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)

Author:

Risch Martin,Grossmann KirstenORCID,Aeschbacher Stefanie,Weideli Ornella CORCID,Kovac Marc,Pereira Fiona,Wohlwend Nadia,Risch Corina,Hillmann Dorothea,Lung Thomas,Renz HaraldORCID,Twerenbold RaphaelORCID,Rothenbühler MartinaORCID,Leibovitz Daniel,Kovacevic Vladimir,Markovic AndjelaORCID,Klaver Paul,Brakenhoff Timo B,Franks Billy,Mitratza MariannaORCID,Downward George SORCID,Dowling ArielORCID,Montes Santiago,Grobbee Diederick EORCID,Cronin Maureen,Conen David,Goodale Brianna M,Risch LorenzORCID

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.

Funder

Princely House of Liechtenstein

government of the Principality of Liechtenstein

Hanela Foundation in Aarau

Innovative Medicines Initiative

Publisher

BMJ

Subject

General Medicine

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