A robust deep learning workflow to predict CD8+T-cell epitopes

被引:7
作者
Lee, Chloe H. [1 ,2 ]
Huh, Jaesung [3 ]
Buckley, Paul R. [1 ,2 ]
Jang, Myeongjun [4 ]
Pinho, Mariana Pereira [1 ]
Fernandes, Ricardo A. [5 ]
Antanaviciute, Agne [1 ,2 ]
Simmons, Alison [1 ,6 ]
Koohy, Hashem [1 ,2 ,7 ]
机构
[1] Univ Oxford, John Radcliffe Hosp, Med Res Council Weatherall Inst Mol Med WIMM, MRC Human Immunol Unit, Oxford OX3 9DS, England
[2] Univ Oxford, John Radcliffe Hosp, MRC Weatherall Inst Mol Med, MRC WIMM Ctr Computat Biol, Oxford OX3 9DS, England
[3] Univ Oxford, Dept Engn Sci, Visual Geometry Grp, Oxford OX2 6NN, England
[4] Univ Oxford, Dept Comp Sci, Intelligent Syst Lab, Oxford OX1 3QG, England
[5] Univ Oxford, Oxford Inst COI, Chinese Acad Med Sci CAMS, Oxford OX3 7BN, England
[6] John Radcliffe Hosp, Translat Gastroenterol Unit, Oxford OX3 9DS, England
[7] Alan Turing Inst, Hlth & Med, London, England
基金
英国医学研究理事会;
关键词
Immunogenicity; CD8+T-cell epitopes; Deep learning; Transfer learning; Computational immunology; Epitope prediction; Self-antigen tolerance; MHC binding; Thymic selection; Neoepitope identification; Vaccine candidates; T-CELL RESPONSES; NEGATIVE SELECTION; SPECIFICITY; PEPTIDES; IDENTIFICATION; REPERTOIRE; REVEALS;
D O I
10.1186/s13073-023-01225-z
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Background T-cells play a crucial role in the adaptive immune system by triggering responses against cancer cells and pathogens, while maintaining tolerance against self-antigens, which has sparked interest in the development of various T-cell-focused immunotherapies. However, the identification of antigens recognised by T-cells is low-throughput and laborious. To overcome some of these limitations, computational methods for predicting CD8 + T-cell epitopes have emerged. Despite recent developments, most immunogenicity algorithms struggle to learn features of peptide immunogenicity from small datasets, suffer from HLA bias and are unable to reliably predict pathology-specific CD8 + T-cell epitopes. Methods We developed TRAP (T-cell recognition potential of HLA-I presented peptides), a robust deep learning workflow for predicting CD8 + T-cell epitopes from MHC-I presented pathogenic and self-peptides. TRAP uses transfer learning, deep learning architecture and MHC binding information to make context-specific predictions of CD8 + T-cell epitopes. TRAP also detects low-confidence predictions for peptides that differ significantly from those in the training datasets to abstain from making incorrect predictions. To estimate the immunogenicity of pathogenic peptides with low-confidence predictions, we further developed a novel metric, RSAT (relative similarity to autoantigens and tumour-associated antigens), as a complementary to 'dissimilarity to self' from cancer studies. Results TRAP was used to identify epitopes from glioblastoma patients as well as SARS-CoV-2 peptides, and it outperformed other algorithms in both cancer and pathogenic settings. TRAP was especially effective at extracting immunogenicity-associated properties from restricted data of emerging pathogens and translating them onto related species, as well as minimising the loss of likely epitopes in imbalanced datasets. We also demonstrated that the novel metric termed RSAT was able to estimate immunogenic of pathogenic peptides of various lengths and species. TRAP implementation is available at: https://github.com/ChloeHJ/TRAP. Conclusions This study presents a novel computational workflow for accurately predicting CD8 + T-cell epitopes to foster a better understanding of antigen-specific T-cell response and the development of effective clinical therapeutics.
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页数:24
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