Multi-modality attribute learning-based method for drug–protein interaction prediction based on deep neural network

Author:

Dong Weihe1,Yang Qiang23,Wang Jian1,Xu Long23,Li Xiaokun23ORCID,Luo Gongning45,Gao Xin4ORCID

Affiliation:

1. College of information and Computer Engineering, Northeast Forestry University , Hexing Road, 150040, Harbin , China

2. School of Computer Science and Technology, Heilongjiang University , Xuefu Road, 150080, Harbin , China

3. Postdoctoral Program of Heilongjiang Hengxun Technology Co., Ltd. , Xuefu Road, 150080, Harbin , China

4. Computer, Electrical and Mathematical Sciences & Engineering Division, King Abdullah University of Science and Technology , 4700 KAUST, Thuwal 23955 , Saudi Arabia

5. School of Computer Science and Technology, Harbin Institute of Technology , West Dazhi Street, 150001, Harbin , China

Abstract

AbstractIdentification of active candidate compounds for target proteins, also called drug–protein interaction (DPI) prediction, is an essential but time-consuming and expensive step, which leads to fostering the development of drug discovery. In recent years, deep network-based learning methods were frequently proposed in DPIs due to their powerful capability of feature representation. However, the performance of existing DPI methods is still limited by insufficiently labeled pharmacological data and neglected intermolecular information. Therefore, overcoming these difficulties to perfect the performance of DPIs is an urgent challenge for researchers. In this article, we designed an innovative ’multi-modality attributes’ learning-based framework for DPIs with molecular transformer and graph convolutional networks, termed, multi-modality attributes (MMA)-DPI. Specifically, intermolecular sub-structural information and chemical semantic representations were extracted through an augmented transformer module from biomedical data. A tri-layer graph convolutional neural network module was applied to associate the neighbor topology information and learn the condensed dimensional features by aggregating a heterogeneous network that contains multiple biological representations of drugs, proteins, diseases and side effects. Then, the learned representations were taken as the input of a fully connected neural network module to further integrate them in molecular and topological space. Finally, the attribute representations were fused with adaptive learning weights to calculate the interaction score for the DPIs tasks. MMA-DPI was evaluated in different experimental conditions and the results demonstrate that the proposed method achieved higher performance than existing state-of-the-art frameworks.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Heilongjiang Province

China Postdoctoral Science Foundation

Research Funds for the Central Universities

Fund for Young Innovation Team of Basic Scientific Research in Heilongjiang Province

Fund from China Scholarship Council

King Abdullah University of Science and Technology

Office of Research Administration

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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