Drug Side-Effect Prediction Based on the Integration of Chemical and Biological Spaces
journal contributionposted on 21.12.2012, 00:00 by Yoshihiro Yamanishi, Edouard Pauwels, Masaaki Kotera
Drug side-effects, or adverse drug reactions, have become a major public health concern and remain one of the main causes of drug failure and of drug withdrawal once they have reached the market. Therefore, the identification of potential severe side-effects is a challenging issue. In this paper, we develop a new method to predict potential side-effect profiles of drug candidate molecules based on their chemical structures and target protein information on a large scale. We propose several extensions of kernel regression model for multiple responses to deal with heterogeneous data sources. The originality lies in the integration of the chemical space of drug chemical structures and the biological space of drug target proteins in a unified framework. As a result, we demonstrate the usefulness of the proposed method on the simultaneous prediction of 969 side-effects for approved drugs from their chemical substructure and target protein profiles and show that the prediction accuracy consistently improves owing to the proposed regression model and integration of chemical and biological information. We also conduct a comprehensive side-effect prediction for uncharacterized drug molecules stored in DrugBank and confirm interesting predictions using independent information sources. The proposed method is expected to be useful at many stages of the drug development process.
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information sourcesdrug failurehealth concerndrug reactionschemical spacechemical structuresdrug withdrawaltarget protein informationdata sourcesprediction accuracykernel regression modeluncharacterized drug moleculesregression modeldrug chemical structuresdrug development processchemical substructuredrug candidate moleculesdrug target proteinstarget protein profiles