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Clustering Protein Binding Pockets and Identifying Potential Drug Interactions: A Novel Ligand-Based Featurization Method.

Garrett A StevensonDan KirshnerBrian J BennionYue YangXiaohua ZhangAdam ZemlaMarisa W TorresAidan EpsteinDerek JonesHyojin KimWilliam F Drew BennettSergio E WongJonathan E AllenFelice C Lightstone
Published in: Journal of chemical information and modeling (2023)
Protein-ligand interactions are essential to drug discovery and drug development efforts. Desirable on-target or multitarget interactions are the first step in finding an effective therapeutic, while undesirable off-target interactions are the first step in assessing safety. In this work, we introduce a novel ligand-based featurization and mapping of human protein pockets to identify closely related protein targets and to project novel drugs into a hybrid protein-ligand feature space to identify their likely protein interactions. Using structure-based template matches from PDB, protein pockets are featured by the ligands that bind to their best co-complex template matches. The simplicity and interpretability of this approach provide a granular characterization of the human proteome at the protein-pocket level instead of the traditional protein-level characterization by family, function, or pathway. We demonstrate the power of this featurization method by clustering a subset of the human proteome and evaluating the predicted cluster associations of over 7000 compounds.
Keyphrases
  • protein protein
  • amino acid
  • binding protein
  • drug discovery
  • single cell
  • small molecule
  • induced pluripotent stem cells
  • deep learning
  • human health
  • neural network