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SynergyMiner : find better drug combinations to treat cancer
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SynergyMiner : find better drug combinations to treat cancer Li Wang
From Mono therapy to pairwise combination Drug target genes Genetic context
From Mono therapy to pairwise combination Drug target genes 85 cell lines, 119 drugs 0.6M testable conditions, 0.3% tested Genetic context
Integrating in vitro and in silico data sources Systematic Drug screen Drug target gene network Cell line genetics IC50, IC50, % of cell killed, % of cell killed, Max conc., etc. Max conc., etc. Gene expression Gene expression (17,000 genes) (17,000 genes) 77 signaling pathways 77 signaling pathways 88,996 88,996 protein protein-‐ -‐protein interactions interactions DNA mutations DNA mutations (75,000 IDs) (75,000 IDs) protein
Synergy: Combined effect > Σ individual effects Gene Network Genetic Data Synergy Scores Top 20% Positive Negative Graph-‐based Feature Engineering Univariate Feature Selection Mono Therapy Binary Classification
Model performance and feature analysis Feature Importance Drug Screen Gene Network Gene Expression Gene Pathway 4-‐fold CV DNA Mutation Tissue of Origin 0 0.005 0.01 0.015 0.02
About me: About me: Li Wang Li Wang • PhD in Molecular Biology • M.S in Applied Math