Literature DB >> 19903486

Predict potential drug targets from the ion channel proteins based on SVM.

Chen Huang1, Ruijie Zhang, Zhiqiang Chen, Yongshuai Jiang, Zhenwei Shang, Peng Sun, Xuehong Zhang, Xia Li.   

Abstract

The identification of molecular targets is a critical step in the drug discovery and development process. Ion channel proteins represent highly attractive drug targets implicated in a diverse range of disorders, in particular in the cardiovascular and central nervous systems. Due to the limits of experimental technique and low-throughput nature of patch-clamp electrophysiology, they remain a target class waiting to be exploited. In our study, we combined three types of protein features, primary sequence, secondary structure and subcellular localization to predict potential drug targets from ion channel proteins applying classical support vector machine (SVM) method. In addition, our prediction comprised two stages. In stage 1, we predicted ion channel target proteins based on whole-genome target protein characteristics. Firstly, we performed feature selection by Mann-Whitney U test, then made predictions to identify potential ion channel targets by SVM and designed a new evaluating indicator Q to prioritize results. In stage 2, we made a prediction based on known ion channel target protein characteristics. Genetic algorithm was used to select features and SVM was used to predict ion channel targets. Then, we integrated results of two stages, and found that five ion channel proteins appeared in both prediction results including CGMP-gated cation channel beta subunit and Gamma-aminobutyric acid receptor subunit alpha-5, etc., and four of which were relative to some nerve diseases. It suggests that these five proteins are potential targets for drug discovery and our prediction strategies are effective. (c) 2009 Elsevier Ltd. All rights reserved.

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Year:  2009        PMID: 19903486     DOI: 10.1016/j.jtbi.2009.11.002

Source DB:  PubMed          Journal:  J Theor Biol        ISSN: 0022-5193            Impact factor:   2.691


  6 in total

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2.  Informatics Approaches for Predicting, Understanding, and Testing Cancer Drug Combinations.

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4.  In silico re-identification of properties of drug target proteins.

Authors:  Baeksoo Kim; Jihoon Jo; Jonghyun Han; Chungoo Park; Hyunju Lee
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5.  XGB-DrugPred: computational prediction of druggable proteins using eXtreme gradient boosting and optimized features set.

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Review 6.  Deorphanizing the human transmembrane genome: A landscape of uncharacterized membrane proteins.

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  6 in total

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