RECOVER identifies synergistic drug combinations in vitro through sequential model optimization

Cell Rep Methods. 2023 Oct 23;3(10):100599. doi: 10.1016/j.crmeth.2023.100599. Epub 2023 Oct 4.

Abstract

For large libraries of small molecules, exhaustive combinatorial chemical screens become infeasible to perform when considering a range of disease models, assay conditions, and dose ranges. Deep learning models have achieved state-of-the-art results in silico for the prediction of synergy scores. However, databases of drug combinations are biased toward synergistic agents and results do not generalize out of distribution. During 5 rounds of experimentation, we employ sequential model optimization with a deep learning model to select drug combinations increasingly enriched for synergism and active against a cancer cell line-evaluating only ∼5% of the total search space. Moreover, we find that learned drug embeddings (using structural information) begin to reflect biological mechanisms. In silico benchmarking suggests search queries are ∼5-10× enriched for highly synergistic drug combinations by using sequential rounds of evaluation when compared with random selection or ∼3× when using a pretrained model.

Keywords: CP: Systems biology; active learning; deep learning; drug combination; drug synergy; in vitro screening; machine learning; oncology; sequential model optimization.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Computational Biology* / methods
  • Drug Combinations
  • Drug Synergism
  • Humans
  • Neoplasms* / drug therapy

Substances

  • Drug Combinations