Litcius/Paper detail

TULIP: A transformer-based unsupervised language model for interacting peptides and T cell receptors that generalizes to unseen epitopes

Barthelemy Meynard-Piganeau, Christoph Feinauer, Martin Weigt, Aleksandra M. Walczak, Thierry Mora

2024Proceedings of the National Academy of Sciences56 citationsDOIOpen Access PDF

Abstract

The accurate prediction of binding between T cell receptors (TCR) and their cognate epitopes is key to understanding the adaptive immune response and developing immunotherapies. Current methods face two significant limitations: the shortage of comprehensive high-quality data and the bias introduced by the selection of the negative training data commonly used in the supervised learning approaches. We propose a method, Transformer-based Unsupervised Language model for Interacting Peptides and T cell receptors (TULIP), that addresses both limitations by leveraging incomplete data and unsupervised learning and using the transformer architecture of language models. Our model is flexible and integrates all possible data sources, regardless of their quality or completeness. We demonstrate the existence of a bias introduced by the sampling procedure used in previous supervised approaches, emphasizing the need for an unsupervised approach. TULIP recognizes the specific TCRs binding an epitope, performing well on unseen epitopes. Our model outperforms state-of-the-art models and offers a promising direction for the development of more accurate TCR epitope recognition models.

Topics & Concepts

EpitopeComputer scienceArtificial intelligenceT-cell receptorTransformerUnsupervised learningLanguage modelEconomic shortageMachine learningComputational biologyT cellBiologyImmune systemAntigenImmunologyPhysicsQuantum mechanicsPhilosophyVoltageLinguisticsGovernment (linguistics)vaccines and immunoinformatics approachesMonoclonal and Polyclonal Antibodies ResearchImmunotherapy and Immune Responses