Literature DB >> 27485302

Computational Prediction of DrugTarget Interactions Using Chemical, Biological, and Network Features.

Dong-Sheng Cao1, Liu-Xia Zhang2, Gui-Shan Tan3, Zheng Xiang4, Wen-Bin Zeng3, Qing-Song Xu5, Alex F Chen6.   

Abstract

Drugtarget interactions (DTIs) are central to current drug discovery processes. Efforts have been devoted to the development of methodology for predicting DTIs and drugtarget interaction networks. Most existing methods mainly focus on the application of information about drug or protein structure features. In the present work, we proposed a computational method for DTI prediction by combining the information from chemical, biological and network properties. The method was developed based on a learning algorithm-random forest (RF) combined with integrated features for predicting DTIs. Four classes of drugtarget interaction networks in humans involving enzymes, ion channels, G-protein-coupled receptors (GPCRs) and nuclear receptors, are independently used for establishing predictive models. The RF models gave prediction accuracy of 93.52 %, 94.84 %, 89.68 % and 84.72 % for four pharmaceutically useful datasets, respectively. The prediction ability of our approach is comparative to or even better than that of other DTI prediction methods. These comparative results demonstrated the relevance of the network topology as source of information for predicting DTIs. Further analysis confirmed that among our top ranked predictions of DTIs, several DTIs are supported by databases, while the others represent novel potential DTIs. We believe that our proposed approach can help to limit the search space of DTIs and provide a new way towards repositioning old drugs and identifying targets.
© 2014 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  Drug repositioning; Drugtarget interactions (DTIs); Interaction profiles; Network property; Polypharmcology profiling; Random forest (RF)

Year:  2014        PMID: 27485302     DOI: 10.1002/minf.201400009

Source DB:  PubMed          Journal:  Mol Inform        ISSN: 1868-1743            Impact factor:   3.353


  12 in total

1.  Screening drug-target interactions with positive-unlabeled learning.

Authors:  Lihong Peng; Wen Zhu; Bo Liao; Yu Duan; Min Chen; Yi Chen; Jialiang Yang
Journal:  Sci Rep       Date:  2017-08-14       Impact factor: 4.379

2.  Harnessing Human Microphysiology Systems as Key Experimental Models for Quantitative Systems Pharmacology.

Authors:  D Lansing Taylor; Albert Gough; Mark E Schurdak; Lawrence Vernetti; Chakra S Chennubhotla; Daniel Lefever; Fen Pei; James R Faeder; Timothy R Lezon; Andrew M Stern; Ivet Bahar
Journal:  Handb Exp Pharmacol       Date:  2019

3.  Multimodal network diffusion predicts future disease-gene-chemical associations.

Authors:  Chih-Hsu Lin; Daniel M Konecki; Meng Liu; Stephen J Wilson; Huda Nassar; Angela D Wilkins; David F Gleich; Olivier Lichtarge
Journal:  Bioinformatics       Date:  2019-05-01       Impact factor: 6.937

4.  An Ameliorated Prediction of Drug-Target Interactions Based on Multi-Scale Discrete Wavelet Transform and Network Features.

Authors:  Cong Shen; Yijie Ding; Jijun Tang; Xinying Xu; Fei Guo
Journal:  Int J Mol Sci       Date:  2017-08-16       Impact factor: 5.923

5.  DeepDTA: deep drug-target binding affinity prediction.

Authors:  Hakime Öztürk; Arzucan Özgür; Elif Ozkirimli
Journal:  Bioinformatics       Date:  2018-09-01       Impact factor: 6.937

6.  A unified drug-target interaction prediction framework based on knowledge graph and recommendation system.

Authors:  Qing Ye; Chang-Yu Hsieh; Ziyi Yang; Yu Kang; Jiming Chen; Dongsheng Cao; Shibo He; Tingjun Hou
Journal:  Nat Commun       Date:  2021-11-22       Impact factor: 14.919

Review 7.  Machine learning approaches and databases for prediction of drug-target interaction: a survey paper.

Authors:  Maryam Bagherian; Elyas Sabeti; Kai Wang; Maureen A Sartor; Zaneta Nikolovska-Coleska; Kayvan Najarian
Journal:  Brief Bioinform       Date:  2021-01-18       Impact factor: 11.622

8.  Drug Target Identification with Machine Learning: How to Choose Negative Examples.

Authors:  Matthieu Najm; Chloé-Agathe Azencott; Benoit Playe; Véronique Stoven
Journal:  Int J Mol Sci       Date:  2021-05-12       Impact factor: 5.923

9.  Multi-Target Screening and Experimental Validation of Natural Products from Selaginella Plants against Alzheimer's Disease.

Authors:  Yin-Hua Deng; Ning-Ning Wang; Zhen-Xing Zou; Lin Zhang; Kang-Ping Xu; Alex F Chen; Dong-Sheng Cao; Gui-Shan Tan
Journal:  Front Pharmacol       Date:  2017-08-25       Impact factor: 5.810

10.  The Discovery of New Drug-Target Interactions for Breast Cancer Treatment.

Authors:  Jiali Song; Zhenyi Xu; Lei Cao; Meng Wang; Yan Hou; Kang Li
Journal:  Molecules       Date:  2021-12-10       Impact factor: 4.411

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