Automated, multiparametric monitoring of respiratory biomarkers and vital signs in clinical and home settings for COVID-19 patients

Author:

Ni XiaoyueORCID,Ouyang Wei,Jeong HyoyoungORCID,Kim Jin-TaeORCID,Tzaveils AndreasORCID,Mirzazadeh AliORCID,Wu Changsheng,Lee Jong YoonORCID,Keller Matthew,Mummidisetty Chaithanya K.ORCID,Patel ManishORCID,Shawen Nicholas,Huang Joy,Chen Hope,Ravi SowmyaORCID,Chang Jan-Kai,Lee KunHyuckORCID,Wu Yixin,Lie Ferrona,Kang Youn J.ORCID,Kim Jong Uk,Chamorro Leonardo P.ORCID,Banks Anthony R.ORCID,Bharat Ankit,Jayaraman Arun,Xu Shuai,Rogers John A.

Abstract

Capabilities in continuous monitoring of key physiological parameters of disease have never been more important than in the context of the global COVID-19 pandemic. Soft, skin-mounted electronics that incorporate high-bandwidth, miniaturized motion sensors enable digital, wireless measurements of mechanoacoustic (MA) signatures of both core vital signs (heart rate, respiratory rate, and temperature) and underexplored biomarkers (coughing count) with high fidelity and immunity to ambient noises. This paper summarizes an effort that integrates such MA sensors with a cloud data infrastructure and a set of analytics approaches based on digital filtering and convolutional neural networks for monitoring of COVID-19 infections in sick and healthy individuals in the hospital and the home. Unique features are in quantitative measurements of coughing and other vocal events, as indicators of both disease and infectiousness. Systematic imaging studies demonstrate correlations between the time and intensity of coughing, speaking, and laughing and the total droplet production, as an approximate indicator of the probability for disease spread. The sensors, deployed on COVID-19 patients along with healthy controls in both inpatient and home settings, record coughing frequency and intensity continuously, along with a collection of other biometrics. The results indicate a decaying trend of coughing frequency and intensity through the course of disease recovery, but with wide variations across patient populations. The methodology creates opportunities to study patterns in biometrics across individuals and among different demographic groups.

Funder

National Science Foundation

Biomedical Advanced Research and Development

HHS | National Institutes of Health

Michael J. Fox Foundation for Parkinsonʾs Research

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

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