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Prediction of viral symptoms using wearable technology and artificial intelligence: A pilot study in healthcare workers

Pierre-François D’Haese, Victor Finomore, Dmitry Lesnik, Laura Kornhauser, Tobias Schaefer, Peter E. Konrad, Sally Hodder, Clay B. Marsh, Ali R. Rezai

2021PLoS ONE19 citationsDOIOpen Access PDF

Abstract

Conventional testing and diagnostic methods for infections like SARS-CoV-2 have limitations for population health management and public policy. We hypothesize that daily changes in autonomic activity, measured through off-the-shelf technologies together with app-based cognitive assessments, may be used to forecast the onset of symptoms consistent with a viral illness. We describe our strategy using an AI model that can predict, with 82% accuracy (negative predictive value 97%, specificity 83%, sensitivity 79%, precision 34%), the likelihood of developing symptoms consistent with a viral infection three days before symptom onset. The model correctly predicts, almost all of the time (97%), individuals who will not develop viral-like illness symptoms in the next three days. Conversely, the model correctly predicts as positive 34% of the time, individuals who will develop viral-like illness symptoms in the next three days. This model uses a conservative framework, warning potentially pre-symptomatic individuals to socially isolate while minimizing warnings to individuals with a low likelihood of developing viral-like symptoms in the next three days. To our knowledge, this is the first study using wearables and apps with machine learning to predict the occurrence of viral illness-like symptoms. The demonstrated approach to forecasting the onset of viral illness-like symptoms offers a novel, digital decision-making tool for public health safety by potentially limiting viral transmission.

Topics & Concepts

MedicineWearable computerViral loadPopulationPublic healthHealth careWearable technologyImmunologyComputer scienceHuman immunodeficiency virus (HIV)Environmental healthPathologyEconomic growthEmbedded systemEconomicsCOVID-19 epidemiological studiesCOVID-19 and Mental HealthMental Health Research Topics
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