Literature DB >> 26537759

A Markov chain model for N-linked protein glycosylation--towards a low-parameter tool for model-driven glycoengineering.

Philipp N Spahn1, Anders H Hansen2, Henning G Hansen2, Johnny Arnsdorf2, Helene F Kildegaard2, Nathan E Lewis3.   

Abstract

Glycosylation is a critical quality attribute of most recombinant biotherapeutics. Consequently, drug development requires careful control of glycoforms to meet bioactivity and biosafety requirements. However, glycoengineering can be extraordinarily difficult given the complex reaction networks underlying glycosylation and the vast number of different glycans that can be synthesized in a host cell. Computational modeling offers an intriguing option to rationally guide glycoengineering, but the high parametric demands of current modeling approaches pose challenges to their application. Here we present a novel low-parameter approach to describe glycosylation using flux-balance and Markov chain modeling. The model recapitulates the biological complexity of glycosylation, but does not require user-provided kinetic information. We use this method to predict and experimentally validate glycoprofiles on EPO, IgG as well as the endogenous secretome following glycosyltransferase knock-out in different Chinese hamster ovary (CHO) cell lines. Our approach offers a flexible and user-friendly platform that can serve as a basis for powerful computational engineering efforts in mammalian cell factories for biopharmaceutical production.
Copyright © 2015 International Metabolic Engineering Society. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Flux-balance analysis; Glycoengineering; Glycosylation; Markov chains

Mesh:

Substances:

Year:  2015        PMID: 26537759      PMCID: PMC5031499          DOI: 10.1016/j.ymben.2015.10.007

Source DB:  PubMed          Journal:  Metab Eng        ISSN: 1096-7176            Impact factor:   9.783


  65 in total

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6.  Identification of manipulated variables for a glycosylation control strategy.

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5.  Predictive glycoengineering of biosimilars using a Markov chain glycosylation model.

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7.  Global mapping of glycosylation pathways in human-derived cells.

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10.  A Knowledge-Based System for Display and Prediction of O-Glycosylation Network Behaviour in Response to Enzyme Knockouts.

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