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      DeepDTA: deep drug–target binding affinity prediction

      research-article
      1 , 1 , 2
      Bioinformatics
      Oxford University Press

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          Abstract

          Motivation

          The identification of novel drug–target (DT) interactions is a substantial part of the drug discovery process. Most of the computational methods that have been proposed to predict DT interactions have focused on binary classification, where the goal is to determine whether a DT pair interacts or not. However, protein–ligand interactions assume a continuum of binding strength values, also called binding affinity and predicting this value still remains a challenge. The increase in the affinity data available in DT knowledge-bases allows the use of advanced learning techniques such as deep learning architectures in the prediction of binding affinities. In this study, we propose a deep-learning based model that uses only sequence information of both targets and drugs to predict DT interaction binding affinities. The few studies that focus on DT binding affinity prediction use either 3D structures of protein–ligand complexes or 2D features of compounds. One novel approach used in this work is the modeling of protein sequences and compound 1D representations with convolutional neural networks (CNNs).

          Results

          The results show that the proposed deep learning based model that uses the 1D representations of targets and drugs is an effective approach for drug target binding affinity prediction. The model in which high-level representations of a drug and a target are constructed via CNNs achieved the best Concordance Index (CI) performance in one of our larger benchmark datasets, outperforming the KronRLS algorithm and SimBoost, a state-of-the-art method for DT binding affinity prediction.

          Availability and implementation

          https://github.com/hkmztrk/DeepDTA

          Supplementary information

          Supplementary data are available at Bioinformatics online.

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          Most cited references29

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          Identification of common molecular subsequences.

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            Prediction of drug–target interaction networks from the integration of chemical and genomic spaces

            Motivation: The identification of interactions between drugs and target proteins is a key area in genomic drug discovery. Therefore, there is a strong incentive to develop new methods capable of detecting these potential drug–target interactions efficiently. Results: In this article, we characterize four classes of drug–target interaction networks in humans involving enzymes, ion channels, G-protein-coupled receptors (GPCRs) and nuclear receptors, and reveal significant correlations between drug structure similarity, target sequence similarity and the drug–target interaction network topology. We then develop new statistical methods to predict unknown drug–target interaction networks from chemical structure and genomic sequence information simultaneously on a large scale. The originality of the proposed method lies in the formalization of the drug–target interaction inference as a supervised learning problem for a bipartite graph, the lack of need for 3D structure information of the target proteins, and in the integration of chemical and genomic spaces into a unified space that we call ‘pharmacological space’. In the results, we demonstrate the usefulness of our proposed method for the prediction of the four classes of drug–target interaction networks. Our comprehensively predicted drug–target interaction networks enable us to suggest many potential drug–target interactions and to increase research productivity toward genomic drug discovery. Availability: Softwares are available upon request. Contact: Yoshihiro.Yamanishi@ensmp.fr Supplementary information: Datasets and all prediction results are available at http://web.kuicr.kyoto-u.ac.jp/supp/yoshi/drugtarget/.
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              Context-Dependent Pre-Trained Deep Neural Networks for Large-Vocabulary Speech Recognition

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                Author and article information

                Journal
                Bioinformatics
                Bioinformatics
                bioinformatics
                Bioinformatics
                Oxford University Press
                1367-4803
                1367-4811
                01 September 2018
                08 September 2018
                08 September 2018
                : 34
                : 17
                : i821-i829
                Affiliations
                [1 ]Department of Computer Engineering, Bogazici University, Istanbul, Turkey
                [2 ]Department of Chemical Engineering, Bogazici University, Istanbul, Turkey
                Author notes
                To whom correspondence should be addressed. E-mail: arzucan.ozgur@ 123456boun.edu.tr or elif.ozkirimli@ 123456boun.edu.tr
                Article
                bty593
                10.1093/bioinformatics/bty593
                6129291
                30423097
                9a5285fd-e1f4-4c69-8f62-2ac91a9eec04
                © The Author(s) 2018. Published by Oxford University Press.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License ( http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com

                History
                Page count
                Pages: 9
                Funding
                Funded by: Bogazici University Research Fund
                Funded by: BAP 10.13039/501100000544
                Award ID: 12304
                Categories
                Eccb 2018: European Conference on Computational Biology Proceedings
                Proteins

                Bioinformatics & Computational biology
                Bioinformatics & Computational biology

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