GAINET: Enhancing drug-drug interaction predictions through graph neural networks and attention mechanisms

被引:2
作者
Das, Bihter [1 ]
Dagdogen, Huseyin Alperen [1 ]
Kaya, Muhammed Onur [1 ]
Tuncel, Ozkan [1 ]
Akgul, Muhammed Samet [1 ]
Das, Resul [1 ]
机构
[1] Firat Univ, Fac Technol, Dept Software Engn, TR-23119 Elazig, Turkiye
关键词
Drug-target interactions; Graph neural networks; Attention mechanism; Deep learning; Environmental sustainability; Pharmacoinformatics;
D O I
10.1016/j.chemolab.2025.105337
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Drug-drug interactions (DDIs) area significant challenge in modern healthcare, especially in polypharmacy, where patients are given more than one drug at the same time. Accurate prediction of DDIs plays an important role in reducing adverse effects and improving recovery inpatients. In this study, we propose GAINET, a derivative of the graph-based neural network model enhanced with attention mechanisms, to accurately improve the prediction of drug-drug interactions. The model effectively learns interaction models by focusing on critical features in drug structures and their interactions with each other through molecular graph representations. For the performance evaluation of GAINET, which is trained on the DrugBank dataset containing 191,870 DDI examples, basic metrics such as AUC-ROC, F1 score, precision and recall are used. The obtained accuracy of 0.9050, F1 score of 0.9096 and AUC-ROC of 0.9505 indicate that GAINET outperforms many state-of-the-art models and has good generalization ability even on previously untested data. Moreover, the molecular attention mechanism enables interpretable predictions by highlighting the interaction-specific molecular substructures. All these findings indicate that GAINET, our proposed model for DDI prediction, can serve as a valuable and useful tool and advance the development of reliable pharmacological treatments.
引用
收藏
页数:15
相关论文
共 46 条
[1]   Random-forest model for drug-target interaction prediction via Kullbeck-Leibler divergence [J].
Ahn, Sangjin ;
Lee, Si Eun ;
Kim, Mi-Hyun .
JOURNAL OF CHEMINFORMATICS, 2022, 14 (01)
[2]   Hospitalisations and emergency department visits due to drug-drug interactions: a literature review [J].
Becker, Matthijs L. ;
Kallewaard, Marjon ;
Caspers, Peter W. J. ;
Visser, Loes E. ;
Leufkens, Hubert G. M. ;
Stricker, Bruno HCh .
PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2007, 16 (06) :641-651
[3]  
Bongini P, 2022, Arxiv, DOI arXiv:2211.16871
[4]   Molecular generative Graph Neural Networks for Drug Discovery [J].
Bongini, Pietro ;
Bianchini, Monica ;
Scarselli, Franco .
NEUROCOMPUTING, 2021, 450 :242-252
[5]   Drug-Drug Interaction Prediction: a Purely SMILES Based Approach [J].
Bumgardner, Bri ;
Tanvir, Farhan ;
Saifuddin, Khaled Mohammed ;
Akbas, Esra .
2021 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2021, :5571-5579
[6]  
Chowdhury M., 2013, Proceedings of the the 7th international workshop on semanticevaluation (SemEval 2013), Atlanta, Georgia, USA, P351
[7]   A novel hybrid model combining Vision Transformers and Graph Convolutional Networks for monkeypox disease effective diagnosis [J].
Das, Bihter ;
Dagdogen, Huseyin Alperen ;
Kaya, Muhammed Onur ;
Das, Resul .
INFORMATION FUSION, 2025, 117
[8]   A geometric deep learning model for display and prediction of potential drug-virus interactions against SARS-CoV-2 [J].
Das, Bihter ;
Kutsal, Mucahit ;
Das, Resul .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2022, 229
[9]  
Deac A, 2019, Arxiv, DOI arXiv:1905.00534
[10]   A multimodal deep learning framework for predicting drug-drug interaction events [J].
Deng, Yifan ;
Xu, Xinran ;
Qiu, Yang ;
Xia, Jingbo ;
Zhang, Wen ;
Liu, Shichao .
BIOINFORMATICS, 2020, 36 (15) :4316-4322