Literature DB >> 30902818

Performance Evaluation of MHC Class-I Binding Prediction Tools Based on an Experimentally Validated MHC-Peptide Binding Data Set.

Maria Bonsack1,2,3, Stephanie Hoppe1,2,3, Jan Winter1,3, Diana Tichy4, Christine Zeller1, Marius D Küpper1,3, Eva C Schitter1,3, Renata Blatnik1,2,3, Angelika B Riemer5,2.   

Abstract

Knowing whether a protein can be processed and the resulting peptides presented by major histocompatibility complex (MHC) is highly important for immunotherapy design. MHC ligands can be predicted by in silico peptide-MHC class-I binding prediction algorithms. However, prediction performance differs considerably, depending on the selected algorithm, MHC class-I type, and peptide length. We evaluated the prediction performance of 13 algorithms based on binding affinity data of 8- to 11-mer peptides derived from the HPV16 E6 and E7 proteins to the most prevalent human leukocyte antigen (HLA) types. Peptides from high to low predicted binding likelihood were synthesized, and their HLA binding was experimentally verified by in vitro competitive binding assays. Based on the actual binding capacity of the peptides, the performance of prediction algorithms was analyzed by calculating receiver operating characteristics (ROC) and the area under the curve (AROC). No algorithm outperformed others, but different algorithms predicted best for particular HLA types and peptide lengths. The sensitivity, specificity, and accuracy of decision thresholds were calculated. Commonly used decision thresholds yielded only 40% sensitivity. To increase sensitivity, optimal thresholds were calculated, validated, and compared. In order to make maximal use of prediction algorithms available online, we developed MHCcombine, a web application that allows simultaneous querying and output combination of up to 13 prediction algorithms. Taken together, we provide here an evaluation of peptide-MHC class-I binding prediction tools and recommendations to increase prediction sensitivity to extend the number of potential epitopes applicable as targets for immunotherapy. ©2019 American Association for Cancer Research.

Entities:  

Year:  2019        PMID: 30902818     DOI: 10.1158/2326-6066.CIR-18-0584

Source DB:  PubMed          Journal:  Cancer Immunol Res        ISSN: 2326-6066            Impact factor:   11.151


  19 in total

1.  HLA-Arena: A Customizable Environment for the Structural Modeling and Analysis of Peptide-HLA Complexes for Cancer Immunotherapy.

Authors:  Dinler A Antunes; Jayvee R Abella; Sarah Hall-Swan; Didier Devaurs; Anja Conev; Mark Moll; Gregory Lizée; Lydia E Kavraki
Journal:  JCO Clin Cancer Inform       Date:  2020-07

Review 2.  Neoantigen prediction and computational perspectives towards clinical benefit: recommendations from the ESMO Precision Medicine Working Group.

Authors:  L De Mattos-Arruda; M Vazquez; F Finotello; R Lepore; E Porta; J Hundal; P Amengual-Rigo; C K Y Ng; A Valencia; J Carrillo; T A Chan; V Guallar; N McGranahan; J Blanco; M Griffith
Journal:  Ann Oncol       Date:  2020-06-28       Impact factor: 32.976

3.  Promoting the formation of Pi-stacking interaction to improve CTL cells activation between modified peptide and HLA.

Authors:  Ying Zhu; Chang-Xin Huang; Le Zhang; Ze-Fang Wang; Dong-Li Zhao; Fei Ding; Si-Yu Zhang; Yong-Qiang Li; Ling-Zhi Chen
Journal:  Am J Transl Res       Date:  2022-07-15       Impact factor: 3.940

4.  Combining Three-Dimensional Modeling with Artificial Intelligence to Increase Specificity and Precision in Peptide-MHC Binding Predictions.

Authors:  Michelle P Aranha; Yead S M Jewel; Robert A Beckman; Louis M Weiner; Julie C Mitchell; Jerry M Parks; Jeremy C Smith
Journal:  J Immunol       Date:  2020-09-02       Impact factor: 5.422

Review 5.  Recent progress on MHC-I epitope prediction in tumor immunotherapy.

Authors:  Xiangyi Wang; Zhaojin Yu; Wensi Liu; Haichao Tang; Dongxu Yi; Minjie Wei
Journal:  Am J Cancer Res       Date:  2021-06-15       Impact factor: 6.166

6.  Related parameters of affinity and stability prediction of HLA-A*2402 restricted antigen peptides based on molecular docking.

Authors:  Changxin Huang; Jianfeng Chen; Fei Ding; Lili Yang; Siyu Zhang; Xuechun Wang; Yanfei Shi; Ying Zhu
Journal:  Ann Transl Med       Date:  2021-04

7.  ARTEMIS: A Novel Mass-Spec Platform for HLA-Restricted Self and Disease-Associated Peptide Discovery.

Authors:  Kathryn A K Finton; Mi-Youn Brusniak; Lisa A Jones; Chenwei Lin; Andrew J Fioré-Gartland; Chance Brock; Philip R Gafken; Roland K Strong
Journal:  Front Immunol       Date:  2021-04-23       Impact factor: 7.561

Review 8.  Next-generation computational tools for interrogating cancer immunity.

Authors:  Francesca Finotello; Dietmar Rieder; Hubert Hackl; Zlatko Trajanoski
Journal:  Nat Rev Genet       Date:  2019-09-12       Impact factor: 59.581

9.  High-Throughput Prediction of MHC Class I and II Neoantigens with MHCnuggets.

Authors:  Xiaoshan M Shao; Rohit Bhattacharya; Justin Huang; I K Ashok Sivakumar; Collin Tokheim; Lily Zheng; Dylan Hirsch; Benjamin Kaminow; Ashton Omdahl; Maria Bonsack; Angelika B Riemer; Victor E Velculescu; Valsamo Anagnostou; Kymberleigh A Pagel; Rachel Karchin
Journal:  Cancer Immunol Res       Date:  2019-12-23       Impact factor: 12.020

10.  Ranking-Based Convolutional Neural Network Models for Peptide-MHC Class I Binding Prediction.

Authors:  Ziqi Chen; Martin Renqiang Min; Xia Ning
Journal:  Front Mol Biosci       Date:  2021-05-17
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