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Impact of infection on proteome-wide glycosylation revealed by distinct signatures for bacterial and viral pathogens.

Authors :
Willems, E.
Gloerich, J.
Suppers, Anouk
Flier, M. van der
Heuvel, L.P. van den
Kar, N.C. van de
Philipsen, R.
Dael, M.F.P. van
Kaforou, M.
Wright, V.J.
Herberg, Jethro
Torres, F.M.
Levin, M.
Groot, R. de
Gool, A.J. van
Lefeber, D.J.
Wessels, H.J.C.T.
Jonge, M.I. de
Willems, E.
Gloerich, J.
Suppers, Anouk
Flier, M. van der
Heuvel, L.P. van den
Kar, N.C. van de
Philipsen, R.
Dael, M.F.P. van
Kaforou, M.
Wright, V.J.
Herberg, Jethro
Torres, F.M.
Levin, M.
Groot, R. de
Gool, A.J. van
Lefeber, D.J.
Wessels, H.J.C.T.
Jonge, M.I. de
Source :
iScience; 107257; 2589-0042; 8; 26; 107257; ~iScience~107257~~~~2589-0042~8~26~~107257
Publication Year :
2023

Abstract

Contains fulltext : 296018.pdf (Publisher’s version ) (Open Access)<br />Mechanisms of infection and pathogenesis have predominantly been studied based on differential gene or protein expression. Less is known about posttranslational modifications, which are essential for protein functional diversity. We applied an innovative glycoproteomics method to study the systemic proteome-wide glycosylation in response to infection. The protein site-specific glycosylation was characterized in plasma derived from well-defined controls and patients. We found 3862 unique features, of which we identified 463 distinct intact glycopeptides, that could be mapped to more than 30 different proteins. Statistical analyses were used to derive a glycopeptide signature that enabled significant differentiation between patients with a bacterial or viral infection. Furthermore, supported by a machine learning algorithm, we demonstrated the ability to identify the causative pathogens based on the distinctive host blood plasma glycopeptide signatures. These results illustrate that glycoproteomics holds enormous potential as an innovative approach to improve the interpretation of relevant biological changes in response to infection.

Details

Database :
OAIster
Journal :
iScience; 107257; 2589-0042; 8; 26; 107257; ~iScience~107257~~~~2589-0042~8~26~~107257
Publication Type :
Electronic Resource
Accession number :
edsoai.on1399414829
Document Type :
Electronic Resource