Introduction
Bimonthly, started in 1957
Administrator
Shanxi Provincial Education Department
Sponsor
Taiyuan University of Technology
Publisher
Ed. Office of Journal of TYUT
Editor-in-Chief
SUN Hongbin
ISSN: 1007-9432
CN: 14-1220/N
Administrator
Shanxi Provincial Education Department
Sponsor
Taiyuan University of Technology
Publisher
Ed. Office of Journal of TYUT
Editor-in-Chief
SUN Hongbin
ISSN: 1007-9432
CN: 14-1220/N
location: home > paper >


Prediction of Drug-Target Interactions Based on Interactive Multi-Feature Fusion Algorithm
DOI:
10.16355/j.tyut.1007-9432.20230163
Received:
2023-03-15
Accepted:
2023-04-10
Corresponding author | Institute | |
LI Dongxi | College of Data Science, Taiyuan University of Technology |
abstract:
【Purposes】 The prediction of drug-target interactions plays a crucial role in drug relocation and drug development. 【Methods】 A multi-feature fusion algorithm is proposed based on the combination of Redundancy-Correlation and Interaction(RCI), and the prediction model is built by combining the stacked ensemble classifier. First, high-dimensional features of the drug and target are extracted for multi-feature fusion, and RCI is used to build a non-redundant and relevant interactive feature subset. Then, the feature subset is input into a stacked ensemble classifier composed of multiple base learners for training. Finally, the prediction is carried out in two benchmark drug target networks. 【Findings】 The experimental results show that the accuracies of ACC and AUC values of the model in this paper are better than those of the existing benchmark methods, indicating the effectiveness of the proposed algorithm.
Keywords:
drug-target interactions; multi-feature fusion; feature selection; stacked ensemble classifier; machine learning