scholarly journals TCR-BERT: learning the grammar of T-cell receptors for flexible antigen- binding analyses

2021 ◽  
Author(s):  
Kevin E. Wu ◽  
Kathryn E. Yost ◽  
Bence Daniel ◽  
Julia A Belk ◽  
Yu Xia ◽  
...  

The T-cell receptor (TCR) allows T-cells to recognize and respond to antigens presented by infected and diseased cells. However, due to TCRs' staggering diversity and the complex binding dynamics underlying TCR antigen recognition, it is challenging to predict which antigens a given TCR may bind to. Here, we present TCR-BERT, a deep learning model that applies self-supervised transfer learning to this problem. TCR-BERT leverages unlabeled TCR sequences to learn a general, versatile representation of TCR sequences, enabling numerous downstream applications. We demonstrate that TCR-BERT can be used to build state-of-the-art TCR-antigen binding predictors with improved generalizability compared to prior methods. TCR-BERT simultaneously facilitates clustering sequences likely to share antigen specificities. It also facilitates computational approaches to challenging, unsolved problems such as designing novel TCR sequences with engineered binding affinities. Importantly, TCR-BERT enables all these advances by focusing on residues with known biological significance. TCR-BERT can be a useful tool for T-cell scientists, enabling greater understanding and more diverse applications, and provides a conceptual framework for leveraging unlabeled data to improve machine learning on biological sequences.

1993 ◽  
Vol 90 (23) ◽  
pp. 11396-11400 ◽  
Author(s):  
S Moriwaki ◽  
B S Korn ◽  
Y Ichikawa ◽  
L van Kaer ◽  
S Tonegawa

We have previously identified a self-reactive gamma delta T-cell clone (KN6) specific for the H-2T region gene product T22b. Now we have investigated by an in vitro mutagenesis analysis of the T22b gene the possibility that the interaction between the KN6 gamma delta T-cell receptor and T22b involves a peptide. The results demonstrate that mutations at the floor of the putative antigen-binding groove of T22b affect recognition by the gamma delta T-cell receptor. Furthermore, we have shown that KN6 cells react with cells that are deficient in the class I peptide transporter TAP1/TAP2. These results suggest that peptide is involved in the interaction of the KN6 T-cell receptor with T22 and that loading of T22 with the putative peptide is TAP1/TAP2-independent.


Author(s):  
Kurt H. Piepenbrink ◽  
Brian E. Gloor ◽  
Kathryn M. Armstrong ◽  
Brian M. Baker

2020 ◽  
Vol 38 (15_suppl) ◽  
pp. e15260-e15260
Author(s):  
Jared L Ostmeyer ◽  
Lindsay G Cowell ◽  
Scott Christley

e15260 Background: Immune repertoire deep sequencing allows profiling T-cell populations and enables novel approaches to diagnose and prognosticate cancer by identifying T-cell receptor sequence patterns associated with clinical phenotypes and outcomes. Methods: Our goal is to develop a method to diagnose and prognosticate cancer using sequenced T-cell receptors. To determine how to profile the specificity of a T-cell receptor, we analyze 3D X-ray crystallographic structures of T-cell receptors bound to antigen. We observe a contiguous strip typically 4 amino acid residues in length from the complimentary determining region 3 (CDR3) lying in direct contact with the antigen. Based on this observation, we extract 4 residue long snippets from every receptor’s CDR3 and represent each snippet using biochemical features encoded by its amino acid sequence. The biochemical features are combined with information about the abundance of the snippet or the receptor and scored using a machine learning based approach. Each predictive model is fitted and validated under the requirement that at least one positively labelled snippet appears per tumor and no positively labelled snippets appear in healthy tissue. Results: Using a patient-holdout cross-validation, we fit predictive models to distinguish: 1. colorectal tumors from healthy tissue matched controls with 93% accuracy, 2. breast tumors from healthy tissue matched controls with 94% accuracy, 3. ovarian tumors from non-cancer patient ovarian tissue with 95% accuracy (80% accuracy on a blinded follow-up cohort) 4. and regression of preneoplastic cervical lesions over 1 year in advance with 96% accuracy. Conclusions: Immune repertoires can be used to diagnose and prognosticate cancer.


2003 ◽  
Vol 121 (3) ◽  
pp. 496-501 ◽  
Author(s):  
Corinne Moulon ◽  
Yoanna Choleva ◽  
Hermann-Josef Thierse ◽  
Doris Wild ◽  
Hans Ulrich Weltzien

1997 ◽  
Vol 113 (1-3) ◽  
pp. 170-172 ◽  
Author(s):  
Slawomir Sowka ◽  
Roswitha Friedl-Hajek ◽  
Ute Siemann ◽  
Christof Ebner ◽  
Otto Scheiner ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document