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0293 Sleep Deprivation Affects the Acoustic Properties of Human Speech

Authors :
C Gauriau
Thomas Andrillon
Damien Leger
Etienne Thoret
Daniel Pressnitzer
Laboratoire des systèmes perceptifs (LSP)
Département d'Etudes Cognitives - ENS Paris (DEC)
École normale supérieure - Paris (ENS Paris)
Université Paris sciences et lettres (PSL)-Université Paris sciences et lettres (PSL)-École normale supérieure - Paris (ENS Paris)
Université Paris sciences et lettres (PSL)-Université Paris sciences et lettres (PSL)-Centre National de la Recherche Scientifique (CNRS)
Source :
2020 Philadelphia Sleep Conference, 2020 Philadelphia Sleep Conference, Sep 2020, Philadelphia, United States. pp.A111-A111, ⟨10.1093/sleep/zsaa056.290⟩
Publication Year :
2020
Publisher :
HAL CCSD, 2020.

Abstract

Introduction Lack of sleep drastically affects many aspects of human behavior. The early detection of sleepiness is thus a major challenge for health and security reasons. Here we investigated the effect of sleep deprivation on the acoustic properties of human speech. Methods Twenty-four participants were sleep deprived for two days (two successive nights with only 3 hours of sleep). They were recorded reading a short text aloud before and after sleep deprivation. An auditory model, based on spectro-temporal modulations, was used to analyse the acoustic properties of their speech and served as a front-end to machine-learning classifiers. Results Results showed that sleepiness could be accurately detected with individually-trained classifiers. However,we were not able to fit a generic classifier for all participants. As we relied on an auditory-inspired model,we could identify and interpret the acoustic features impacted by sleep deprivation. Again,no simple diagnostic feature could be easily identified in the group- level analyses of the speech signals. We therefore developed a novel probing method, combining signal detection theory and noise activation of the classifier, to understand what made the classifier successful for each participant. This led to a diagnostic map for each participant, specifying which frequency region and modulation rates were impacted by sleep deprivation for this particular individual Conclusion In addition to suggesting a practical machine learning algorithm to detect sleep deprivation, combining our probing method with considerations about voice production could help uncover the physiological impact of sleep deprivation at the level of each individual. Support

Details

Language :
English
Database :
OpenAIRE
Journal :
2020 Philadelphia Sleep Conference, 2020 Philadelphia Sleep Conference, Sep 2020, Philadelphia, United States. pp.A111-A111, ⟨10.1093/sleep/zsaa056.290⟩
Accession number :
edsair.doi.dedup.....8e2e0c817a070154635ea4f984635be0
Full Text :
https://doi.org/10.1093/sleep/zsaa056.290⟩