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Exploring Longitudinal Cough, Breath, and Voice Data for COVID-19 Progression Prediction via Sequential Deep Learning: Model Development and Validation.

Ting DangJing HanTong XiaDimitris SpathisErika BondarevaChloë BrownJagmohan ChauhanAndreas GrammenosApinan HasthanasombatR Andres FlotoPietro CicutaCecilia Mascolo
Published in: Journal of medical Internet research (2022)
An audio-based COVID-19 progression monitoring system was developed using deep learning techniques, with strong performance showing high consistency between the predicted trajectory and the test results over time, especially for recovery trend predictions. This has good potential in the postpeak and postpandemic era that can help guide medical treatment and optimize hospital resource allocations. The changes in longitudinal audio samples, referred to as audio dynamics, are associated with COVID-19 progression; thus, modeling the audio dynamics can potentially capture the underlying disease progression process and further aid COVID-19 progression prediction. This framework provides a flexible, affordable, and timely tool for COVID-19 tracking, and more importantly, it also provides a proof of concept of how telemonitoring could be applicable to respiratory diseases monitoring, in general.
Keyphrases
  • coronavirus disease
  • sars cov
  • deep learning
  • healthcare
  • respiratory syndrome coronavirus
  • machine learning
  • cross sectional
  • emergency department
  • electronic health record
  • climate change
  • human health