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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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 |
work_keys_str_mv |
AT elirandafna automaticdetectionofwholenightsnoringeventsusingnoncontactmicrophone AT arieltarasiuk automaticdetectionofwholenightsnoringeventsusingnoncontactmicrophone AT yanivzigel automaticdetectionofwholenightsnoringeventsusingnoncontactmicrophone |
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