DrugCLIP: Contrasive Protein-Molecule Representation Learning for Virtual Screening

  • Bowen Gao ,
  • Bo Qiang ,
  • Haichuan Tan ,
  • Yinjun Jia ,
  • Minsi Ren ,
  • Minsi Lu ,
  • Jingjing Liu ,
  • Wei-Ying Ma ,
  • Yanyan Lan

NeurIPS 2023 |

Virtual screening, which identifies potential drugs from vast compound databases to bind with a particular protein pocket, is a critical step in AI-assisted drug discovery. Traditional docking methods are highly time-consuming, and can only work with a restricted search library in real-life applications. Recent supervised learning approaches using scoring functions for binding-affinity prediction, although promising, have not yet surpassed docking methods due to their strong dependency on limited data with reliable binding-affinity labels. In this paper, we propose a novel contrastive learning framework, DrugCLIP, by reformulating virtual screening as a dense retrieval task and employing contrastive learning to align representations of binding protein pockets and molecules from a large quantity of pairwise data without explicit binding-affinity scores. We also introduce a biological-knowledge inspired data augmentation strategy to learn better protein-molecule representations. Extensive experiments show that DrugCLIP significantly outperforms traditional docking and supervised learning methods on diverse virtual screening benchmarks with highly reduced computation time, especially in zero-shot setting.