open access publication

Preprint, 2024

Harnessing Chemical Space Neural Networks to Systematically Annotate GPCR ligands

Research Square, 10.21203/rs.3.rs-4287546/v1

Contributors

Jensen, Emil Damgaard 0000-0002-8280-0946 [1] Hansson, Frederik Gleerup 0000-0001-7056-5793 [1] Madsen, Niklas Gesmar 0009-0001-4599-4040 [1] Hansen, Lea Gram 0000-0002-8454-312X [2] Jakočiūnas, Tadas 0000-0003-1264-173X [1] Lengger, Bettina 0000-0001-9997-7011 [1] Keasling, Jay D 0000-0003-4170-6088 [3] Jensen, Michael Krogh Krogh 0000-0001-7574-4707 [1] Acevedo-Rocha, Carlos G 0000-0002-5877-2084 [1]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Biomia ApS
  4. [3] Joint BioEnergy Institute
  5. [NORA names: United States; America, North; OECD]

Abstract

Drug-target interaction (DTI) databases comprise millions of manually curated data points, yet there are missed opportunities for repurposing established interaction networks to infer DTIs. To address this gap, we first collected DTIs on 128 unique G protein-coupled receptors across 187K molecules to establish an all-vs-all chemical space network. We next developed a chemical space neural network (CSNN), which operates on the graph structure of chemical space rather than on the graphs of compounds, to infer drug bioactivity classes with up to 98% accuracy. We combined this virtual library screen with a cost-efficient experimental platform to validate our predictions and discovered 14 novel DTIs in the process. Altogether, our platform integrates virtual library screening and experimental validation for fast and efficient coverage of missing DTIs.

Keywords

G protein-coupled receptors, GPCR ligands, K molecules, Space Network, accuracy, all-vs-all, bioactive classes, chemical, chemical space, chemical space networks, class, compounds, data points, database, drug, drug-target interactions, efficient coverage, experimental validation, gap, graph, graph structure, interaction, interaction network, library screening, ligand, manually, network, neural network, novel DTIs, opportunities, point, prediction, process, receptors, screening, space, systematically, unique G-protein coupled receptor, validity, virtual library screening

Data Provider: Digital Science