GVDTI: graph convolutional and variational autoencoders with attribute-level attention for drug-protein interaction prediction

Brief Bioinform. 2022 Jan 17;23(1):bbab453. doi: 10.1093/bib/bbab453.

Abstract

Motivation: Identifying proteins that interact with drugs plays an important role in the initial period of developing drugs, which helps to reduce the development cost and time. Recent methods for predicting drug-protein interactions mainly focus on exploiting various data about drugs and proteins. These methods failed to completely learn and integrate the attribute information of a pair of drug and protein nodes and their attribute distribution.

Results: We present a new prediction method, GVDTI, to encode multiple pairwise representations, including attention-enhanced topological representation, attribute representation and attribute distribution. First, a framework based on graph convolutional autoencoder is constructed to learn attention-enhanced topological embedding that integrates the topology structure of a drug-protein network for each drug and protein nodes. The topological embeddings of each drug and each protein are then combined and fused by multi-layer convolution neural networks to obtain the pairwise topological representation, which reveals the hidden topological relationships between drug and protein nodes. The proposed attribute-wise attention mechanism learns and adjusts the importance of individual attribute in each topological embedding of drug and protein nodes. Secondly, a tri-layer heterogeneous network composed of drug, protein and disease nodes is created to associate the similarities, interactions and associations across the heterogeneous nodes. The attribute distribution of the drug-protein node pair is encoded by a variational autoencoder. The pairwise attribute representation is learned via a multi-layer convolutional neural network to deeply integrate the attributes of drug and protein nodes. Finally, the three pairwise representations are fused by convolutional and fully connected neural networks for drug-protein interaction prediction. The experimental results show that GVDTI outperformed other seven state-of-the-art methods in comparison. The improved recall rates indicate that GVDTI retrieved more actual drug-protein interactions in the top ranked candidates than conventional methods. Case studies on five drugs further confirm GVDTI's ability in discovering the potential candidate drug-related proteins.

Contact: zhang@hlju.edu.cn Supplementary information: Supplementary data are available at Briefings in Bioinformatics online.

Keywords: Attention-enhanced topological representation; Drug–protein interaction prediction; Graph convolutional and variational autoencoders; Pairwise attribute distribution; Pairwise attribute representation.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Drug Interactions
  • Neural Networks, Computer*
  • Proteins*

Substances

  • Proteins