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. 2016 Nov 28;12(11):e1005219.
doi: 10.1371/journal.pcbi.1005219. eCollection 2016 Nov.

Computational Discovery of Putative Leads for Drug Repositioning through Drug-Target Interaction Prediction

Affiliations

Computational Discovery of Putative Leads for Drug Repositioning through Drug-Target Interaction Prediction

Edgar D Coelho et al. PLoS Comput Biol. .

Abstract

De novo experimental drug discovery is an expensive and time-consuming task. It requires the identification of drug-target interactions (DTIs) towards targets of biological interest, either to inhibit or enhance a specific molecular function. Dedicated computational models for protein simulation and DTI prediction are crucial for speed and to reduce the costs associated with DTI identification. In this paper we present a computational pipeline that enables the discovery of putative leads for drug repositioning that can be applied to any microbial proteome, as long as the interactome of interest is at least partially known. Network metrics calculated for the interactome of the bacterial organism of interest were used to identify putative drug-targets. Then, a random forest classification model for DTI prediction was constructed using known DTI data from publicly available databases, resulting in an area under the ROC curve of 0.91 for classification of out-of-sampling data. A drug-target network was created by combining 3,081 unique ligands and the expected ten best drug targets. This network was used to predict new DTIs and to calculate the probability of the positive class, allowing the scoring of the predicted instances. Molecular docking experiments were performed on the best scoring DTI pairs and the results were compared with those of the same ligands with their original targets. The results obtained suggest that the proposed pipeline can be used in the identification of new leads for drug repositioning. The proposed classification model is available at http://bioinformatics.ua.pt/software/dtipred/.

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Conflict of interest statement

The authors have declared that no competing interests exist.

Figures

Fig 1
Fig 1. ProSA-web overall model quality output for Q5HIC8 (left) and Q5HCP4 (right), respectively.
Panels show these proteins are within the range of scores typically found for proteins of similar size.
Fig 2
Fig 2. Diagram of the proposed pipeline.
Fig 3
Fig 3. Data set construction.

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