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  4. Deep learning diagnostic and risk-stratification pattern detection for COVID-19 in digital lung auscultations: clinical protocol for a case-control and prospective cohort study
 
research article

Deep learning diagnostic and risk-stratification pattern detection for COVID-19 in digital lung auscultations: clinical protocol for a case-control and prospective cohort study

Glangetas, Alban
•
Hartley, Mary-Anne  
•
Cantais, Aymeric
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March 24, 2021
Bmc Pulmonary Medicine

Background Lung auscultation is fundamental to the clinical diagnosis of respiratory disease. However, auscultation is a subjective practice and interpretations vary widely between users. The digitization of auscultation acquisition and interpretation is a particularly promising strategy for diagnosing and monitoring infectious diseases such as Coronavirus-19 disease (COVID-19) where automated analyses could help decentralise care and better inform decision-making in telemedicine. This protocol describes the standardised collection of lung auscultations in COVID-19 triage sites and a deep learning approach to diagnostic and prognostic modelling for future incorporation into an intelligent autonomous stethoscope benchmarked against human expert interpretation. Methods A total of 1000 consecutive, patients aged >= 16 years and meeting COVID-19 testing criteria will be recruited at screening sites and amongst inpatients of the internal medicine department at the Geneva University Hospitals, starting from October 2020. COVID-19 is diagnosed by RT-PCR on a nasopharyngeal swab and COVID-positive patients are followed up until outcome (i.e., discharge, hospitalisation, intubation and/or death). At inclusion, demographic and clinical data are collected, such as age, sex, medical history, and signs and symptoms of the current episode. Additionally, lung auscultation will be recorded with a digital stethoscope at 6 thoracic sites in each patient. A deep learning algorithm (DeepBreath) using a Convolutional Neural Network (CNN) and Support Vector Machine classifier will be trained on these audio recordings to derive an automated prediction of diagnostic (COVID positive vs negative) and risk stratification categories (mild to severe). The performance of this model will be compared to a human prediction baseline on a random subset of lung sounds, where blinded physicians are asked to classify the audios into the same categories. Discussion This approach has broad potential to standardise the evaluation of lung auscultation in COVID-19 at various levels of healthcare, especially in the context of decentralised triage and monitoring. Trial registration: PB_2016-00500, SwissEthics. Registered on 6 April 2020.

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Type
research article
DOI
10.1186/s12890-021-01467-w
Web of Science ID

WOS:000634830000002

Author(s)
Glangetas, Alban
Hartley, Mary-Anne  
Cantais, Aymeric
Courvoisier, Delphine S.
Rivollet, David
Shama, Deeksha M.
Perez, Alexandre
Spechbach, Herve
Trombert, Veronique
Bourquin, Stephane
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Date Issued

2021-03-24

Published in
Bmc Pulmonary Medicine
Volume

21

Issue

1

Start page

103

Subjects

Respiratory System

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covid-19

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severe acute respiratory syndrome coronavirus 2 (sars-cov-2)

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deep learning

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artificial intelligence

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respiratory sounds

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auscultation

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pneumonia

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
MLO  
Available on Infoscience
April 24, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/177565
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