Wearable Sensor-Based Detection of Influenza in Presymptomatic and Asymptomatic Individuals

Author:

Temple Dorota S1,Hegarty-Craver Meghan1ORCID,Furberg Robert D1,Preble Edward A1,Bergstrom Emma2,Gardener Zoe2,Dayananda Pete2,Taylor Lydia2,Lemm Nana-Marie2,Papargyris Loukas2,McClain Micah T3,Nicholson Bradly P34,Bowie Aleah3,Miggs Maria4,Petzold Elizabeth3,Woods Christopher W45ORCID,Chiu Christopher2,Gilchrist Kristin H1

Affiliation:

1. RTI International, Research Triangle Park , USA

2. Department of Infectious Disease, Imperial College London , London , United Kingdom

3. Center for Infectious Diseases Diagnostic Innovation, Duke University School of Medicine , Durham, North Carolina , USA

4. Institute for Medical Research , Durham, North Carolina , USA

5. Hubert-Yeargan Center for Global Health, Duke University School of Medicine , Durham, North Carolina , USA

Abstract

Abstract Background The COVID-19 pandemic highlighted the need for early detection of viral infections in symptomatic and asymptomatic individuals to allow for timely clinical management and public health interventions. Methods Twenty healthy adults were challenged with an influenza A (H3N2) virus and prospectively monitored from 7 days before through 10 days after inoculation, using wearable electrocardiogram and physical activity sensors. This framework allowed for responses to be accurately referenced to the infection event. For each participant, we trained a semisupervised multivariable anomaly detection model on data acquired before inoculation and used it to classify the postinoculation dataset. Results Inoculation with this challenge virus was well-tolerated with an infection rate of 85%. With the model classification threshold set so that no alarms were recorded in the 170 healthy days recorded, the algorithm correctly identified 16 of 17 (94%) positive presymptomatic and asymptomatic individuals, on average 58 hours postinoculation and 23 hours before the symptom onset. Conclusions The data processing and modeling methodology show promise for the early detection of respiratory illness. The detection algorithm is compatible with data collected from smartwatches using optical techniques but needs to be validated in large heterogeneous cohorts in normal living conditions. Clinical Trials Registration. NCT04204493.

Funder

Defense Advanced Research Projects Agency

NIHR Imperial Biomedical Research Centre

NIHR Imperial Clinical Research Facility

Publisher

Oxford University Press (OUP)

Subject

Infectious Diseases,Immunology and Allergy

Reference46 articles.

1. High-performance medicine: the convergence of human and artificial intelligence;Topol;Nat Med,2019

2. Digital health: tracking physiomes and activity using wearable biosensors reveals useful health-related information;Li;PLoS Biol,2017

3. Predictive monitoring of mobile patients by combining clinical observations with data from wearable sensors;Clifton;IEEE J Biomed Health Inform,2014

4. Wearable sensors integrated with internet of things for advancing eHealth care;Bayo-Monton;Sensors (Basel),2018

5. Large-scale assessment of a smartwatch to identify atrial fibrillation;Perez;N Engl J Med,2019

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