Automatic detection of whole night snoring events using non-contact microphone.

OBJECTIVE: Although awareness of sleep disorders is increasing, limited information is available on whole night detection of snoring. Our study aimed to develop and validate a robust, high performance, and sensitive whole-night snore detector based on non-contact technology. DESIGN: Sounds during po...

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Main Authors: Eliran Dafna, Ariel Tarasiuk, Yaniv Zigel
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3877189?pdf=render
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spelling doaj-faf16499337443af97a2ec22f9cd4aca2020-11-24T21:12:24ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01812e8413910.1371/journal.pone.0084139Automatic detection of whole night snoring events using non-contact microphone.Eliran DafnaAriel TarasiukYaniv ZigelOBJECTIVE: Although awareness of sleep disorders is increasing, limited information is available on whole night detection of snoring. Our study aimed to develop and validate a robust, high performance, and sensitive whole-night snore detector based on non-contact technology. DESIGN: Sounds during polysomnography (PSG) were recorded using a directional condenser microphone placed 1 m above the bed. An AdaBoost classifier was trained and validated on manually labeled snoring and non-snoring acoustic events. PATIENTS: Sixty-seven subjects (age 52.5 ± 13.5 years, BMI 30.8 ± 4.7 kg/m(2), m/f 40/27) referred for PSG for obstructive sleep apnea diagnoses were prospectively and consecutively recruited. Twenty-five subjects were used for the design study; the validation study was blindly performed on the remaining forty-two subjects. MEASUREMENTS AND RESULTS: To train the proposed sound detector, >76,600 acoustic episodes collected in the design study were manually classified by three scorers into snore and non-snore episodes (e.g., bedding noise, coughing, environmental). A feature selection process was applied to select the most discriminative features extracted from time and spectral domains. The average snore/non-snore detection rate (accuracy) for the design group was 98.4% based on a ten-fold cross-validation technique. When tested on the validation group, the average detection rate was 98.2% with sensitivity of 98.0% (snore as a snore) and specificity of 98.3% (noise as noise). CONCLUSIONS: Audio-based features extracted from time and spectral domains can accurately discriminate between snore and non-snore acoustic events. This audio analysis approach enables detection and analysis of snoring sounds from a full night in order to produce quantified measures for objective follow-up of patients.http://europepmc.org/articles/PMC3877189?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Eliran Dafna
Ariel Tarasiuk
Yaniv Zigel
spellingShingle Eliran Dafna
Ariel Tarasiuk
Yaniv Zigel
Automatic detection of whole night snoring events using non-contact microphone.
PLoS ONE
author_facet Eliran Dafna
Ariel Tarasiuk
Yaniv Zigel
author_sort Eliran Dafna
title Automatic detection of whole night snoring events using non-contact microphone.
title_short Automatic detection of whole night snoring events using non-contact microphone.
title_full Automatic detection of whole night snoring events using non-contact microphone.
title_fullStr Automatic detection of whole night snoring events using non-contact microphone.
title_full_unstemmed Automatic detection of whole night snoring events using non-contact microphone.
title_sort automatic detection of whole night snoring events using non-contact microphone.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description OBJECTIVE: Although awareness of sleep disorders is increasing, limited information is available on whole night detection of snoring. Our study aimed to develop and validate a robust, high performance, and sensitive whole-night snore detector based on non-contact technology. DESIGN: Sounds during polysomnography (PSG) were recorded using a directional condenser microphone placed 1 m above the bed. An AdaBoost classifier was trained and validated on manually labeled snoring and non-snoring acoustic events. PATIENTS: Sixty-seven subjects (age 52.5 ± 13.5 years, BMI 30.8 ± 4.7 kg/m(2), m/f 40/27) referred for PSG for obstructive sleep apnea diagnoses were prospectively and consecutively recruited. Twenty-five subjects were used for the design study; the validation study was blindly performed on the remaining forty-two subjects. MEASUREMENTS AND RESULTS: To train the proposed sound detector, >76,600 acoustic episodes collected in the design study were manually classified by three scorers into snore and non-snore episodes (e.g., bedding noise, coughing, environmental). A feature selection process was applied to select the most discriminative features extracted from time and spectral domains. The average snore/non-snore detection rate (accuracy) for the design group was 98.4% based on a ten-fold cross-validation technique. When tested on the validation group, the average detection rate was 98.2% with sensitivity of 98.0% (snore as a snore) and specificity of 98.3% (noise as noise). CONCLUSIONS: Audio-based features extracted from time and spectral domains can accurately discriminate between snore and non-snore acoustic events. This audio analysis approach enables detection and analysis of snoring sounds from a full night in order to produce quantified measures for objective follow-up of patients.
url http://europepmc.org/articles/PMC3877189?pdf=render
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AT arieltarasiuk automaticdetectionofwholenightsnoringeventsusingnoncontactmicrophone
AT yanivzigel automaticdetectionofwholenightsnoringeventsusingnoncontactmicrophone
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