Literature DB >> 26821132

DrugMiner: comparative analysis of machine learning algorithms for prediction of potential druggable proteins.

Ali Akbar Jamali1, Reza Ferdousi2, Saeed Razzaghi3, Jiuyong Li4, Reza Safdari5, Esmaeil Ebrahimie6.   

Abstract

Application of computational methods in drug discovery has received increased attention in recent years as a way to accelerate drug target prediction. Based on 443 sequence-derived protein features, we applied the most commonly used machine learning methods to predict whether a protein is druggable as well as to opt for superior algorithm in this task. In addition, feature selection procedures were used to provide the best performance of each classifier according to the optimum number of features. When run on all features, Neural Network was the best classifier, with 89.98% accuracy, based on a k-fold cross-validation test. Among all the algorithms applied, the optimum number of most-relevant features was 130, according to the Support Vector Machine-Feature Selection (SVM-FS) algorithm. This study resulted in the discovery of new drug target which potentially can be employed in cell signaling pathways, gene expression, and signal transduction. The DrugMiner web tool was developed based on the findings of this study to provide researchers with the ability to predict druggable proteins. DrugMiner is freely available at www.DrugMiner.org.
Copyright © 2016. Published by Elsevier Ltd.

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Year:  2016        PMID: 26821132     DOI: 10.1016/j.drudis.2016.01.007

Source DB:  PubMed          Journal:  Drug Discov Today        ISSN: 1359-6446            Impact factor:   7.851


  22 in total

1.  Probabilistic Pocket Druggability Prediction via One-Class Learning.

Authors:  Riccardo Aguti; Erika Gardini; Martina Bertazzo; Sergio Decherchi; Andrea Cavalli
Journal:  Front Pharmacol       Date:  2022-06-29       Impact factor: 5.988

2.  Predicting the Types of Ion Channel-Targeted Conotoxins Based on AVC-SVM Model.

Authors:  Wang Xianfang; Wang Junmei; Wang Xiaolei; Zhang Yue
Journal:  Biomed Res Int       Date:  2017-04-09       Impact factor: 3.411

3.  Incorporating Protein Dynamics Through Ensemble Docking in Machine Learning Models to Predict Drug Binding.

Authors:  Fatemah Alghamedy; Jeevith Bopaiah; Derek Jones; Xiaofei Zhang; Heidi L Weiss; Sally R Ellingson
Journal:  AMIA Jt Summits Transl Sci Proc       Date:  2018-05-18

4.  Polypharmacology Within the Full Kinome: a Machine Learning Approach.

Authors:  Derek Jones; Jeevith Bopaiah; Fatemah Alghamedy; Nathan Jacobs; Heidi L Weiss; W A de Jong; Sally R Ellingson
Journal:  AMIA Jt Summits Transl Sci Proc       Date:  2018-05-18

5.  A Pilot Study of Multi-Input Recurrent Neural Networks for Drug-Kinase Binding Prediction.

Authors:  Kristy Carpenter; Alexander Pilozzi; Xudong Huang
Journal:  Molecules       Date:  2020-07-24       Impact factor: 4.411

Review 6.  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

Review 7.  Computerized techniques pave the way for drug-drug interaction prediction and interpretation.

Authors:  Reza Safdari; Reza Ferdousi; Kamal Aziziheris; Sharareh R Niakan-Kalhori; Yadollah Omidi
Journal:  Bioimpacts       Date:  2016-06-16

8.  VB-MK-LMF: fusion of drugs, targets and interactions using variational Bayesian multiple kernel logistic matrix factorization.

Authors:  Bence Bolgár; Péter Antal
Journal:  BMC Bioinformatics       Date:  2017-10-04       Impact factor: 3.169

9.  In silico prediction of novel therapeutic targets using gene-disease association data.

Authors:  Enrico Ferrero; Ian Dunham; Philippe Sanseau
Journal:  J Transl Med       Date:  2017-08-29       Impact factor: 5.531

10.  Unified Transcriptomic Signature of Arbuscular Mycorrhiza Colonization in Roots of Medicago truncatula by Integration of Machine Learning, Promoter Analysis, and Direct Merging Meta-Analysis.

Authors:  Manijeh Mohammadi-Dehcheshmeh; Ali Niazi; Mansour Ebrahimi; Mohammadreza Tahsili; Zahra Nurollah; Reyhaneh Ebrahimi Khaksefid; Mahdi Ebrahimi; Esmaeil Ebrahimie
Journal:  Front Plant Sci       Date:  2018-11-12       Impact factor: 5.753

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