Quantification of Uncertainty in Peptide-MHC Binding Prediction Improves High-Affinity Peptide Selection for Therapeutic Design

Cell Syst. 2019 Aug 28;9(2):159-166.e3. doi: 10.1016/j.cels.2019.05.004. Epub 2019 Jun 5.

Abstract

The computational identification of peptides that can bind the major histocompatibility complex (MHC) with high affinity is an essential step in developing personal immunotherapies and vaccines. We introduce PUFFIN, a deep residual network-based computational approach that quantifies uncertainty in peptide-MHC affinity prediction that arises from observational noise and the lack of relevant training examples. With PUFFIN's uncertainty metrics, we define binding likelihood, the probability a peptide binds to a given MHC allele at a specified affinity threshold. Compared to affinity point estimates, we find that binding likelihood correlates better with the observed affinity and reduces false positives in high-affinity peptide design. When applied to examine an existing peptide vaccine, PUFFIN identifies an alternative vaccine formulation with higher binding likelihood. PUFFIN is freely available for download at http://github.com/gifford-lab/PUFFIN.

Keywords: MHC; binding affinity; deep learning; major histocompatibility complex; neoantigen; peptide presentation; uncertainty; vaccine.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Algorithms
  • Computational Biology / methods*
  • Databases, Protein
  • Histocompatibility Antigens Class I / genetics
  • Humans
  • Major Histocompatibility Complex / physiology*
  • Peptides / metabolism
  • Protein Binding / physiology*
  • Software
  • Uncertainty

Substances

  • Histocompatibility Antigens Class I
  • Peptides