Automatic Classification of OSA related Snoring Signals from Nocturnal Audio Recordings

02/25/2021
by   Arun Sebastian, et al.
0

In this study, the development of an automatic algorithm is presented to classify the nocturnal audio recording of an obstructive sleep apnoea (OSA) patient as OSA related snore, simple snore and other sounds. Recent studies has been shown that knowledge regarding the OSA related snore could assist in identifying the site of airway collapse. Audio signal was recorded simultaneously with full-night polysomnography during sleep with a ceiling microphone. Time and frequency features of the nocturnal audio signal were extracted to classify the audio signal into OSA related snore, simple snore and other sounds. Two algorithms were developed to extract OSA related snore using an linear discriminant analysis (LDA) classifier based on the hypothesis that OSA related snoring can assist in identifying the site-of-upper airway collapse. An unbiased nested leave-one patient-out cross-validation process was used to select a high performing feature set from the full set of features. Results indicated that the algorithm achieved an accuracy of 87 identifying snore events from the audio recordings and an accuracy of 72 identifying OSA related snore events from the snore events. The direct method to extract OSA-related snore events using a multi-class LDA classifier achieved an accuracy of 64 clear indication that OSA-related snore events can be extracted from nocturnal sound recordings, and therefore could potentially be used as a new tool for identifying the site of airway collapse from the nocturnal audio recordings.

READ FULL TEXT
research
12/09/2021

Classification of Anuran Frog Species Using Machine Learning

Acoustic classification of frogs has gotten a lot of attention recently ...
research
04/14/2021

Audio-based cough counting using independent subspace analysis

In this paper, an algorithm designed to detect characteristic cough even...
research
05/25/2021

Spectrum Correction: Acoustic Scene Classification with Mismatched Recording Devices

Machine learning algorithms, when trained on audio recordings from a lim...
research
12/18/2019

Location Forensics Analysis Using ENF Sequences Extracted from Power and Audio Recordings

Electrical network frequency (ENF) is the signature of a power distribut...
research
08/31/2021

Automatic non-invasive Cough Detection based on Accelerometer and Audio Signals

We present an automatic non-invasive way of detecting cough events based...
research
01/21/2019

Learning sound representations using trainable COPE feature extractors

Sound analysis research has mainly been focused on speech and music proc...
research
07/25/2023

A Snoring Sound Dataset for Body Position Recognition: Collection, Annotation, and Analysis

Obstructive Sleep Apnea-Hypopnea Syndrome (OSAHS) is a chronic breathing...

Please sign up or login with your details

Forgot password? Click here to reset