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Improving antibody language models with native pairing

Sarah M. Burbach, Bryan Briney

2024Patterns46 citationsDOIOpen Access PDF

Abstract

natively paired human antibody sequences offers a unique opportunity to evaluate how antibody language models are improved by training with native pairs. We trained three baseline antibody language models (BALM), using natively paired (BALM-paired), randomly-paired (BALM-shuffled), or unpaired (BALM-unpaired) sequences from this dataset. To address the paucity of paired sequences, we additionally fine-tuned ESM (evolutionary scale modeling)-2 with natively paired antibody sequences (ft-ESM). We provide evidence that training with native pairs allows the model to learn immunologically relevant features that span the light and heavy chains, which cannot be simulated by training with random pairs. We additionally show that training with native pairs improves model performance on a variety of metrics, including the ability of the model to classify antibodies by pathogen specificity.

Topics & Concepts

PairingAntibodyComputer scienceComputational biologyBiologyPhysicsImmunologySuperconductivityQuantum mechanicsMonoclonal and Polyclonal Antibodies ResearchGlycosylation and Glycoproteins Researchvaccines and immunoinformatics approaches
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