Structure-Regularized Interpretable TCR-Epitope Prediction
Abstract
T cell receptor (TCR)-epitope binding prediction is essential for understanding adaptive immunity and developing immunotherapies. Existing sequence- and structure-based models often generalize poorly to unseen epitopes and provide limited interpretability. Furthermore, the impact of generated structures on model learning remains unclear. We present TCR-SRIM, a structure-regularized interpretable-by-design model that combines protein language model embeddings with interpretable contact prototypes to capture residue-level TCR-epitope interactions. TCR-SRIM achieves state-of-the-art predictive performance and improved interpretation quality on the TCR-XAI benchmark. Using its inherent interpretability, we further evaluate the effect of generated structures on model learning. While structures predicted by AlphaFold3, TCRModel2, and tFold-TCR yield competitive performance, they lead to less accurate interaction patterns and reduced binding-site diversity than experimentally-resolved structures. Our results highlight limitations of current structure prediction models for TCR-epitope learning and demonstrate the value of interpretable-by-design models for studying generated biological structures.
Cite
@article{arxiv.2606.30902,
title = {Structure-Regularized Interpretable TCR-Epitope Prediction},
author = {Jiarui Li and Zixiang Yin and Yunbei Zhang and Janet Wang and Samuel J. Landry and Zhengming Ding and Ramgopal R. Mettu},
journal= {arXiv preprint arXiv:2606.30902},
year = {2026}
}