Abstract

Identification of Drug-Drug Interactions (DDIs) is a significant challenge during drug development and clinical practice. DDIs are responsible for many adverse drug effects (ADEs), decreasing patient quality of life and causing higher care expenses. DDIs are not systematically evaluated in pre-clinical or clinical trials and so the FDA U. S. Food and Drug Administration relies on post-marketing surveillance to monitor patient safety. However, existing pharmacovigilance algorithms show poor performance for detecting DDIs exhibiting prohibitively high false positive rates. Alternatively, methods based on chemical structure and pharmacological similarity have shown promise in adverse drug event detection. We hypothesize that the use of chemical biology data in a post hoc analysis of pharmacovigilance results will significantly improve the detection of dangerous interactions. Our model integrates a reference standard of DDIs known to cause arrhythmias with drug similarity data. To compare similarity between drugs we used chemical structure (both 2D and 3D molecular structure), adverse drug side effects, chemogenomic targets, drug indication classes, and known drug-drug interactions. We evaluated the method on external reference standards. Our results showed an enhancement of sensitivity, specificity and precision in different top positions with the use of similarity measures to rank the candidates extracted from pharmacovigilance data. For the top 100 DDI candidates, similarity-based modeling yielded close to twofold precision enhancement compared to the proportional reporting ratio (PRR). Moreover, the method helps in the DDI decision making through the identification of the DDI in the reference standard that generated the candidate.

Highlights

  • Medication co-administration can alter the pharmacokinetic or pharmacodynamic profiles of the drugs being prescribed

  • We ranked the subset of Drug-Drug Interactions (DDIs) candidates obtaining an area under the ROC curve of 0.62 and 0.67 using proportional reporting ratio (PRR) and p-values as scorings

  • We applied similarity-based modeling to the candidates selected through pharmacovigilance data mining of DDIs that can cause the adverse drug effects (ADEs) arrhythmia

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Summary

Introduction

Medication co-administration can alter the pharmacokinetic or pharmacodynamic profiles of the drugs being prescribed. Drug-Drug Interactions (DDIs) occur when the effect of one drug is altered by the co-administration of another drug. This change in the effect can lead to the development of clinically important adverse events. A significant amount of the adverse effects caused by drugs in the patients are due to the administration of multiple medications [1,2,3]. As an example of DDIs, some macrolides, such as erythromycin, inhibit the metabolism and the elimination of warfarin [4]. This fact could cause an increased effect of warfarin with the consequent risk due to its anticoagulant properties. Another example is the combination of simvastatin and posaconazole, associated with a risk of myopathy and rhabdomyolysis due to increased statin plasma concentrations [5]

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