Daniel Rose, Oliver Wieder, Thomas Seidel, Thierry Langer
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PharmacoMatch: Efficient 3D Pharmacophore Screening through Neural Subgraph Matching
The increasing size of screening libraries poses a significant challenge for
the development of virtual screening methods for drug discovery, necessitating
a re-evaluation of traditional approaches in the era of big data. Although 3D
pharmacophore screening remains a prevalent technique, its application to very
large datasets is limited by the computational cost associated with matching
query pharmacophores to database ligands. In this study, we introduce
PharmacoMatch, a novel contrastive learning approach based on neural subgraph
matching. Our method reinterprets pharmacophore screening as an approximate
subgraph matching problem and enables efficient querying of conformational
databases by encoding query-target relationships in the embedding space. We
conduct comprehensive evaluations of the learned representations and benchmark
our method on virtual screening datasets in a zero-shot setting. Our findings
demonstrate significantly shorter runtimes for pharmacophore matching, offering
a promising speed-up for screening very large datasets.