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T cell receptor binding prediction: A machine learning revolution

Authors :
Weber, Anna
Pélissier, Aurélien
Martínez, María Rodríguez
Source :
ImmunoInformatics, 2024
Publication Year :
2023

Abstract

Recent advancements in immune sequencing and experimental techniques are generating extensive T cell receptor (TCR) repertoire data, enabling the development of models to predict TCR binding specificity. Despite the computational challenges due to the vast diversity of TCRs and epitopes, significant progress has been made. This paper discusses the evolution of the computational models developed for this task, with a focus on machine learning efforts, including the early unsupervised clustering approaches, supervised models, and the more recent applications of Protein Language Models (PLMs). We critically assess the most prominent models in each category, and discuss recurrent challenges, such as the lack of generalization to new epitopes, dataset biases, and biases in the validation design of the models. Furthermore, our paper discusses the transformative role of transformer-based protein models in bioinformatics. These models, pretrained on extensive collections of unlabeled protein sequences, can convert amino acid sequences into vectorized embeddings that capture important biological properties. We discuss recent attempts to leverage PLMs to deliver very competitive performances in TCR-related tasks. Finally, we address the pressing need for improved interpretability in these often opaque models, proposing strategies to amplify their impact in the field.

Details

Database :
arXiv
Journal :
ImmunoInformatics, 2024
Publication Type :
Report
Accession number :
edsarx.2312.16594
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.immuno.2024.100040