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A proteomic survival predictor for COVID-19 patients in intensive care

Authors :
Alexander Uhrig
Richard Hilbe
Michael Muelleder
Michael Ramharter
Oleg Blyuss
Sophy Denker
Daniel Zickler
Miriam Stegemann
Christoph B. Messner
Caroline Hayward
Riccardo E. Marioni
Clara Correia-Melo
Rosa Bellmann-Weiler
Mirja Mittermaier
Nils B. Mueller
Elisa T Helbig
Carmen Garcia
Alexey Zaikin
Moritz Pfeiffer
Ivan Tancevski
David J. Porteous
Holger Mueller-Redetzky
Daniela Ludwig
Aleksej Zelezniak
Philipp Enghard
Matthew White
Vadim Demichev
Sonja Wagner
Heinz Zoller
Sebastian J. Klein
Spyros I. Vernardis
Markus A. Keller
Harry J. Whitwell
Leif E. Sander
Annika Roehl
Felix Machleidt
Christoph Ruwwe-Gloesenkamp
Michael Joannidis
Linda Juergens
Yvonne Wohlfarter
Nana-Maria Gruening
Stefan Hippenstiel
Judith Loeffler-Ragg
Kathryn S. Lilley
Simran Kaur Aulakh
Martin Witzenrath
Guenter Weiss
Florian Kurth
Sabina Sahanic
Tilman Lingscheid
Benedikt Schaefer
Thomas Sonnweber
Laure Bosquillon de Jarcy
Anja Freiwald
Norbert Suttorp
Lena J Lippert
Markus Ralser
Charlotte Thibeault
Pinkus Tober-Lau
John F. Timms
Nadine Olk
Lukasz Szyrwiel
Alex Pizzini
Paula Stubbemann
Tatiana Nazarenko
Archie Campbell
Andreas Edel
Claudia Spies
Oliver Lemke
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Global healthcare systems are challenged by the COVID-19 pandemic. There is a need to optimize allocation of treatment and resources in intensive care, as clinically established risk assessments such as SOFA and APACHE II scores show only limited performance for predicting the survival of severely ill COVID-19 patients. Comprehensively capturing the host physiology, we speculated that proteomics in combination with new data-driven analysis strategies could produce a new generation of prognostic discriminators. We studied two independent cohorts of patients with severe COVID-19 who required intensive care and invasive mechanical ventilation. SOFA score, Charlson comorbidity index and APACHE II score were poor predictors of survival. Plasma proteomics instead identified 14 proteins that showed concentration trajectories different between survivors and non-survivors. A proteomic predictor trained on single samples obtained at the first time point at maximum treatment level (i.e. WHO grade 7) and weeks before the outcome, achieved accurate classification of survivors in an exploratory (AUROC 0.81) as well as in the independent validation cohort (AUROC of 1.0). The majority of proteins with high relevance in the prediction model belong to the coagulation system and complement cascade. Our study demonstrates that predictors derived from plasma protein levels have the potential to substantially outperform current prognostic markers in intensive care.Trial registrationGerman Clinical Trials Register DRKS00021688

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........d7e03e3c340d0f373e0867b887f25731