Affiliation:
1. Suzhou University of Science and Technology School of Electronic and Information Engineering Suzhou China
2. Xuzhou Medical University School of Medical Informatics Xuzhou China
3. Suzhou University of Science and Technology School of Architecture and Urban Planning Suzhou China
Abstract
Background:
Predicting drug-target interaction (DTI) plays a crucial role in drug research
and development. More and more researchers pay attention to the problem of developing more powerful
prediction methods. Traditional DTI prediction methods are basically realized by biochemical experiments,
which are time-consuming, risky, and costly. Nowadays, DTI prediction is often solved by
using a single information source and a single model, or by combining some models, but the prediction
results are still not accurate enough.
Objective:
The study aimed to utilize existing data and machine learning models to integrate heterogeneous
data sources and different models, further improving the accuracy of DTI prediction.
Methods:
This paper has proposed a novel prediction method based on reinforcement learning, called
QLDTI (predicting drug-target interaction based on Q-learning), which can be mainly divided into
two parts: data fusion and model fusion. Firstly, it fuses the drug and target similarity matrices calculated
by different calculation methods through Q-learning. Secondly, the new similarity matrix is inputted
into five models, NRLMF, CMF, BLM-NII, NetLapRLS, and WNN-GIP, for further training.
Then, all sub-model weights are continuously optimized again by Q-learning, which can be used to
linearly weight all sub-model prediction results to output the final prediction result.
Results:
QLDTI achieved AUC accuracy of 99.04%, 99.12%, 98.28%, and 98.35% on E, NR, IC, and
GPCR datasets, respectively. Compared to the existing five models NRLMF, CMF, BLM-NII,
NetLapRLS, and WNN-GIP, the QLDTI method has achieved better results on four benchmark datasets
of E, NR, IC, and GPCR.
Conclusion:
Data fusion and model fusion have been proven effective for DTI prediction, further improving
the prediction accuracy of DTI.
Publisher
Bentham Science Publishers Ltd.
Subject
Computational Mathematics,Genetics,Molecular Biology,Biochemistry