Discovery and systematic assessment of early biomarkers that predict progression to severe COVID-19 disease

  • Katrin Hufnagel (Geteilte/r Erstautor/in)
  • Anahita Fathi (Geteilte/r Erstautor/in)
  • Nadine Stroh
  • Marco Klein
  • Florian Skwirblies
  • Ramy Girgis
  • Christine Dahlke
  • Jörg D Hoheisel
  • Camille Lowy
  • Ronny Schmidt
  • Anne Griesbeck
  • Uta Merle
  • Marylyn M Addo
  • Christoph Schröder

Abstract

BACKGROUND: The clinical course of COVID-19 patients ranges from asymptomatic infection, via mild and moderate illness, to severe disease and even fatal outcome. Biomarkers which enable an early prediction of the severity of COVID-19 progression, would be enormously beneficial to guide patient care and early intervention prior to hospitalization.

METHODS: Here we describe the identification of plasma protein biomarkers using an antibody microarray-based approach in order to predict a severe cause of a COVID-19 disease already in an early phase of SARS-CoV-2 infection. To this end, plasma samples from two independent cohorts were analyzed by antibody microarrays targeting up to 998 different proteins.

RESULTS: In total, we identified 11 promising protein biomarker candidates to predict disease severity during an early phase of COVID-19 infection coherently in both analyzed cohorts. A set of four (S100A8/A9, TSP1, FINC, IFNL1), and two sets of three proteins (S100A8/A9, TSP1, ERBB2 and S100A8/A9, TSP1, IFNL1) were selected using machine learning as multimarker panels with sufficient accuracy for the implementation in a prognostic test.

CONCLUSIONS: Using these biomarkers, patients at high risk of developing a severe or critical disease may be selected for treatment with specialized therapeutic options such as neutralizing antibodies or antivirals. Early therapy through early stratification may not only have a positive impact on the outcome of individual COVID-19 patients but could additionally prevent hospitals from being overwhelmed in potential future pandemic situations.

Bibliografische Daten

OriginalspracheEnglisch
ISSN2730-664X
DOIs
StatusVeröffentlicht - 12.04.2023

Anmerkungen des Dekanats

© 2023. The Author(s).

PubMed 37041310