Investigation of the use of a sensor bracelet for the presymptomatic detection of changes in physiological parameters related to COVID-19: an interim analysis of a prospective cohort study (COVI-GAPP) Journal Articles uri icon

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abstract

  • ObjectivesWe investigated machinelearningbased identification of presymptomatic COVID-19 and detection of infection-related changes in physiology using a wearable device.DesignInterim analysis of a prospective cohort study.Setting, participants and interventionsParticipants from a national cohort study in Liechtenstein were included. Nightly they wore the Ava-bracelet that measured respiratory rate (RR), heart rate (HR), HR variability (HRV), wrist-skin temperature (WST) and skin perfusion. SARS-CoV-2 infection was diagnosed by molecular and/or serological assays.ResultsA total of 1.5 million hours of physiological data were recorded from 1163 participants (mean age 44±5.5 years). COVID-19 was confirmed in 127 participants of which, 66 (52%) had worn their device from baseline to symptom onset (SO) and were included in this analysis. Multi-level modelling revealed significant changes in five (RR, HR, HRV, HRV ratio and WST) device-measured physiological parameters during the incubation, presymptomatic, symptomatic and recovery periods of COVID-19 compared with baseline. The training set represented an 8-day long instance extracted from day 10 to day 2 before SO. The training set consisted of 40 days measurements from 66 participants. Based on a random split, the test set included 30% of participants and 70% were selected for the training set. The developed long short-term memory (LSTM) based recurrent neural network (RNN) algorithm had a recall (sensitivity) of 0.73 in the training set and 0.68 in the testing set when detecting COVID-19 up to 2 days prior to SO.ConclusionWearable sensor technology can enable COVID-19 detection during the presymptomatic period. Our proposed RNN algorithm identified 68% of COVID-19 positive participants 2 days prior to SO and will be further trained and validated in a randomised, single-blinded, two-period, two-sequence crossover trial.Trial registration numberISRCTN51255782; Pre-results.

authors

  • Risch, Martin
  • Grossmann, Kirsten
  • Aeschbacher, Stefanie
  • Weideli, Ornella C
  • Kovac, Marc
  • Pereira, Fiona
  • Wohlwend, Nadia
  • Risch, Corina
  • Hillmann, Dorothea
  • Lung, Thomas
  • Renz, Harald
  • Twerenbold, Raphael
  • Rothenbühler, Martina
  • Leibovitz, Daniel
  • Kovacevic, Vladimir
  • Markovic, Andjela
  • Klaver, Paul
  • Brakenhoff, Timo B
  • Franks, Billy
  • Mitratza, Marianna
  • Downward, George S
  • Dowling, Ariel
  • Montes, Santiago
  • Grobbee, Diederick E
  • Cronin, Maureen
  • Conen, David
  • Goodale, Brianna M
  • Risch, Lorenz

publication date

  • May 2022