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Mixing biomimetic heterodimers of nucleopeptides to generate biocompatible and biostable supramolecular hydrogels.


ABSTRACT: As a new class of biomaterials, most supramolecular hydrogels formed by small peptides require the attachment of long alkyl chains, multiple aromatic groups, or strong electrostatic interactions. Based on the fact that the most abundant protein assemblies in nature are dimeric, we select short peptide sequences from the interface of a heterodimer of proteins with known crystal structure to conjugate with nucleobases to form nucleopeptides. Being driven mainly by hydrogen bonds, the nucleopeptides self-assemble to form nanofibers, which results in supramolecular hydrogels upon simple mixing of two distinct nucleopeptides in water. Moreover, besides being biocompatible to mammalian cells, the heterodimer of the nucleopeptides exhibit excellent proteolytic resistance against proteinase?K. This work illustrates a new and rational approach to create soft biomaterials by a supramolecular hydrogelation triggered by mixing heterodimeric nucleopeptides.

SUBMITTER: Yuan D 

PROVIDER: S-EPMC4535690 | biostudies-literature | 2015 May

REPOSITORIES: biostudies-literature

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Mixing biomimetic heterodimers of nucleopeptides to generate biocompatible and biostable supramolecular hydrogels.

Yuan Dan D   Du Xuewen X   Shi Junfeng J   Zhou Ning N   Zhou Jie J   Xu Bing B  

Angewandte Chemie (International ed. in English) 20150317 19


As a new class of biomaterials, most supramolecular hydrogels formed by small peptides require the attachment of long alkyl chains, multiple aromatic groups, or strong electrostatic interactions. Based on the fact that the most abundant protein assemblies in nature are dimeric, we select short peptide sequences from the interface of a heterodimer of proteins with known crystal structure to conjugate with nucleobases to form nucleopeptides. Being driven mainly by hydrogen bonds, the nucleopeptide  ...[more]

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