4.7 Article

Drug-Target Interaction Prediction: End-to-End Deep Learning Approach

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2020.2977335

Keywords

Proteins; Drugs; Chemicals; Machine learning; Diffusion tensor imaging; Predictive models; Bioinformatics; Drug repositioning; drug-target interaction; deep learning; convolutional neural network; fully connected neural network; protein sequence; SMILES; drug

Funding

  1. Portuguese Research Agency FCT, through D4 - Deep Drug Discovery and Deployment [CENTRO-01-0145-FEDER-029266]

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This study introduces a deep learning architecture model that utilizes Convolutional Neural Networks to extract representations from protein sequences and compound SMILES strings for binary classification in drug-target interaction prediction. The results demonstrate improved performance using CNNs compared to traditional descriptors.
The discovery of potential Drug-Target Interactions (DTIs) is a determining step in the drug discovery and repositioning process, as the effectiveness of the currently available antibiotic treatment is declining. Although putting efforts on the traditional in vivo or in vitro methods, pharmaceutical financial investment has been reduced over the years. Therefore, establishing effective computational methods is decisive to find new leads in a reasonable amount of time. Successful approaches have been presented to solve this problem but seldom protein sequences and structured data are used together. In this paper, we present a deep learning architecture model, which exploits the particular ability of Convolutional Neural Networks (CNNs) to obtain 1D representations from protein sequences (amino acid sequence) and compounds SMILES (Simplified Molecular Input Line Entry System) strings. These representations can be interpreted as features that express local dependencies or patterns that can then be used in a Fully Connected Neural Network (FCNN), acting as a binary classifier. The results achieved demonstrate that using CNNs to obtain representations of the data, instead of the traditional descriptors, lead to improved performance. The proposed end-to-end deep learning method outperformed traditional machine learning approaches in the correct classification of both positive and negative interactions.

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