Prediction of Drug-Related Diseases Through Integrating Pairwise Attributes and Neighbor Topological Structures

IEEE/ACM Trans Comput Biol Bioinform. 2022 Sep-Oct;19(5):2963-2974. doi: 10.1109/TCBB.2021.3089692. Epub 2022 Oct 10.

Abstract

Identifying new disease indications for the approved drugs can help reduce the cost and time of drug development. Most of the recent methods focus on exploiting the various information related to drugs and diseases for predicting the candidate drug-disease associations. However, the previous methods failed to deeply integrate the neighborhood topological structure and the node attributes of an interested drug-disease node pair. We propose a new prediction method, ANPred, to learn and integrate pairwise attribute information and neighbor topology information from the similarities and associations related to drugs and diseases. First, a bi-layer heterogeneous network with intra-layer and inter-layer connections is established to combine the drug similarities, the disease similarities, and the drug-disease associations. Second, the embedding of a pair of drug and disease is constructed based on integrating multiple biological premises about drugs and diseases. The learning framework based on multi-layer convolutional neural networks is designed to learn the attribute representation of the pair of drug and disease nodes from its embedding. The sequences composed of neighbor nodes are formed based on random walk on the heterogeneous network. A framework based on fully-connected autoencoder and skip-gram module is constructed to learn the neighbor topological representations of nodes. The cross-validation results indicate the performance of ANPred is superior to several state-of-the-art methods. The case studies on 5 drugs further confirm the ability of ANPred in discovering the potential drug-disease association candidates.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms*
  • MicroRNAs*
  • Neural Networks, Computer

Substances

  • MicroRNAs