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Circulating proteins to predict COVID-19 severity

Authors :
Chen-Yang Su
Sirui Zhou
Edgar Gonzalez-Kozlova
Guillaume Butler-Laporte
Elsa Brunet-Ratnasingham
Tomoko Nakanishi
Wonseok Jeon
David R. Morrison
Laetitia Laurent
Jonathan Afilalo
Marc Afilalo
Danielle Henry
Yiheng Chen
Julia Carrasco-Zanini
Yossi Farjoun
Maik Pietzner
Nofar Kimchi
Zaman Afrasiabi
Nardin Rezk
Meriem Bouab
Louis Petitjean
Charlotte Guzman
Xiaoqing Xue
Chris Tselios
Branka Vulesevic
Olumide Adeleye
Tala Abdullah
Noor Almamlouk
Yara Moussa
Chantal DeLuca
Naomi Duggan
Erwin Schurr
Nathalie Brassard
Madeleine Durand
Diane Marie Del Valle
Ryan Thompson
Mario A. Cedillo
Eric Schadt
Kai Nie
Nicole W. Simons
Konstantinos Mouskas
Nicolas Zaki
Manishkumar Patel
Hui Xie
Jocelyn Harris
Robert Marvin
Esther Cheng
Kevin Tuballes
Kimberly Argueta
Ieisha Scott
The Mount Sinai COVID-19 Biobank Team
Celia M. T. Greenwood
Clare Paterson
Michael A. Hinterberg
Claudia Langenberg
Vincenzo Forgetta
Joelle Pineau
Vincent Mooser
Thomas Marron
Noam D. Beckmann
Seunghee Kim-schulze
Alexander W. Charney
Sacha Gnjatic
Daniel E. Kaufmann
Miriam Merad
J. Brent Richards
Source :
Scientific Reports, Vol 13, Iss 1, Pp 1-15 (2023)
Publication Year :
2023
Publisher :
Nature Portfolio, 2023.

Abstract

Abstract Predicting COVID-19 severity is difficult, and the biological pathways involved are not fully understood. To approach this problem, we measured 4701 circulating human protein abundances in two independent cohorts totaling 986 individuals. We then trained prediction models including protein abundances and clinical risk factors to predict COVID-19 severity in 417 subjects and tested these models in a separate cohort of 569 individuals. For severe COVID-19, a baseline model including age and sex provided an area under the receiver operator curve (AUC) of 65% in the test cohort. Selecting 92 proteins from the 4701 unique protein abundances improved the AUC to 88% in the training cohort, which remained relatively stable in the testing cohort at 86%, suggesting good generalizability. Proteins selected from different COVID-19 severity were enriched for cytokine and cytokine receptors, but more than half of the enriched pathways were not immune-related. Taken together, these findings suggest that circulating proteins measured at early stages of disease progression are reasonably accurate predictors of COVID-19 severity. Further research is needed to understand how to incorporate protein measurement into clinical care.

Subjects

Subjects :
Medicine
Science

Details

Language :
English
ISSN :
20452322
Volume :
13
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Scientific Reports
Publication Type :
Academic Journal
Accession number :
edsdoj.01337ffce78741589c060c556f78383f
Document Type :
article
Full Text :
https://doi.org/10.1038/s41598-023-31850-y