Detection of COVID-19 using multimodal data from a wearable device: results from the first TemPredict Study

Author:

Mason Ashley E.,Hecht Frederick M.,Davis Shakti K.,Natale Joseph L.,Hartogensis Wendy,Damaso Natalie,Claypool Kajal T.,Dilchert Stephan,Dasgupta Subhasis,Purawat Shweta,Viswanath Varun K.,Klein Amit,Chowdhary Anoushka,Fisher Sarah M.,Anglo Claudine,Puldon Karena Y.,Veasna Danou,Prather Jenifer G.,Pandya Leena S.,Fox Lindsey M.,Busch Michael,Giordano Casey,Mercado Brittany K.,Song Jining,Jaimes Rafael,Baum Brian S.,Telfer Brian A.,Philipson Casandra W.,Collins Paula P.,Rao Adam A.,Wang Edward J.,Bandi Rachel H.,Choe Bianca J.,Epel Elissa S.,Epstein Stephen K.,Krasnoff Joanne B.,Lee Marco B.,Lee Shi-Wen,Lopez Gina M.,Mehta Arpan,Melville Laura D.,Moon Tiffany S.,Mujica-Parodi Lilianne R.,Noel Kimberly M.,Orosco Michael A.,Rideout Jesse M.,Robishaw Janet D.,Rodriguez Robert M.,Shah Kaushal H.,Siegal Jonathan H.,Gupta Amarnath,Altintas Ilkay,Smarr Benjamin L.

Abstract

AbstractEarly detection of diseases such as COVID-19 could be a critical tool in reducing disease transmission by helping individuals recognize when they should self-isolate, seek testing, and obtain early medical intervention. Consumer wearable devices that continuously measure physiological metrics hold promise as tools for early illness detection. We gathered daily questionnaire data and physiological data using a consumer wearable (Oura Ring) from 63,153 participants, of whom 704 self-reported possible COVID-19 disease. We selected 73 of these 704 participants with reliable confirmation of COVID-19 by PCR testing and high-quality physiological data for algorithm training to identify onset of COVID-19 using machine learning classification. The algorithm identified COVID-19 an average of 2.75 days before participants sought diagnostic testing with a sensitivity of 82% and specificity of 63%. The receiving operating characteristic (ROC) area under the curve (AUC) was 0.819 (95% CI [0.809, 0.830]). Including continuous temperature yielded an AUC 4.9% higher than without this feature. For further validation, we obtained SARS CoV-2 antibody in a subset of participants and identified 10 additional participants who self-reported COVID-19 disease with antibody confirmation. The algorithm had an overall ROC AUC of 0.819 (95% CI [0.809, 0.830]), with a sensitivity of 90% and specificity of 80% in these additional participants. Finally, we observed substantial variation in accuracy based on age and biological sex. Findings highlight the importance of including temperature assessment, using continuous physiological features for alignment, and including diverse populations in algorithm development to optimize accuracy in COVID-19 detection from wearables.

Funder

Medical Technology Enterprise Consortium

Department of Defense, Air Force Office of Scientific Research

Oura Health Oy

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Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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