes o...
This article presents a preliminary evaluation of a novel language independent Speech-in-Noise test ...
Abstract:This paper presents the results of applying machine learning algorithms to predict hearing ...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
One of the current gaps in teleaudiology is the lack of methods for adult hearing screening viable f...
This is an accepted manuscript of an article published by Elsevier in Cognitive Computation on 23/10...
Towards implementation of adult hearing screening tests that can be delivered via a mobile app, we h...
Introduction: Auditory brainstem responses (ABRs) offer a unique opportunity to assess the neural in...
Background: The application of machine learning algorithms for assessing the auditory brainstem resp...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
According to the World Health Organization (WHO), hearing loss is one of the fourth leading causes o...
This article presents a preliminary evaluation of a novel language independent Speech-in-Noise test ...
Abstract:This paper presents the results of applying machine learning algorithms to predict hearing ...