The structural landscape of the immunoglobulin fold by large-scale de novo design

Protein Sci. 2024 Apr;33(4):e4936. doi: 10.1002/pro.4936.

Abstract

De novo designing immunoglobulin-like frameworks that allow for functional loop diversification shows great potential for crafting antibody-like scaffolds with fully customizable structures and functions. In this work, we combined de novo parametric design with deep-learning methods for protein structure prediction and design to explore the structural landscape of 7-stranded immunoglobulin domains. After screening folding of nearly 4 million designs, we have assembled a structurally diverse library of ~50,000 immunoglobulin domains with high-confidence AlphaFold2 predictions and structures diverging from naturally occurring ones. The designed dataset enabled us to identify structural requirements for the correct folding of immunoglobulin domains, shed light on β-sheet-β-sheet rotational preferences and how these are linked to functional properties. Our approach eliminates the need for preset loop conformations and opens the route to large-scale de novo design of immunoglobulin-like frameworks.

Keywords: AlphaFold2; Rosetta; beta-sheets; de novo protein design; deep learning; immunoglobulin; protein structure.

MeSH terms

  • Antibodies*
  • Immunoglobulin Domains
  • Models, Molecular
  • Protein Conformation, beta-Strand
  • Protein Folding*

Substances

  • Antibodies