Detection of COVID-19 from voice, cough and breathing patterns: Dataset and preliminary results.

Comput Biol Med

Luxembourg Institute of Health, Department of Population Health, Deep Digital Phenotyping Research Unit, Strassen, Luxembourg.

Published: November 2021

AI Article Synopsis

  • - COVID-19 affects breathing and voice, producing distinctive audio signatures that may be used for screening the virus.
  • - The article presents a dataset of voice, cough, and breathing recordings from both infected and non-infected individuals, demonstrating the potential of using cough patterns for detection.
  • - Preliminary results show promising accuracy (88.52%), sensitivity (88.75%), and specificity (90.87%) for identifying COVID-19 through audio analysis, alongside an exploration of key acoustic features affected by the virus.

Article Abstract

COVID-19 heavily affects breathing and voice and causes symptoms that make patients' voices distinctive, creating recognizable audio signatures. Initial studies have already suggested the potential of using voice as a screening solution. In this article we present a dataset of voice, cough and breathing audio recordings collected from individuals infected by SARS-CoV-2 virus, as well as non-infected subjects via large scale crowdsourced campaign. We describe preliminary results for detection of COVID-19 from cough patterns using standard acoustic features sets, wavelet scattering features and deep audio embeddings extracted from low-level feature representations (VGGish and OpenL3). Our models achieve accuracy of 88.52%, sensitivity of 88.75% and specificity of 90.87%, confirming the applicability of audio signatures to identify COVID-19 symptoms. We furthermore provide an in-depth analysis of the most informative acoustic features and try to elucidate the mechanisms that alter the acoustic characteristics of coughs of people with COVID-19.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8513517PMC
http://dx.doi.org/10.1016/j.compbiomed.2021.104944DOI Listing

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