Literature DB >> 35471658

Evaluating performance of existing computational models in predicting CD8+ T cell pathogenic epitopes and cancer neoantigens.

Paul R Buckley1,2, Chloe H Lee1,2, Ruichong Ma1,3,4, Isaac Woodhouse5, Jeongmin Woo1,2, Vasily O Tsvetkov6, Dmitrii S Shcherbinin7,8, Agne Antanaviciute1,2, Mikhail Shughay7,8, Margarida Rei9, Alison Simmons1, Hashem Koohy1,2,10.   

Abstract

T cell recognition of a cognate peptide-major histocompatibility complex (pMHC) presented on the surface of infected or malignant cells is of the utmost importance for mediating robust and long-term immune responses. Accurate predictions of cognate pMHC targets for T cell receptors would greatly facilitate identification of vaccine targets for both pathogenic diseases and personalized cancer immunotherapies. Predicting immunogenic peptides therefore has been at the center of intensive research for the past decades but has proven challenging. Although numerous models have been proposed, performance of these models has not been systematically evaluated and their success rate in predicting epitopes in the context of human pathology has not been measured and compared. In this study, we evaluated the performance of several publicly available models, in identifying immunogenic CD8+ T cell targets in the context of pathogens and cancers. We found that for predicting immunogenic peptides from an emerging virus such as severe acute respiratory syndrome coronavirus 2, none of the models perform substantially better than random or offer considerable improvement beyond HLA ligand prediction. We also observed suboptimal performance for predicting cancer neoantigens. Through investigation of potential factors associated with ill performance of models, we highlight several data- and model-associated issues. In particular, we observed that cross-HLA variation in the distribution of immunogenic and non-immunogenic peptides in the training data of the models seems to substantially confound the predictions. We additionally compared key parameters associated with immunogenicity between pathogenic peptides and cancer neoantigens and observed evidence for differences in the thresholds of binding affinity and stability, which suggested the need to modulate different features in identifying immunogenic pathogen versus cancer peptides. Overall, we demonstrate that accurate and reliable predictions of immunogenic CD8+ T cell targets remain unsolved; thus, we hope our work will guide users and model developers regarding potential pitfalls and unsettled questions in existing immunogenicity predictors.
© The Author(s) 2022. Published by Oxford University Press.

Entities:  

Keywords:  CD8 T-cell target; T-cell response; cancer neoantigen; immunotherapy; peptide immunogenicity; peptide presentation

Mesh:

Substances:

Year:  2022        PMID: 35471658      PMCID: PMC9116217          DOI: 10.1093/bib/bbac141

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   13.994


  38 in total

1.  Generation of peptide-MHC class I complexes through UV-mediated ligand exchange.

Authors:  Boris Rodenko; Mireille Toebes; Sine Reker Hadrup; Wim J E van Esch; Annemieke M Molenaar; Ton N M Schumacher; Huib Ovaa
Journal:  Nat Protoc       Date:  2006       Impact factor: 13.491

2.  MuPeXI: prediction of neo-epitopes from tumor sequencing data.

Authors:  Anne-Mette Bjerregaard; Morten Nielsen; Sine Reker Hadrup; Zoltan Szallasi; Aron Charles Eklund
Journal:  Cancer Immunol Immunother       Date:  2017-04-20       Impact factor: 6.968

3.  Predicting immunogenic tumour mutations by combining mass spectrometry and exome sequencing.

Authors:  Mahesh Yadav; Suchit Jhunjhunwala; Qui T Phung; Patrick Lupardus; Joshua Tanguay; Stephanie Bumbaca; Christian Franci; Tommy K Cheung; Jens Fritsche; Toni Weinschenk; Zora Modrusan; Ira Mellman; Jennie R Lill; Lélia Delamarre
Journal:  Nature       Date:  2014-11-27       Impact factor: 49.962

4.  Structural dissimilarity from self drives neoepitope escape from immune tolerance.

Authors:  Jason R Devlin; Jesus A Alonso; Cory M Ayres; Grant L J Keller; Sara Bobisse; Craig W Vander Kooi; George Coukos; David Gfeller; Alexandre Harari; Brian M Baker
Journal:  Nat Chem Biol       Date:  2020-08-17       Impact factor: 15.040

5.  DeepImmuno: deep learning-empowered prediction and generation of immunogenic peptides for T-cell immunity.

Authors:  Guangyuan Li; Balaji Iyer; V B Surya Prasath; Yizhao Ni; Nathan Salomonis
Journal:  Brief Bioinform       Date:  2021-05-03       Impact factor: 11.622

6.  ViPR: an open bioinformatics database and analysis resource for virology research.

Authors:  Brett E Pickett; Eva L Sadat; Yun Zhang; Jyothi M Noronha; R Burke Squires; Victoria Hunt; Mengya Liu; Sanjeev Kumar; Sam Zaremba; Zhiping Gu; Liwei Zhou; Christopher N Larson; Jonathan Dietrich; Edward B Klem; Richard H Scheuermann
Journal:  Nucleic Acids Res       Date:  2011-10-17       Impact factor: 16.971

Review 7.  CD8(+) T cells: foot soldiers of the immune system.

Authors:  Nu Zhang; Michael J Bevan
Journal:  Immunity       Date:  2011-08-26       Impact factor: 31.745

8.  Potential CD8+ T Cell Cross-Reactivity Against SARS-CoV-2 Conferred by Other Coronavirus Strains.

Authors:  Chloe H Lee; Mariana Pereira Pinho; Paul R Buckley; Isaac B Woodhouse; Graham Ogg; Alison Simmons; Giorgio Napolitani; Hashem Koohy
Journal:  Front Immunol       Date:  2020-11-05       Impact factor: 7.561

9.  HLA-dependent variation in SARS-CoV-2 CD8 + T cell cross-reactivity with human coronaviruses.

Authors:  Paul R Buckley; Chloe H Lee; Mariana Pereira Pinho; Rosana Ottakandathil Babu; Jeongmin Woo; Agne Antanaviciute; Alison Simmons; Graham Ogg; Hashem Koohy
Journal:  Immunology       Date:  2022-03-07       Impact factor: 7.215

10.  Mutation position is an important determinant for predicting cancer neoantigens.

Authors:  Aude-Hélène Capietto; Suchit Jhunjhunwala; Samuel B Pollock; Patrick Lupardus; Jim Wong; Lena Hänsch; James Cevallos; Yajun Chestnut; Ajay Fernandez; Nicolas Lounsbury; Tamaki Nozawa; Manmeet Singh; Zhiyuan Fan; Cecile C de la Cruz; Qui T Phung; Lucia Taraborrelli; Benjamin Haley; Jennie R Lill; Ira Mellman; Richard Bourgon; Lélia Delamarre
Journal:  J Exp Med       Date:  2020-04-06       Impact factor: 14.307

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  2 in total

Review 1.  Tumor microenvironment: barrier or opportunity towards effective cancer therapy.

Authors:  Aadhya Tiwari; Rakesh Trivedi; Shiaw-Yih Lin
Journal:  J Biomed Sci       Date:  2022-10-17       Impact factor: 12.771

2.  De-risking clinical trial failure through mechanistic simulation.

Authors:  Liam V Brown; Jonathan Wagg; Rachel Darley; Andy van Hateren; Tim Elliott; Eamonn A Gaffney; Mark C Coles
Journal:  Immunother Adv       Date:  2022-08-23
  2 in total

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