1. Academic Validation
  2. Large-scale prediction and testing of drug activity on side-effect targets

Large-scale prediction and testing of drug activity on side-effect targets

  • Nature. 2012 Jun 10;486(7403):361-7. doi: 10.1038/nature11159.
Eugen Lounkine 1 Michael J Keiser Steven Whitebread Dmitri Mikhailov Jacques Hamon Jeremy L Jenkins Paul Lavan Eckhard Weber Allison K Doak Serge Côté Brian K Shoichet Laszlo Urban
Affiliations

Affiliation

  • 1 Novartis Institutes for Biomedical Research, Cambridge, Massachusetts 02139, USA.
Abstract

Discovering the unintended 'off-targets' that predict adverse drug reactions is daunting by empirical methods alone. Drugs can act on several protein targets, some of which can be unrelated by conventional molecular metrics, and hundreds of proteins have been implicated in side effects. Here we use a computational strategy to predict the activity of 656 marketed drugs on 73 unintended 'side-effect' targets. Approximately half of the predictions were confirmed, either from proprietary databases unknown to the method or by new experimental assays. Affinities for these new off-targets ranged from 1 nM to 30 μM. To explore relevance, we developed an association metric to prioritize those new off-targets that explained side effects better than any known target of a given drug, creating a drug-target-adverse drug reaction network. Among these new associations was the prediction that the abdominal pain side effect of the synthetic oestrogen chlorotrianisene was mediated through its newly discovered inhibition of the Enzyme cyclooxygenase-1. The clinical relevance of this inhibition was borne out in whole human blood platelet aggregation assays. This approach may have wide application to de-risking toxicological liabilities in drug discovery.

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