1. Systematic chemical-genetic and chemical-chemical interaction datasets for prediction of compound synergism
- Author
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Sonam Dolma, Emma Griffiths, Marcia Roy, Mike Tyers, Nick Jarvik, Jan Wildenhain, R. L. White, Michaela Spitzer, David S. Bellows, and Gerard D. Wright
- Subjects
0301 basic medicine ,Statistics and Probability ,Data Descriptor ,Antifungal Agents ,Computer science ,High-throughput screening ,Genes, Fungal ,Saccharomyces cerevisiae ,Computational biology ,Chemical interaction ,Library and Information Sciences ,Chemical genetics ,Education ,Structure-Activity Relationship ,03 medical and health sciences ,0302 clinical medicine ,Drug Discovery ,Structure–activity relationship ,Drug discovery ,Small molecules ,Computational Biology ,Drug Synergism ,Computer Science Applications ,Metadata ,Networks and systems biology ,030104 developmental biology ,Screening ,Benchmark (computing) ,Pairwise comparison ,Statistics, Probability and Uncertainty ,030217 neurology & neurosurgery ,Information Systems - Abstract
The network structure of biological systems suggests that effective therapeutic intervention may require combinations of agents that act synergistically. However, a dearth of systematic chemical combination datasets have limited the development of predictive algorithms for chemical synergism. Here, we report two large datasets of linked chemical-genetic and chemical-chemical interactions in the budding yeast Saccharomyces cerevisiae. We screened 5,518 unique compounds against 242 diverse yeast gene deletion strains to generate an extended chemical-genetic matrix (CGM) of 492,126 chemical-gene interaction measurements. This CGM dataset contained 1,434 genotype-specific inhibitors, termed cryptagens. We selected 128 structurally diverse cryptagens and tested all pairwise combinations to generate a benchmark dataset of 8,128 pairwise chemical-chemical interaction tests for synergy prediction, termed the cryptagen matrix (CM). An accompanying database resource called ChemGRID was developed to enable analysis, visualisation and downloads of all data. The CGM and CM datasets will facilitate the benchmarking of computational approaches for synergy prediction, as well as chemical structure-activity relationship models for anti-fungal drug discovery. Machine-accessible metadata file describing the reported data (ISA-Tab format)
- Published
- 2016
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