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Combining machine learning systems and multiple docking simulation packages to improve docking prediction reliability for network pharmacology.结合机器学习系统和多个对接模拟软件包以提高网络药理学对接预测的可靠性。
PLoS One. 2013 Dec 31;8(12):e83922. doi: 10.1371/journal.pone.0083922. eCollection 2013.
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Protein-ligand binding site recognition using complementary binding-specific substructure comparison and sequence profile alignment.利用互补结合特异性亚结构比较和序列轮廓比对识别蛋白质-配体结合位点。
Bioinformatics. 2013 Oct 15;29(20):2588-95. doi: 10.1093/bioinformatics/btt447. Epub 2013 Aug 23.
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VinaMPI: facilitating multiple receptor high-throughput virtual docking on high-performance computers.VinaMPI:在高性能计算机上实现多个受体高通量虚拟对接的便利工具。
J Comput Chem. 2013 Sep 30;34(25):2212-21. doi: 10.1002/jcc.23367.
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Directory of useful decoys, enhanced (DUD-E): better ligands and decoys for better benchmarking.有用诱饵目录增强版(DUD-E):更好的配体和诱饵,用于更好的基准测试。
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8
Vibrational softening of a protein on ligand binding.配体结合导致蛋白质振动软化。
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通过机器学习模型中的系综对接纳入蛋白质动力学以预测药物结合。

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

作者信息

Alghamedy Fatemah, Bopaiah Jeevith, Jones Derek, Zhang Xiaofei, Weiss Heidi L, Ellingson Sally R

机构信息

University of Kentucky, Lexington, KY, USA.

出版信息

AMIA Jt Summits Transl Sci Proc. 2018 May 18;2017:26-34. eCollection 2018.

PMID:29888034
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5961778/
Abstract

Drug discovery is an expensive, lengthy, and sometimes dangerous process. The ability to make accurate computational predictions of drug binding would greatly improve the cost-effectiveness and safety of drug discovery and development. This study incorporates ensemble docking, the use of multiple protein conformations extracted from a molecular dynamics trajectory to perform docking calculations, with additional biomedical data sources and machine learning algorithms to improve the prediction of drug binding. We found that we can greatly increase the classification accuracy of an active vs a decoy compound using these methods over docking scores alone. The best results seen here come from having an individual protein conformation that produces binding features that correlate well with the active vs. decoy classification, in which case we achieve over 99% accuracy. The ability to confidently make accurate predictions on drug binding would allow for computational polypharamacological networks with insights into side-effect prediction, drug-repurposing, and drug efficacy.

摘要

药物发现是一个昂贵、漫长且有时危险的过程。对药物结合进行准确计算预测的能力将极大地提高药物发现和开发的成本效益及安全性。本研究将集成对接(即使用从分子动力学轨迹中提取的多个蛋白质构象进行对接计算)与其他生物医学数据源及机器学习算法相结合,以改进对药物结合的预测。我们发现,与仅使用对接分数相比,使用这些方法可以大大提高活性化合物与诱饵化合物的分类准确率。此处所见的最佳结果来自具有一种能产生与活性与诱饵分类相关性良好的结合特征的单个蛋白质构象,在这种情况下,我们实现了超过99%的准确率。对药物结合进行可靠准确预测的能力将有助于构建计算多药理学网络,从而深入了解副作用预测、药物再利用和药物疗效。