Molecular Modeling of Self-Assembling Peptides

ACS Appl Bio Mater. 2024 Feb 19;7(2):543-552. doi: 10.1021/acsabm.2c00921. Epub 2023 Feb 16.

Abstract

Peptide epitopes mediate as many as 40% of protein-protein interactions and fulfill signaling, inhibition, and activation roles within the cell. Beyond protein recognition, some peptides can self- or coassemble into stable hydrogels, making them a readily available source of biomaterials. While these 3D assemblies are routinely characterized at the fiber level, there are missing atomistic details about the assembly scaffold. Such atomistic detail can be useful in the rational design of more stable scaffold structures and with improved accessibility to functional motifs. Computational approaches can in principle reduce the experimental cost of such an endeavor by predicting the assembly scaffold and identifying novel sequences that adopt said structure. Yet, inaccuracies in physical models and inefficient sampling have limited atomistic studies to short (two or three amino acid) peptides. Given recent developments in machine learning and advances in sampling strategies, we revisit the suitability of physical models for this task. We use the MELD (Modeling Employing Limited Data) approach to drive self-assembly in combination with generic data in cases where conventional MD is unsuccessful. Finally, despite recent developments in machine learning algorithms for protein structure and sequence predictions, we find the algorithms are not yet suited for studying the assembly of short peptides.

Keywords: MELD; computational chemistry; molecular dynamics; peptide folding; peptide self assembly.

Publication types

  • Review

MeSH terms

  • Biocompatible Materials*
  • Hydrogels / chemistry
  • Models, Molecular
  • Peptides* / chemistry

Substances

  • Peptides
  • Biocompatible Materials
  • Hydrogels