Litcius/Paper detail

Predicting TCR-Epitope Binding Specificity Using Deep Metric Learning and Multimodal Learning

Alan Luu, Jacob R. Leistico, Timothy J. Miller, Somang Kim, Jun S. Song

2021Genes41 citationsDOIOpen Access PDF

Abstract

Understanding the recognition of specific epitopes by cytotoxic T cells is a central problem in immunology. Although predicting binding between peptides and the class I Major Histocompatibility Complex (MHC) has had success, predicting interactions between T cell receptors (TCRs) and MHC class I-peptide complexes (pMHC) remains elusive. This paper utilizes a convolutional neural network model employing deep metric learning and multimodal learning to perform two critical tasks in TCR-epitope binding prediction: identifying the TCRs that bind a given epitope from a TCR repertoire, and identifying the binding epitope of a given TCR from a list of candidate epitopes. Our model can perform both tasks simultaneously and reveals that inconsistent preprocessing of TCR sequences can confound binding prediction. Applying a neural network interpretation method identifies key amino acid sequence patterns and positions within the TCR, important for binding specificity. Contrary to common assumption, known crystal structures of TCR-pMHC complexes show that the predicted salient amino acid positions are not necessarily the closest to the epitopes, implying that physical proximity may not be a good proxy for importance in determining TCR-epitope specificity. Our work thus provides an insight into the learned predictive features of TCR-epitope binding specificity and advances the associated classification tasks.

Topics & Concepts

EpitopeT-cell receptorComputational biologyMajor histocompatibility complexBiologyComputer scienceArtificial intelligenceT cellAntigenGeneticsImmune systemvaccines and immunoinformatics approachesImmunotherapy and Immune ResponsesT-cell and B-cell Immunology