3D- pp:发现保守的3D蛋白质模式的工具

Alejandro Valdés-Jiménez, Josep-L. Larriba-Pey, M. Reyes-Parada, Gabriel Núñez-Vivanco
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Binding site comparison for function prediction and pharmaceutical discovery. Curr Opin Struct Biol [Internet]. 2014 Apr [cited 2014 Sep 3];25:34–9. Available from: http://www.ncbi.nlm.nih.gov/pubmed/24878342 \n3. Nadzirin N, Gardiner EJ, Willett P, Artymiuk PJ, Firdaus-Raih M. SPRITE and ASSAM: Web servers for side chain 3D-motif searching in protein structures. Nucleic Acids Res. 2012;40(W1). \n4. Martinez-bazan N, Muntes-mulero V, Gomez-villamor S. DEX : High-Performance Exploration on Large Graphs for Information Retrieval. Artif Intell [Internet]. 2007;573–82. Available from: http://portal.acm.org/citation.cfm?doid=1321440.1321521 \n5. Nunez-Vivanco G, Valdes-Jimenez A, Besoain F, Reyes-Parada M. Geomfinder: A multi-feature identifier of similar three-dimensional protein patterns: A ligand-independent approach. 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引用次数: 1

摘要

大多数药物与不止一个分子靶标相互作用。这一事实通常会被视为药理学治疗的一个不希望的特征,然而,目前的药物发现趋势已经带来了希望,并在一些混杂药物中显示出了提高效率和疗效的努力。事实上,最近已经开发了几种方法来预测药物的多药理学特征。在这方面,蛋白质的结构获得了特别的兴趣。蛋白质的结构比它们的序列保守好几倍。此外,即使在两种蛋白质之间存在密切进化关系的情况下,它们的整体结构也可能不是守恒的,而只是共享部分三维(3D)模式,这在大多数情况下定义了它们的生物功能。有趣的是,已经开发了几种用于识别类似3D模式的工具,然而,通常需要已知的查询或仅考虑观察到的数据(例如PDB中的正交结合位点,注释基序,已知配体等)。然而,一些方法表明,即使没有功能残基的先验知识,3D氨基酸守恒也足以证明这些残基是蛋白质结构的活性位点或结合位点的一部分。因此,考虑到所有未知或未观察到的3D模式(例如变构结合位点),对于一组蛋白质结构之间假定的共同结合位点的发现,搜索和表征,可能比仅探索已知位点更有信息量。在这里,我们提出了3D- pp,一个新的免费访问web服务器,用于发现一组蛋白质结构中所有保守的3D氨基酸模式,包括来自x射线晶体学实验和计算机比较建模的蛋白质结构。3D-PP的预处理模块是用Python开发的,所有生成的数据都在一个可扩展的高性能图形数据库中自动处理和组织。参考文献(1 - 5) 张建军,张建军,张建军,等。多药联用技术在药物研发中的应用。医学化学[Internet]。2014; dx.doi.org/10.1021/jm5006463。可从:http://www.ncbi.nlm.nih.gov/pubmed/24946140。孔建军,Janežic .结合位点的比较与功能预测及药物发现。当前观点结构生物学[Internet]。2014 Apr[引2014 Sep 3]; 25:34-9。可从:http://www.ncbi.nlm.nih.gov/pubmed/24878342。李建军,李建军,李建军,李建军,李建军。基于Web服务器的蛋白质侧链三维基序搜索。核酸学报,2012;40(1)。4. 张建军,张建军,张建军。基于大图的信息检索方法研究[j]。Artif intel[互联网]。2007; 573 - 82。可从:http://portal.acm.org/citation.cfm?doid=1321440.1321521。张建军,张建军,李建军,等。基于gis的三维蛋白质结构特征识别方法研究。化工学报,2016;8(1)。
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3D-PP: a tool for discovering conserved 3D protein patterns
Most of drugs interact with more than one molecular target. This fact typically would be seen like as an undesired feature of a pharmacological treatment, however, current trends in drug discovery has put hope and several efforts in the improved efficiency and efficacy that have been showed by some promiscuous drugs. Indeed, several approaches for predict the polypharmacological profile of drugs have been recently developed. In this line, the structure of proteins has gained special interest. The structure of proteins is several times more conserved than their sequence. Moreover, even in those cases where a close evolutionary relationship exists between two proteins, it is possible that their global structures are not conserving, and only share partial three-dimensional (3D) patterns, which define in most cases, their biological functions. Interestingly, several tools have been developed for the identification of similar 3D patterns, however, usually demand a known query or only consider the observed data (e.g. orthosteric binding sites in PDB, annotated motif, known ligands, etc.). Nevertheless, some approaches shows that 3D amino acids conservation is a enough prove for consider these residues as part of an active site or a binding site of a protein structure, even when no prior knowledge of functional residues are available. Thus, considering all unknown or unobserved 3D patterns (e.g. allosteric binding sites), for the discovery, search and characterization of putative common binding sites between a set of protein structures, cold be more informative than explore only known sites. Here, we present 3D-PP, a new free access web server to discover all conserved 3D amino acid patterns among a set of protein structures including those coming from both, X-ray crystallographic experiments and in silico comparative modelling. The preprocessing modules of 3D-PP were developed in Python and all data generated are processed and organized automatically in a scalable high-performance graph database. References (1–5) 1. Anighoro A, Bajorath J, Rastelli G. Polypharmacology: Challenges and Opportunities in Drug Discovery. J Med Chem [Internet]. 2014;dx.doi.org/10.1021/jm5006463. Available from: http://www.ncbi.nlm.nih.gov/pubmed/24946140 2. Konc J, Janežic D. Binding site comparison for function prediction and pharmaceutical discovery. Curr Opin Struct Biol [Internet]. 2014 Apr [cited 2014 Sep 3];25:34–9. Available from: http://www.ncbi.nlm.nih.gov/pubmed/24878342 3. Nadzirin N, Gardiner EJ, Willett P, Artymiuk PJ, Firdaus-Raih M. SPRITE and ASSAM: Web servers for side chain 3D-motif searching in protein structures. Nucleic Acids Res. 2012;40(W1). 4. Martinez-bazan N, Muntes-mulero V, Gomez-villamor S. DEX : High-Performance Exploration on Large Graphs for Information Retrieval. Artif Intell [Internet]. 2007;573–82. Available from: http://portal.acm.org/citation.cfm?doid=1321440.1321521 5. Nunez-Vivanco G, Valdes-Jimenez A, Besoain F, Reyes-Parada M. Geomfinder: A multi-feature identifier of similar three-dimensional protein patterns: A ligand-independent approach. J Cheminform. 2016;8(1).
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