Affiliation:
1. College of Mathematics and Computer Science, Dali University, Dali 671003, China
2. Yunnan Key Laboratory of Screening and Research on Anti-Pathogenic Plant Resources from Western Yunnan, Dali University, Dali 671000, China
Abstract
Drug–target affinity (DTA) prediction is crucial for understanding molecular interactions and aiding drug discovery and development. While various computational methods have been proposed for DTA prediction, their predictive accuracy remains limited, failing to delve into the structural nuances of interactions. With increasingly accurate and accessible structure prediction of targets, we developed a novel deep learning model, named S2DTA, to accurately predict DTA by fusing sequence features of drug SMILES, targets, and pockets and their corresponding graph structural features using heterogeneous models based on graph and semantic networks. Experimental findings underscored that complex feature representations imparted negligible enhancements to the model’s performance. However, the integration of heterogeneous models demonstrably bolstered predictive accuracy. In comparison to three state-of-the-art methodologies, such as DeepDTA, GraphDTA, and DeepDTAF, S2DTA’s performance became more evident. It exhibited a 25.2% reduction in mean absolute error (MAE) and a 20.1% decrease in root mean square error (RMSE). Additionally, S2DTA showed some improvements in other crucial metrics, including Pearson Correlation Coefficient (PCC), Spearman, Concordance Index (CI), and R2, with these metrics experiencing increases of 19.6%, 17.5%, 8.1%, and 49.4%, respectively. Finally, we conducted an interpretability analysis on the effectiveness of S2DTA by bidirectional self-attention mechanism. The analysis results supported that S2DTA was an effective and accurate tool for predicting DTA.
Funder
National Natural Sciences Foundation of China
Yunnan Fundamental Research Projects
Yunnan Key Laboratory of Screening and Research on Anti-pathogenic Plant Resources from Western Yunnan
Subject
Chemistry (miscellaneous),Analytical Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Molecular Medicine,Drug Discovery,Pharmaceutical Science
Reference44 articles.
1. Drug–Target Interaction Prediction: Databases, Web Servers and Computational Models;Chen;Brief. Bioinform.,2016
2. A Comprehensive Map of Molecular Drug Targets;Santos;Nat. Rev. Drug Discov.,2017
3. Repurposing Existing Drugs for New AMPK Activators as a Strategy to Extend Lifespan: A Computer-Aided Drug Discovery Study;Mofidifar;Biogerontology,2018
4. Du, X., Li, Y., Xia, Y.-L., Ai, S.-M., Liang, J., Sang, P., Ji, X.-L., and Liu, S.-Q. (2016). Insights into Protein–Ligand Interactions: Mechanisms, Models, and Methods. Int. J. Mol. Sci., 17.
5. MOLE 2.0: Advanced Approach for Analysis of Biomacromolecular Channels;Sehnal;J. Cheminform.,2013
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