Associative Learning Mechanism for Drug-Target Interaction Prediction
- URL: http://arxiv.org/abs/2205.15364v5
- Date: Fri, 15 Dec 2023 15:02:34 GMT
- Title: Associative Learning Mechanism for Drug-Target Interaction Prediction
- Authors: Zhiqin Zhu, Zheng Yao, Guanqiu Qi, Neal Mazur, Baisen Cong
- Abstract summary: Drug-target affinity (DTA) represents the strength of drug-target interaction (DTI)
Traditional methods lack the interpretability of the DTA prediction process.
This paper proposes a DTA prediction method with interactive learning and an autoencoder mechanism.
- Score: 6.107658437700639
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As a necessary process in drug development, finding a drug compound that can
selectively bind to a specific protein is highly challenging and costly.
Drug-target affinity (DTA), which represents the strength of drug-target
interaction (DTI), has played an important role in the DTI prediction task over
the past decade. Although deep learning has been applied to DTA-related
research, existing solutions ignore fundamental correlations between molecular
substructures in molecular representation learning of drug compound
molecules/protein targets. Moreover, traditional methods lack the
interpretability of the DTA prediction process. This results in missing feature
information of intermolecular interactions, thereby affecting prediction
performance. Therefore, this paper proposes a DTA prediction method with
interactive learning and an autoencoder mechanism. The proposed model enhances
the corresponding ability to capture the feature information of a single
molecular sequence by the drug/protein molecular representation learning module
and supplements the information interaction between molecular sequence pairs by
the interactive information learning module. The DTA value prediction module
fuses the drug-target pair interaction information to output the predicted
value of DTA. Additionally, this paper theoretically proves that the proposed
method maximizes evidence lower bound (ELBO) for the joint distribution of the
DTA prediction model, which enhances the consistency of the probability
distribution between the actual value and the predicted value. The experimental
results confirm mutual transformer-drug target affinity (MT-DTA) achieves
better performance than other comparative methods.
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