Back to Search Start Over

A machine learning approach identifies distinct early-symptom cluster phenotypes which correlate with hospitalization, failure to return to activities, and prolonged COVID-19 symptoms

Authors :
Nusrat J. Epsi
John H. Powers
David A. Lindholm
Katrin Mende
Allison Malloy
Anuradha Ganesan
Nikhil Huprikar
Tahaniyat Lalani
Alfred Smith
Rupal M. Mody
Milissa U. Jones
Samantha E. Bazan
Rhonda E. Colombo
Christopher J. Colombo
Evan C. Ewers
Derek T. Larson
Catherine M. Berjohn
Carlos J. Maldonado
Paul W. Blair
Josh Chenoweth
David L. Saunders
Jeffrey Livezey
Ryan C. Maves
Margaret Sanchez Edwards
Julia S. Rozman
Mark P. Simons
David R. Tribble
Brian K. Agan
Timothy H. Burgess
Simon D. Pollett
for the EPICC COVID-19 Cohort Study Group
Source :
PLoS ONE, Vol 18, Iss 2 (2023)
Publication Year :
2023
Publisher :
Public Library of Science (PLoS), 2023.

Abstract

Background Accurate COVID-19 prognosis is a critical aspect of acute and long-term clinical management. We identified discrete clusters of early stage-symptoms which may delineate groups with distinct disease severity phenotypes, including risk of developing long-term symptoms and associated inflammatory profiles. Methods 1,273 SARS-CoV-2 positive U.S. Military Health System beneficiaries with quantitative symptom scores (FLU-PRO Plus) were included in this analysis. We employed machine-learning approaches to identify symptom clusters and compared risk of hospitalization, long-term symptoms, as well as peak CRP and IL-6 concentrations. Results We identified three distinct clusters of participants based on their FLU-PRO Plus symptoms: cluster 1 (“Nasal cluster”) is highly correlated with reporting runny/stuffy nose and sneezing, cluster 2 (“Sensory cluster”) is highly correlated with loss of smell or taste, and cluster 3 (“Respiratory/Systemic cluster”) is highly correlated with the respiratory (cough, trouble breathing, among others) and systemic (body aches, chills, among others) domain symptoms. Participants in the Respiratory/Systemic cluster were twice as likely as those in the Nasal cluster to have been hospitalized, and 1.5 times as likely to report that they had not returned-to-activities, which remained significant after controlling for confounding covariates (P < 0.01). Respiratory/Systemic and Sensory clusters were more likely to have symptoms at six-months post-symptom-onset (P = 0.03). We observed higher peak CRP and IL-6 in the Respiratory/Systemic cluster (P < 0.01). Conclusions We identified early symptom profiles potentially associated with hospitalization, return-to-activities, long-term symptoms, and inflammatory profiles. These findings may assist in patient prognosis, including prediction of long COVID risk.

Subjects

Subjects :
Medicine
Science

Details

Language :
English
ISSN :
19326203
Volume :
18
Issue :
2
Database :
Directory of Open Access Journals
Journal :
PLoS ONE
Publication Type :
Academic Journal
Accession number :
edsdoj.8c3928ef51534b6a8a3d2a2bb5b1e60d
Document Type :
article