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Flexible drug-target interaction prediction with interactive information extraction and trade-off.

Authors :
He, Yunfei
Sun, Chenyuan
Meng, Li
Zhang, Yiwen
Mao, Rui
Yang, Fei
Source :
Expert Systems with Applications. Sep2024:Part C, Vol. 249, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Drug-target interaction (DTI) prediction refers to the use of computational methods and models to predict the interaction between drugs and biological targets. DTI can help researchers understand the mechanism of action of drugs, discover new drug targets, and screen drug candidates. Recently, a large number of DTI models integrating deep drug-target interaction features have emerged to make up for the dilemma of incomplete information on shallow drug and target features. However, these models ignore the challenge of overlapping interaction information by simply integrating deep interaction information. This paper proposes a flexible DTI prediction with interactive information extraction and trade-off (FDTIIT) to address the above challenges. The main idea of FDTIIT is to use flexible mutual attention to extract interaction information about drugs and targets, and then limit the dependence between them to avoid redundant information. Specifically, FDTIIT mainly includes three parts: drug and target representation, drug-target interactive information extraction, and drug-target interactive information trade-off. Among them, the drug and target representation module mainly uses the graph convolutional network and convolutional neural network to learn the representation of drugs and targets. Then, the drug-target interactive information extraction module extracts the drug information hidden in the target and the target information hidden in the drug based on mutual attention. To avoid possible information overlap between drug representation and target representation after the fusion of interaction information, FDTIIT designs an interactive information trade-off module. This module limits the dependence between drug and target representation, providing more comprehensive information to support high-performance drug-target interaction prediction. Multiple experiments designed on three publicly available datasets validated FDTIIT's effectiveness. • We propose a flexible interactive information extraction module. • We consider the interaction information overlap problem for the first time. • A novel interactive information trade-off strategy is proposed. • We integrate shallow and deep interaction features to predict DTI. • Experimental results on multiple datasets validate the effectiveness. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09574174
Volume :
249
Database :
Academic Search Index
Journal :
Expert Systems with Applications
Publication Type :
Academic Journal
Accession number :
176785348
Full Text :
https://doi.org/10.1016/j.eswa.2024.123821