Predicting Adverse Drug-Drug Interactions with Neural Embedding of Semantic Predications

Author:

Burkhardt Hannah A.ORCID,Subramanian DevikaORCID,Mower JustinORCID,Cohen TrevorORCID

Abstract

AbstractThe identification of drug-drug interactions (DDIs) is important for patient safety; yet, compared to other pharmacovigilance work, a limited amount of research has been conducted in this space. Recent work has successfully applied a method of deriving distributed vector representations from structured biomedical knowledge, known as Embedding of Semantic Predications (ESP), to the problem of predicting individual drug side effects. In the current paper we extend this work by applying ESP to the problem of predicting polypharmacy side-effects for particular drug combinations, building on a recent reconceptualization of this problem as a network of drug nodes connected by side effect edges. We evaluate ESP embeddings derived from the resulting graph on a side-effect prediction task against a previously reported graph convolutional neural network approach, using the same data and evaluation methods. We demonstrate that ESP models perform better, while being faster to train, more re-usable, and significantly simpler.

Publisher

Cold Spring Harbor Laboratory

Reference35 articles.

1. Informatics confronts drug–drug interactions

2. National Center for Health Statistics. Health, United States, 2017. 2017.

3. Detection of drug-drug interactions through data mining studies using clinical sources, scientific literature and social media;Brief Bioinform,2018

4. U.S. Food and Drug Administration. FDA Adverse Event Reporting System (FAERS) [Internet]. Available from: https://www.fda.gov/Drugs/GuidanceComplianceRegulatoryInformation/Surveillance/AdverseDrugEffects/ucm070093.htm

5. Tatonetti NP , Ye PP , Daneshjou R , Altman RB. Data-driven prediction of drug effects and interactions. Sci Transl Med. 2012 Mar 14;4(125).

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