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On TCR binding predictors failing to generalize to unseen peptides

Filippo Grazioli, Anja Mösch, Pierre Machart, Kai Li, Israa Alqassem, Timothy J. O’Donnell, Martin Renqiang Min

2022Frontiers in Immunology89 citationsDOIOpen Access PDF

Abstract

Several recent studies investigate TCR-peptide/-pMHC binding prediction using machine learning or deep learning approaches. Many of these methods achieve impressive results on test sets, which include peptide sequences that are also included in the training set. In this work, we investigate how state-of-the-art deep learning models for TCR-peptide/-pMHC binding prediction generalize to unseen peptides. We create a dataset including positive samples from IEDB, VDJdb, McPAS-TCR, and the MIRA set, as well as negative samples from both randomization and 10X Genomics assays. We name this collection of samples TChard . We propose the hard split , a simple heuristic for training/test split, which ensures that test samples exclusively present peptides that do not belong to the training set. We investigate the effect of different training/test splitting techniques on the models’ test performance, as well as the effect of training and testing the models using mismatched negative samples generated randomly, in addition to the negative samples derived from assays. Our results show that modern deep learning methods fail to generalize to unseen peptides. We provide an explanation why this happens and verify our hypothesis on the TChard dataset. We then conclude that robust prediction of TCR recognition is still far for being solved.

Topics & Concepts

Test setTraining setArtificial intelligenceSet (abstract data type)Computer scienceT-cell receptorMachine learningHeuristicComputational biologyDeep learningBiologyT cellGeneticsImmune systemProgramming languagevaccines and immunoinformatics approachesRNA and protein synthesis mechanismsMonoclonal and Polyclonal Antibodies Research
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