Large-scale exploration and analysis of drug combinations

Peng Li(Hong Kong Baptist University), Chao Huang(Hong Kong Baptist University), Yingxue Fu(Hong Kong Baptist University), Jinan Wang(Hong Kong Baptist University), Ziyin Wu(Hong Kong Baptist University), Jinlong Ru(Hong Kong Baptist University), Chunli Zheng(Hong Kong Baptist University), Zihu Guo(Hong Kong Baptist University), Xuetong Chen(Hong Kong Baptist University), Wei Zhou(Hong Kong Baptist University), Wenjuan Zhang(Hong Kong Baptist University), Yan Li(Hong Kong Baptist University), Jianxin Chen(Hong Kong Baptist University), Aiping Lü(Hong Kong Baptist University), Yonghua Wang(Hong Kong Baptist University)
Bioinformatics
February 8, 2015
Cited by 211Open Access
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Abstract

MOTIVATION: Drug combinations are a promising strategy for combating complex diseases by improving the efficacy and reducing corresponding side effects. Currently, a widely studied problem in pharmacology is to predict effective drug combinations, either through empirically screening in clinic or pure experimental trials. However, the large-scale prediction of drug combination by a systems method is rarely considered. RESULTS: We report a systems pharmacology framework to predict drug combinations (PreDCs) on a computational model, termed probability ensemble approach (PEA), for analysis of both the efficacy and adverse effects of drug combinations. First, a Bayesian network integrating with a similarity algorithm is developed to model the combinations from drug molecular and pharmacological phenotypes, and the predictions are then assessed with both clinical efficacy and adverse effects. It is illustrated that PEA can predict the combination efficacy of drugs spanning different therapeutic classes with high specificity and sensitivity (AUC = 0.90), which was further validated by independent data or new experimental assays. PEA also evaluates the adverse effects (AUC = 0.95) quantitatively and detects the therapeutic indications for drug combinations. Finally, the PreDC database includes 1571 known and 3269 predicted optimal combinations as well as their potential side effects and therapeutic indications. AVAILABILITY AND IMPLEMENTATION: The PreDC database is available at http://sm.nwsuaf.edu.cn/lsp/predc.php.


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