AI Article Synopsis

  • The role of microbes in the human body is vital for drug efficacy and toxicity, with recent predictive methods relying on graph learning, but these often fail to capture complex relationships between drugs and microbes.
  • The new method called DHDMP addresses these limitations by creating a dynamic hypergraph to encode diverse relationships among multiple drugs and microbes, while integrating neighbor attributes and long-distance correlations.
  • DHDMP improves feature representation through a framework that combines different types of graphs and utilizes a graph convolutional network for effective cross-graph feature propagation, resulting in better predictions than existing methods.

Article Abstract

Motivation: The microbes in human body play a crucial role in influencing the functions of drugs, as they can regulate the activities and toxicities of drugs. Most recent methods for predicting drug-microbe associations are based on graph learning. However, the relationships among multiple drugs and microbes are complex, diverse, and heterogeneous. Existing methods often fail to fully model the relationships. In addition, the attributes of drug-microbe pairs exhibit long-distance spatial correlations, which previous methods have not integrated effectively.

Results: We propose a new prediction method named DHDMP which is designed to encode the relationships among multiple drugs and microbes and integrate the attributes of various neighbor nodes along with the pairwise long-distance correlations. First, we construct a hypergraph with dynamic topology, where each hyperedge represents a specific relationship among multiple drug nodes and microbe nodes. Considering the heterogeneity of node attributes across different categories, we developed a node category-sensitive hypergraph convolution network to encode these diverse relationships. Second, we construct homogeneous graphs for drugs and microbes respectively, as well as drug-microbe heterogeneous graph, facilitating the integration of features from both homogeneous and heterogeneous neighbors of each target node. Third, we introduce a graph convolutional network with cross-graph feature propagation ability to transfer node features from homogeneous to heterogeneous graphs for enhanced neighbor feature representation learning. The propagation strategy aids in the deep fusion of features from both types of neighbors. Finally, we design spatial cross-attention to encode the attributes of drug-microbe pairs, revealing long-distance correlations among multiple pairwise attribute patches. The comprehensive comparison experiments showed our method outperformed state-of-the-art methods for drug-microbe association prediction. The ablation studies demonstrated the effectiveness of node category-sensitive hypergraph convolution network, graph convolutional network with cross-graph feature propagation, and spatial cross-attention. Case studies on three drugs further showed DHDMP's potential application in discovering the reliable candidate microbes for the interested drugs.

Availability And Implementation: Source codes and supplementary materials are available at https://github.com/pingxuan-hlju/DHDMP.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11441325PMC
http://dx.doi.org/10.1093/bioinformatics/btae562DOI Listing

Publication Analysis

Top Keywords

category-sensitive hypergraph
12
drugs microbes
12
neighbor feature
8
relationships multiple
8
multiple drugs
8
attributes drug-microbe
8
drug-microbe pairs
8
long-distance correlations
8
node category-sensitive
8
hypergraph convolution
8

Similar Publications

Article Synopsis
  • The role of microbes in the human body is vital for drug efficacy and toxicity, with recent predictive methods relying on graph learning, but these often fail to capture complex relationships between drugs and microbes.
  • The new method called DHDMP addresses these limitations by creating a dynamic hypergraph to encode diverse relationships among multiple drugs and microbes, while integrating neighbor attributes and long-distance correlations.
  • DHDMP improves feature representation through a framework that combines different types of graphs and utilizes a graph convolutional network for effective cross-graph feature propagation, resulting in better predictions than existing methods.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!