Design of self-assembly dipeptide hydrogels and machine learning via their chemical features

Proc Natl Acad Sci U S A. 2019 Jun 4;116(23):11259-11264. doi: 10.1073/pnas.1903376116. Epub 2019 May 20.

Abstract

Hydrogels that are self-assembled by peptides have attracted great interest for biomedical applications. However, the link between chemical structures of peptides and their corresponding hydrogel properties is still unclear. Here, we showed a combinational approach to generate a structurally diverse hydrogel library with more than 2,000 peptides and evaluated their corresponding properties. We used a quantitative structure-property relationship to calculate their chemical features reflecting the topological and physicochemical properties, and applied machine learning to predict the self-assembly behavior. We observed that the stiffness of hydrogels is correlated with the diameter and cross-linking degree of the nanofiber. Importantly, we demonstrated that the hydrogels support cell proliferation in culture, suggesting the biocompatibility of the hydrogel. The combinatorial hydrogel library and the machine learning approach we developed linked the chemical structures with their self-assembly behavior and can accelerate the design of novel peptide structures for biomedical use.

Keywords: dipeptide hydrogels; machine learning; self-assembly.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Biocompatible Materials / chemistry
  • Cell Proliferation / drug effects
  • Dipeptides / chemistry*
  • Humans
  • Hydrogels / chemistry*
  • Machine Learning
  • Nanofibers / chemistry

Substances

  • Biocompatible Materials
  • Dipeptides
  • Hydrogels