MTAF-DTA: multi-type attention fusion network for drug-target affinity prediction.

BMC Bioinformatics

College of Information Science and Technology, Beijing University of Chemical Technology, Beijing, 100029, China.

Published: December 2024

AI Article Synopsis

  • The development of drug-target binding affinity (DTA) prediction is evolving from traditional lab methods to machine learning, enhancing drug discovery by saving time and resources.
  • A new method called MTAF-DTA improves DTA prediction by using an attention mechanism to assess the importance of different drug features and simulating drug-target interactions through a Spiral-Attention Block.
  • MTAF-DTA outperforms existing methods, demonstrating improved predictive accuracy in experiments, suggesting its potential for practical applications in drug discovery and treatment.

Article Abstract

Background: The development of drug-target binding affinity (DTA) prediction tasks significantly drives the drug discovery process forward. Leveraging the rapid advancement of artificial intelligence, DTA prediction tasks have undergone a transformative shift from wet lab experimentation to machine learning-based prediction. This transition enables a more expedient exploration of potential interactions between drugs and targets, leading to substantial savings in time and funding resources. However, existing methods still face several challenges, such as drug information loss, lack of calculation of the contribution of each modality, and lack of simulation regarding the drug-target binding mechanisms.

Results: We propose MTAF-DTA, a method for drug-target binding affinity prediction to solve the above problems. The drug representation module extracts three modalities of features from drugs and uses an attention mechanism to update their respective contribution weights. Additionally, we design a Spiral-Attention Block (SAB) as drug-target feature fusion module based on multi-type attention mechanisms, facilitating a triple fusion process between them. The SAB, to some extent, simulates the interactions between drugs and targets, thereby enabling outstanding performance in the DTA task. Our regression task on the Davis and KIBA datasets demonstrates the predictive capability of MTAF-DTA, with CI and MSE metrics showing respective improvements of 1.1% and 9.2% over the state-of-the-art (SOTA) method in the novel target settings. Furthermore, downstream tasks further validate MTAF-DTA's superiority in DTA prediction.

Conclusions: Experimental results and case study demonstrate the superior performance of our approach in DTA prediction tasks, showing its potential in practical applications such as drug discovery and disease treatment.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11622562PMC
http://dx.doi.org/10.1186/s12859-024-05984-3DOI Listing

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