Enhancing Drug-Drug Interaction Prediction Using Deep Attention Neural Networks

BioRxiv : the Preprint Server for Biology
S. LiuWen Zhang

Abstract

Drug-drug interactions are one of the main concerns in drug discovery. Accurate prediction of drug-drug interactions plays a key role in increasing the efficiency of drug research and safety when multiple drugs are co-prescribed. With various data sources that describe the relationships and properties between drugs, the comprehensive approach that integrates multiple data sources would be considerably effective in making high-accuracy prediction. In this paper, we propose a Deep Attention Neural Network based Drug-Drug Interaction prediction framework, abbreviated as DANN-DDI, to predict unobserved drug-drug interactions. First, we construct multiple drug feature networks and learn drug representations from these networks using the graph embedding method; then, we concatenate the learned drug embeddings and design an attention neural network to learn representations of drug-drug pairs; finally, we adopt a deep neural network to accurately predict drug-drug interactions. The experimental results demonstrate that our model DANN-DDI has improved prediction performance compared with state-of-the-art methods. Moreover, the proposed model can predict novel drug-drug interactions and drug-drug interaction-associated events.

Related Concepts

Related Feeds

BioRxiv & MedRxiv Preprints

BioRxiv and MedRxiv are the preprint servers for biology and health sciences respectively, operated by Cold Spring Harbor Laboratory. Here are the latest preprint articles (which are not peer-reviewed) from BioRxiv and MedRxiv.

Related Papers

The Journal of Clinical Psychiatry
S H Preskorn
Jornal brasileiro de nefrologia : ʹorgão oficial de Sociedades Brasileira e Latino-Americana de Nefrologia
Marcus Gomes Bastos
Basic & Clinical Pharmacology & Toxicology
Teresa Juárez-CedilloPhilip D Hansten
Medicina clínica
Juan Carlos Juárez Giménez, José Bruno Montoro Ronsano
© 2022 Meta ULC. All rights reserved