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A functionally validated TCR-pMHC database for TCR specificity model development.

Marius Messemaker ,
Bjørn P Y Kwee ,
Živa Moravec ,
Daniel Álvarez-Salmoral ,
Jos Urbanus ,
Sam de Paauw ,
Jeroen Geerligs ,
Rhianne Voogd ,
Ben Morris ,
Aurélie Guislain ,
Maike Mußmann ,
Yaël Winkler ,
Maxime Steinmetz ,
Matyas Iras ,
Eric Marcus ,
Jonas Teuwen ,
Anastassis Perrakis ,
Roderick L Beijersbergen ,
Wouter Scheper ,
Ton N Schumacher

Abstract

Accurate prediction of TCR specificity forms a holy grail in immunology and large language models and computational structure predictions provide a path to achieve this. Importantly, current TCR-pMHC prediction models have been trained and evaluated using historical data of unknown quality. Here, we develop and utilize a high-throughput synthetic platform for TCR assembly and evaluation to assess a large fraction of VDJdb-deposited TCR-pMHC entries using a standardized readout of TCR function. Strikingly, this analysis demonstrates that claimed TCR reactivity is only confirmed for 50% of evaluated entries. Intriguingly, the use of TCRbridge to analyze AlphaFold3 confidence metrics reveals a substantial performance in distinguishing functionally validating and non-validating TCRs even though AlphaFold3 was not trained on this task, demonstrating the utility of the validated VDJdb (TCRvdb) database that we generated. We provide TCRvdb as a resource to the community to support training and evaluation of improved predictive TCR specificity models.

More about this publication

bioRxiv : the preprint server for biology

Publication date 12-05-2025

Full text links

Publisher website (DOI) 10.1101/2025.04.28.651095
Europe PubMed Central 40463065
Pubmed 40463065

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