Litcius/Paper detail

BiRNN-DDI: A Drug-Drug Interaction Event Type Prediction Model Based on Bidirectional Recurrent Neural Network and Graph2Seq Representation

Guishen Wang, Hui Feng, Chen Cao, Hui Feng, Chen Cao, Chen Cao

2024Journal of Computational Biology17 citationsDOI

Abstract

Research on drug-drug interaction (DDI) prediction, particularly in identifying DDI event types, is crucial for understanding adverse drug reactions and drug combinations. This work introduces a Bidirectional Recurrent Neural Network model for DDI event type prediction (BiRNN-DDI), which simultaneously considers structural relationships and contextual information. Our BiRNN-DDI model constructs drug feature graphs to mine structural relationships. For contextual information, it transforms drug graphs into sequences and employs a two-channel structure, integrating BiRNN, to obtain contextual representations of drug-drug pairs. The model's effectiveness is demonstrated through comparisons with state-of-the-art models on two DDI event-type benchmarks. Extensive experimental results reveal that BiRNN-DDI surpasses other models in accuracy, AUPR, AUC, F1 score, Precision, and Recall metrics on both small and large datasets. Additionally, our model exhibits a lower parameter space, indicating more efficient learning of drug feature representations and prediction of potential DDI event types.

Topics & Concepts

DrugRepresentation (politics)Artificial neural networkComputer scienceEvent (particle physics)Drug-drug interactionType (biology)Artificial intelligenceMachine learningPharmacologyMedicineBiologyPhysicsPoliticsLawEcologyPolitical scienceQuantum mechanicsComputational Drug Discovery MethodsBiomedical Text Mining and OntologiesBioinformatics and Genomic Networks