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From the same journal

Enzymatic Production and Enzymatic-Mass Spectrometric Fingerprinting Analysis of Chitosan Polymers with Different Nonrandom Patterns of Acetylation

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Author(s)

  • Jasper Wattjes
  • Anna Niehues
  • Stefan Cord-Landwehr
  • Janina Hoßbach
  • Laurent David
  • Thierry Delair
  • Bruno M Moerschbacher

Department/unit(s)

Publication details

JournalJournal of the American Chemical Society
DateE-pub ahead of print - 23 Jan 2019
DatePublished (current) - 20 Feb 2019
Issue number7
Volume141
Number of pages9
Pages (from-to)3137-3145
Early online date23/01/19
Original languageEnglish

Abstract

Chitosans, a family of ß-(1,4)-linked, partially N-acetylated polyglucosamines, are considered to be among the most versatile and most promising functional biopolymers. Chemical analysis and bioactivity studies revealed that the functionalities of chitosans strongly depend on the polymers' degree of polymerization and fraction of acetylation. More recently, the pattern of acetylation ( PA) has been proposed as another important parameter to influence functionalities of chitosans. We therefore carried out studies on the acetylation pattern of chitosan polymers produced by three recombinant fungal chitin deacetylases (CDAs) originating from different species, namely, Podospora anserina, Puccinia graminis f. sp. tritici, and Pestalotiopsis sp. We analyzed the chitosans by 1H NMR, 13C NMR, and SEC-MALS and established new methods for PA analysis based on enzymatic mass spectrometric fingerprinting and in silico simulations. Our studies strongly indicate that the different CDAs indeed produce chitosans with different PA. Finally, Zimm plot analysis revealed that enzymatically treated polymers differ with respect to their second virial coefficient and radius of gyration indicating an influence of PA on polymer-solvent interactions.

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