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Journal article

A Markov model of glycosylation elucidates isozyme specificity and glycosyltransferase interactions for glycoengineering

From

University of California at San Diego1

Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark2

CHO in Silico Engineering of Glycosylation and Protein Quality (CiSe), Research Groups, Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark3

CHO Core, Translational Management, Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark4

Glycosylated biopharmaceuticals are important in the global pharmaceutical market. Despite the importance of their glycan structures, our limited knowledge of the glycosylation machinery still hinders controllability of this critical quality attribute. To facilitate discovery of glycosyltransferase specificity and predict glycoengineering efforts, here we extend the approach to model N-linked protein glycosylation as a Markov process.

Our model leverages putative glycosyltransferase (GT) specificity to define the biosynthetic pathways for all measured glycans, and the Markov chain modelling is used to learn glycosyltransferase isoform activities and predict glycosylation following glycosyltransferase knock-in/knockout. We apply our methodology to four different glycoengineered therapeutics (i.e., Rituximab, erythropoietin, Enbrel, and alpha-1 antitrypsin) produced in CHO cells.

Our model accurately predicted N-linked glycosylation following glycoengineering and further quantified the impact of glycosyltransferase mutations on reactions catalyzed by other glycosyltransferases. By applying these learned GT-GT interaction rules identified from single glycosyltransferase mutants, our model further predicts the outcome of multi-gene glycosyltransferase mutations on the diverse biotherapeutics.

Thus, this modeling approach enables rational glycoengineering and the elucidation of relationships between glycosyltransferases, thereby facilitating biopharmaceutical research and aiding the broader study of glycosylation to elucidate the genetic basis of complex changes in glycosylation.

Language: English
Publisher: Elsevier
Year: 2020
Pages: 22-36
ISSN: 25902628
Types: Journal article
DOI: 10.1016/j.crbiot.2020.01.001
ORCIDs: Hansen, Anders H. , Arnsdorf, Johnny , Schoffelen, Sanne and Voldborg, Bjørn G.

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