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本文引用的文献

1
Constructing patch-based ligand-binding pocket database for predicting function of proteins.基于补丁的配体结合口袋数据库构建用于预测蛋白质功能。
BMC Bioinformatics. 2012 Mar 13;13 Suppl 2(Suppl 2):S7. doi: 10.1186/1471-2105-13-S2-S7.
2
Molecular surface representation using 3D Zernike descriptors for protein shape comparison and docking.利用 3D Zernike 描述符进行分子表面表示,以进行蛋白质形状比较和对接。
Curr Protein Pept Sci. 2011 Sep;12(6):520-30. doi: 10.2174/138920311796957612.
3
Binding ligand prediction for proteins using partial matching of local surface patches.利用局部表面斑块的部分匹配进行蛋白质结合配体预测。
Int J Mol Sci. 2010;11(12):5009-26. doi: 10.3390/ijms11125009. Epub 2010 Dec 6.
4
COMBREX: COMputational BRidge to EXperiments.COMBREX:计算桥梁到实验。
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Fingerprint-based structure retrieval using electron density.基于电子密度的指纹结构检索。
Proteins. 2011 Mar;79(3):1002-9. doi: 10.1002/prot.22941. Epub 2011 Jan 3.
6
Improved protein surface comparison and application to low-resolution protein structure data.改进的蛋白质表面比较及其在低分辨率蛋白质结构数据中的应用。
BMC Bioinformatics. 2010 Dec 14;11 Suppl 11(Suppl 11):S2. doi: 10.1186/1471-2105-11-S11-S2.
7
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8
Real-time ligand binding pocket database search using local surface descriptors.使用局部表面描述符进行实时配体结合口袋数据库搜索。
Proteins. 2010 Jul;78(9):2007-28. doi: 10.1002/prot.22715.
9
A new protein binding pocket similarity measure based on comparison of clouds of atoms in 3D: application to ligand prediction.一种新的基于 3D 原子云比较的蛋白质结合口袋相似性度量方法:在配体预测中的应用。
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Computational modeling of structure-function of g protein-coupled receptors with applications for drug design.计算建模研究 G 蛋白偶联受体的结构-功能及其在药物设计中的应用。
Curr Med Chem. 2010;17(12):1167-80. doi: 10.2174/092986710790827807.

通过表面斑块比较检测非同源蛋白质中的局部配体结合位点相似性。

Detecting local ligand-binding site similarity in nonhomologous proteins by surface patch comparison.

机构信息

Department of Computer Science, Purdue University, West Lafayette, Indiana 47907, USA.

出版信息

Proteins. 2012 Apr;80(4):1177-95. doi: 10.1002/prot.24018. Epub 2012 Jan 24.

DOI:10.1002/prot.24018
PMID:22275074
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3294165/
Abstract

Functional elucidation of proteins is one of the essential tasks in biology. Function of a protein, specifically, small ligand molecules that bind to a protein, can be predicted by finding similar local surface regions in binding sites of known proteins. Here, we developed an alignment free local surface comparison method for predicting a ligand molecule which binds to a query protein. The algorithm, named Patch-Surfer, represents a binding pocket as a combination of segmented surface patches, each of which is characterized by its geometrical shape, the electrostatic potential, the hydrophobicity, and the concaveness. Representing a pocket by a set of patches is effective to absorb difference of global pocket shape while capturing local similarity of pockets. The shape and the physicochemical properties of surface patches are represented using the 3D Zernike descriptor, which is a series expansion of mathematical 3D function. Two pockets are compared using a modified weighted bipartite matching algorithm, which matches similar patches from the two pockets. Patch-Surfer was benchmarked on three datasets, which consist in total of 390 proteins that bind to one of 21 ligands. Patch-Surfer showed superior performance to existing methods including a global pocket comparison method, Pocket-Surfer, which we have previously introduced. Particularly, as intended, the accuracy showed large improvement for flexible ligand molecules, which bind to pockets in different conformations.

摘要

蛋白质功能阐明是生物学的基本任务之一。具体来说,通过在已知蛋白质的结合位点中寻找相似的局部表面区域,可以预测蛋白质与小分子配体的结合功能。在这里,我们开发了一种无对齐的局部表面比较方法,用于预测与查询蛋白结合的配体分子。该算法名为 Patch-Surfer,它将结合口袋表示为分段表面补丁的组合,每个补丁都由其几何形状、静电势、疏水性和凹陷性来描述。用一组补丁来表示口袋可以有效地吸收全局口袋形状的差异,同时捕捉口袋的局部相似性。表面补丁的形状和物理化学性质使用 3D Zernike 描述符表示,它是数学 3D 函数的级数展开。使用改进的加权二分匹配算法比较两个口袋,该算法从两个口袋中匹配相似的补丁。在三个数据集上对 Patch-Surfer 进行了基准测试,这些数据集共包含 390 个与 21 种配体之一结合的蛋白质。Patch-Surfer 的性能优于包括我们之前介绍的全局口袋比较方法 Pocket-Surfer 在内的现有方法。特别是,正如预期的那样,对于结合在不同构象口袋中的柔性配体分子,准确性有了很大的提高。