Data-driven prediction of adverse drug reactions induced by drug-drug interactions.
Ruifeng LiuMohamed Diwan M AbdulHameedKamal KumarXueping YuAnders WallqvistJaques ReifmanPublished in: BMC pharmacology & toxicology (2017)
Almost all information on DDI-induced ADRs is generated after drug approval. This situation poses significant health risks for vulnerable patient populations with comorbidities. To help mitigate the risks, we developed a robust probabilistic approach to prospectively predict DDI-induced ADRs. Based on this approach, we developed prediction models for 1,096 ADRs and used them to predict the propensity of all pairwise combinations of nearly 800 drugs to be associated with these ADRs via DDIs. We made the predictions publicly available via internet access.