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Directed intermixing in multicomponent self-assembling biomaterials.


ABSTRACT: The noncovalent coassembly of multiple different peptides can be a useful route for producing multifunctional biomaterials. However, to date, such materials have almost exclusively been investigated as homogeneous self-assemblies, having functional components uniformly distributed throughout their supramolecular structures. Here we illustrate control over the intermixing of multiple different self-assembling peptides, in turn providing a simple but powerful means for modulating these materials' mechanical and biological properties. In ?-sheet fibrillizing hydrogels, significant increases in stiffening could be achieved using heterobifunctional cross-linkers by sequestering peptides bearing different reactive groups into distinct populations of fibrils, thus favoring interfibril cross-linking. Further, by specifying the intermixing of RGD-bearing peptides in 2-D and 3-D self-assemblies, the growth of HUVECs and NIH 3T3 cells could be significantly modulated. This approach may be immediately applicable toward a wide variety of self-assembling systems that form stable supramolecular structures.

SUBMITTER: Gasiorowski JZ 

PROVIDER: S-EPMC3190078 | biostudies-literature | 2011 Oct

REPOSITORIES: biostudies-literature

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Directed intermixing in multicomponent self-assembling biomaterials.

Gasiorowski Joshua Z JZ   Collier Joel H JH  

Biomacromolecules 20110906 10


The noncovalent coassembly of multiple different peptides can be a useful route for producing multifunctional biomaterials. However, to date, such materials have almost exclusively been investigated as homogeneous self-assemblies, having functional components uniformly distributed throughout their supramolecular structures. Here we illustrate control over the intermixing of multiple different self-assembling peptides, in turn providing a simple but powerful means for modulating these materials'  ...[more]

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