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首页> 外文期刊>BMC Bioinformatics >AlloPred: prediction of allosteric pockets on proteins using normal mode perturbation analysis
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AlloPred: prediction of allosteric pockets on proteins using normal mode perturbation analysis

机译:AlloPred:使用正常模式扰动分析预测蛋白质上的变构口袋

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Background Despite being hugely important in biological processes, allostery is poorly understood and no universal mechanism has been discovered. Allosteric drugs are a largely unexplored prospect with many potential advantages over orthosteric drugs. Computational methods to predict allosteric sites on proteins are needed to aid the discovery of allosteric drugs, as well as to advance our fundamental understanding of allostery. Results AlloPred, a novel method to predict allosteric pockets on proteins, was developed. AlloPred uses perturbation of normal modes alongside pocket descriptors in a machine learning approach that ranks the pockets on a protein. AlloPred ranked an allosteric pocket top for 23 out of 40 known allosteric proteins, showing comparable and complementary performance to two existing methods. In 28 of 40 cases an allosteric pocket was ranked first or second. The AlloPred web server, freely available at http://www.sbg.bio.ic.ac.uk/allopred/home , allows visualisation and analysis of predictions. The source code and dataset information are also available from this site. Conclusions Perturbation of normal modes can enhance our ability to predict allosteric sites on proteins. Computational methods such as AlloPred assist drug discovery efforts by suggesting sites on proteins for further experimental study.
机译:背景技术尽管在生物过程中极为重要,但对变构的了解却很少,也没有发现普遍机制。别构药物是一个尚未开发的前景,与正构药物相比具有许多潜在的优势。需要计算方法来预测蛋白质上的变构位点,以帮助发现变构药物,以及增进我们对变构的基本理解。结果开发了一种预测蛋白质上变构口袋的新方法AlloPred。 AlloPred在机器学习方法中使用正常模式的扰动以及口袋描述符,从而对蛋白质的口袋进行排名。 AlloPred在40种已知的变构蛋白质中,有23种在变构口袋排名中名列前茅,显示出与两种现有方法相当和互补的性能。在40个案例中,有28个的变构口袋排名第一或第二。可从http://www.sbg.bio.ic.ac.uk/allopred/home免费获得的AlloPred Web服务器,可以对预测进行可视化和分析。源代码和数据集信息也可从该站点获得。结论正常模式的扰动可以增强我们预测蛋白质变构位点的能力。诸如AlloPred之类的计算方法通过提示蛋白质上的位点以进行进一步的实验研究来辅助药物发现工作。

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