Data-Driven Prediction of Drug Effects and Interactions
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TL;DR: Better than tarot cards or crystal balls, the authors show that intricate analyses of observational clinical data can improve physicians’ ability to predict the future—at least with respect to as yet uncharacterized adverse drug effects and interactions.
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Abstract: Adverse drug events remain a leading cause of morbidity and mortality around the world. Many adverse events are not detected during clinical trials before a drug receives approval for use in the clinic. Fortunately, as part of postmarketing surveillance, regulatory agencies and other institutions maintain large collections of adverse event reports, and these databases present an opportunity to study drug effects from patient population data. However, confounding factors such as concomitant medications, patient demographics, patient medical histories, and reasons for prescribing a drug often are uncharacterized in spontaneous reporting systems, and these omissions can limit the use of quantitative signal detection methods used in the analysis of such data. Here, we present an adaptive data-driven approach for correcting these factors in cases for which the covariates are unknown or unmeasured and combine this approach with existing methods to improve analyses of drug effects using three test data sets. We also present a comprehensive database of drug effects (Offsides) and a database of drug-drug interaction side effects (Twosides). To demonstrate the biological use of these new resources, we used them to identify drug targets, predict drug indications, and discover drug class interactions. We then corroborated 47 ( P
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Multi-Attribute Discriminative Representation Learning for Prediction of Adverse Drug-Drug Interaction.
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References
Incidence of Adverse Drug Events and Potential Adverse Drug Events: Implications for Prevention
David W. Bates,D J Cullen,Nan M. Laird,Laura A. Petersen,Small Sd,Servi D,G Laffel,Bobbie Jean Sweitzer,Shea Bf,Hallisey R +9 more
TL;DR: Adverse drug events were common and often preventable; serious ADEs were more likely to be preventable and prevention strategies should target both stages of the drug delivery process.
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Adverse drug events in hospitalized patients : Excess length of stay, extra costs, and attributable mortality.
TL;DR: The attributable lengths of stay and costs of hospitalization for ADEs are substantial and an ADE is associated with a significantly prolonged length of stay, increased economic burden, and an almost 2-fold increased risk of death.
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Drug Target Identification Using Side-Effect Similarity
Monica Campillos,Michael Kuhn,Anne-Claude Gavin,Lars Juhl Jensen,Lars Juhl Jensen,Peer Bork,Peer Bork +6 more
TL;DR: Applied to 746 marketed drugs, a network of 1018 side effect–driven drug-drug relations became apparent, 261 of which are formed by chemically dissimilar drugs from different therapeutic indications, hinting at new uses of marketed drugs.
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A side effect resource to capture phenotypic effects of drugs
TL;DR: A public, computer‐readable side effect resource (SIDER) that connects 888 drugs to 1450 side effect terms and contains information on frequency in patients for one‐third of the drug–side effect pairs is developed.
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Comparison of Logistic Regression versus Propensity Score When the Number of Events Is Low and There Are Multiple Confounders
TL;DR: Overall, the propensity score exhibited more empirical power than logistic regression, which is a good alternative to control for imbalances when there are seven or fewer events per confounder; however, empirical power could range from 35% to 60%.
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