Background: The application of machine learning algorithms for assessing the auditory brainstem response has gained interest over recent years with a considerable number of publications in the literature. In this systematic review, we explore how machine learning has been used to develop algorithms to assess auditory brainstem responses. A clear and comprehensive overview is provided to allow clinicians and researchers to explore the domain and the potential translation to clinical care. Methods: The systematic review was performed based on PRISMA guidelines. A search was conducted of PubMed, IEEE-Xplore, and Scopus databases focusing on human studies that have used machine learning to assess auditory brainstem responses. The duration of th...
WOS: 000235480200010This paper presents a novel system for automatic recognition of auditory brainst...
This study uses machine learning to perform the hearing test (audiometry) processes autonomously wit...
The high levels goals of this thesis are to: understand the neural representation of sound, produce ...
Introduction: Auditory brainstem responses (ABRs) offer a unique opportunity to assess the neural in...
Brain Stem Evoked Potentials (BAEPs) are considered the most objective measure currently available w...
Understanding and categorizing brain response signals based on human hearing abilities poses a signi...
Background: The scalp-recorded frequency-following response (FFR), an auditory-evoked potential with...
WOS: 000316394000003Auditory brainstem response (ABR) has become a routine clinical tool in neurolog...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Objectives: The result of auditory brainstem response is used worldwide for detecting hearing impair...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
The goal of this study was to develop an automated auditory brainstem response (ABR) peak identifica...
BACKGROUND: Analyses of brain responses to external stimuli are typically based on the means compute...
Specific locations within the brain contain neurons which respond, by firing action potentials (spik...
Hearing has a crucial role in our life, guiding our behavior and helping us to decide how to react t...
WOS: 000235480200010This paper presents a novel system for automatic recognition of auditory brainst...
This study uses machine learning to perform the hearing test (audiometry) processes autonomously wit...
The high levels goals of this thesis are to: understand the neural representation of sound, produce ...
Introduction: Auditory brainstem responses (ABRs) offer a unique opportunity to assess the neural in...
Brain Stem Evoked Potentials (BAEPs) are considered the most objective measure currently available w...
Understanding and categorizing brain response signals based on human hearing abilities poses a signi...
Background: The scalp-recorded frequency-following response (FFR), an auditory-evoked potential with...
WOS: 000316394000003Auditory brainstem response (ABR) has become a routine clinical tool in neurolog...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Objectives: The result of auditory brainstem response is used worldwide for detecting hearing impair...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
The goal of this study was to develop an automated auditory brainstem response (ABR) peak identifica...
BACKGROUND: Analyses of brain responses to external stimuli are typically based on the means compute...
Specific locations within the brain contain neurons which respond, by firing action potentials (spik...
Hearing has a crucial role in our life, guiding our behavior and helping us to decide how to react t...
WOS: 000235480200010This paper presents a novel system for automatic recognition of auditory brainst...
This study uses machine learning to perform the hearing test (audiometry) processes autonomously wit...
The high levels goals of this thesis are to: understand the neural representation of sound, produce ...