Mapping the space of protein binding sites with sequence-based protein language models
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Motivation
Binding sites are the key interfaces that determine a protein’s biological activity, and therefore common targets for therapeutic intervention. Techniques that help us detect, compare, and contextualize binding sites are hence of immense interest to drug discovery.
Results
Here, we present an approach that integrates protein language models with a 3D tessellation technique to derive rich and versatile representations of binding sites that combine functional, structural, and evolutionary information with unprecedented detail. We demonstrate that the associated similarity metrics induce meaningful pocket clusterings by balancing local structure against global sequence effects. The resulting embeddings are shown to simplify a variety of downstream tasks: they help organize the ‘pocketome’ in a way that efficiently contextualizes new binding sites, construct performant druggability models, and define challenging train-test splits for believable benchmarking of pocket-centric machine-learning models.
Availability and implementation
A Python package that implements the EPoCS method is freely available at https://github.com/tugceoruc/epocs.