4.5 Article

Analysis of pharmacology data and the prediction of adverse drug reactions and off-target effects from chemical structure

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CHEMMEDCHEM
卷 2, 期 6, 页码 861-873

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WILEY-V C H VERLAG GMBH
DOI: 10.1002/cmdc.200700026

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Preclinical Safety Pharmacology (PSP) attempts to anticipate adverse drug reactions (ADRs) during early phases of drug discovery by testing compounds in simple, in vitro binding assays (that is, preclinical profiling). The selection of PSP targets is based largely on cl. rcumstantial evidence of their contribution to known clinical ADRs, inferred from findings in clinical trials, animal experiments, and molecular studies going back more than forty years. In this work we explore PSP chemical space and its relevance for the prediction of adverse drug reactions. Firstly, in silica (computotional) Boyesian models for 70 PSP-related targets were built, which are able to detect 93 % of the ligands binding at IC50 <= 10 At m at an overall correct classification rate of about 94 %. Secondly, employing the World Drug Index (WDI), a model for adverse drug reactions was built directly based on normalized side-effect annotations in the WDI, which does not require any underlying functional knowledge. This is, to our knowledge, the first attempt to predict adverse drug reactions across hundreds of categories from chemical structure alone. On average 90% of the adverse drug reactions observed with known, clinically used compounds were detected, an overall correct classification rate of 92%. Drugs withdrawn from the market (Rapacuronium, Suprofen) were tested in the model and their predicted ADRs olign well with known ADRs. The analysis was repeated for ocetylsolicylic acid and Benperidol which ore still on the market. Importantly, features of the models ore interpretable and back-projectable to chemical structure, raising the possibility of rationally engineering out adverse effects. By combining PSP and ADR models new hypotheses linking targets and adverse effects can be proposed and examples for the opioidy and the muscarinic M2 receptors, as well as for cyclooxygenose-7 are presented. It is hoped that the generation of predictive models for adverse drug reactions is able to help support early SAR to accelerate drug discovery and decrease late stage attrition in drug discovery projects. In addition, models such as the ones presented here can be used for compound profiling in all development stages.

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