Drug-protein interaction prediction via variational autoencoders and attention mechanisms

被引:7
作者
Zhang, Yue [1 ]
Hu, Yuqing [1 ]
Li, Huihui [1 ]
Liu, Xiaoyong [1 ]
机构
[1] Guangdong Polytech Normal Univ, Sch Comp Sci, Guangzhou, Peoples R China
基金
中国国家自然科学基金;
关键词
drug-protein interactions (DPIs); variational autoencoder (VAE); attention mechanism; convolutional neural network (CNN); deep learning-artificial neural network; TARGET INTERACTIONS;
D O I
10.3389/fgene.2022.1032779
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
During the process of drug discovery, exploring drug-protein interactions (DPIs) is a key step. With the rapid development of biological data, computer-aided methods are much faster than biological experiments. Deep learning methods have become popular and are mainly used to extract the characteristics of drugs and proteins for further DPIs prediction. Since the prediction of DPIs through machine learning cannot fully extract effective features, in our work, we propose a deep learning framework that uses variational autoencoders and attention mechanisms; it utilizes convolutional neural networks (CNNs) to obtain local features and attention mechanisms to obtain important information about drugs and proteins, which is very important for predicting DPIs. Compared with some machine learning methods on the C.elegans and human datasets, our approach provides a better effect. On the BindingDB dataset, its accuracy (ACC) and area under the curve (AUC) reach 0.862 and 0.913, respectively. To verify the robustness of the model, multiclass classification tasks are performed on Davis and KIBA datasets, and the ACC values reach 0.850 and 0.841, respectively, thus further demonstrating the effectiveness of the model.
引用
收藏
页数:9
相关论文
共 40 条
[1]  
[Anonymous], 2014, Proceedings of the deep learning workshop at NIPS. datascienceassn.org
[2]   The $2.6 Billion Pill - Methodologic and Policy Considerations [J].
Avorn, Jerry .
NEW ENGLAND JOURNAL OF MEDICINE, 2015, 372 (20) :1877-1879
[3]   A machine learning approach to predicting protein-ligand binding affinity with applications to molecular docking [J].
Ballester, Pedro J. ;
Mitchell, John B. O. .
BIOINFORMATICS, 2010, 26 (09) :1169-1175
[4]   Supervised prediction of drug-target interactions using bipartite local models [J].
Bleakley, Kevin ;
Yamanishi, Yoshihiro .
BIOINFORMATICS, 2009, 25 (18) :2397-2403
[5]   HOGMMNC: a higher order graph matching with multiple network constraints model for gene-drug regulatory modules identification [J].
Chen, Jiazhou ;
Peng, Hong ;
Han, Guoqiang ;
Cai, Hongmin ;
Cai, Jiulun .
BIOINFORMATICS, 2019, 35 (04) :602-610
[6]   Comprehensive analysis of kinase inhibitor selectivity [J].
Davis, Mindy I. ;
Hunt, Jeremy P. ;
Herrgard, Sanna ;
Ciceri, Pietro ;
Wodicka, Lisa M. ;
Pallares, Gabriel ;
Hocker, Michael ;
Treiber, Daniel K. ;
Zarrinkar, Patrick P. .
NATURE BIOTECHNOLOGY, 2011, 29 (11) :1046-U124
[7]   Genome scale enzyme-metabolite and drug-target interaction predictions using the signature molecular descriptor [J].
Faulon, Jean-Loup ;
Misra, Milind ;
Martin, Shawn ;
Sale, Ken ;
Sapra, Rajat .
BIOINFORMATICS, 2008, 24 (02) :225-233
[8]  
Gao KY, 2018, PROCEEDINGS OF THE TWENTY-SEVENTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, P3371
[9]  
Gschwend DA, 1996, J MOL RECOGNIT, V9, P175, DOI 10.1002/(SICI)1099-1352(199603)9:2<175::AID-JMR260>3.0.CO
[10]  
2-D