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首页> 外文期刊>Current medicinal chemistry >Using property based sequence motifs and 3D modeling to determine structure and functional regions of proteins.
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Using property based sequence motifs and 3D modeling to determine structure and functional regions of proteins.

机译:使用基于属性的序列基序和3D建模来确定蛋白质的结构和功能区域。

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Homology modeling has become an essential tool for studying proteins that are targets for medical drug design. This paper describes the approach we developed that combines sequence decomposition techniques with distance geometry algorithms for homology modeling to determine functionally important regions of proteins. We show here the application of these techniques to targets of medical interest chosen from those included in the CASP5 (Critical Assessment of Techniques for Protein Structure Prediction) competition, including the dihydroneopterin aldolase from Mycobacterium tuberculosis, RNase III of Thermobacteria maritima, and the NO-transporter nitrophorin from saliva of the bedbug Cimex lectularius. Physical chemical property (PCP) motifs, identified in aligned sequences with our MASIA program, can be used to select among different alignments returned by fold recognition servers. They can also be used to suggest functions for hypothetical proteins, as we illustrate for target T188. Once a suitable alignment has been made with the template, our modeling suite MPACK generates a series of possible models. The models can then be selected according to their match in areas known to be conserved in protein families. Alignments based on motifs can improve the structural matching of residues in the active site. The quality of the local structure of our 3D models near active sites or epitopes makes them useful aids for drug and vaccine design. Further, the PCP motif approach, when combined with a structural filter, can be a potent way to detect areas involved in activity and to suggest function for novel genome sequences.
机译:同源性建模已成为研究蛋白质的重要​​工具,蛋白质是医学药物设计的目标。本文介绍了我们开发的方法,该方法将序列分解技术与距离几何算法相结合进行同源性建模,以确定蛋白质的功能重要区域。我们在此处显示了这些技术在选自CASP5(蛋白质结构预测技术的关键评估)竞争中的医学目标中的应用,包括结核分枝杆菌的二氢蝶呤醛缩酶,海马嗜热菌的RNase III和NO-臭虫Cimex lectularius唾液中的转运蛋白。通过我们的MASIA程序以比对顺序进行识别的物理化学特性(PCP)主题可用于在折叠识别服务器返回的不同比对中进行选择。如我们对靶标T188的说明,它们还可用于建议假设蛋白的功能。与模板进行适当的对齐后,我们的建模套件MPACK会生成一系列可能的模型。然后可以根据它们在已知蛋白质家族中保守的区域中的匹配来选择模型。基于基序的比对可以改善活性位点中残基的结构匹配。我们的3D模型靠近活动位点或表位的局部结构的质量使其成为药物和疫苗设计的有用辅助工具。此外,当与结构过滤器结合使用时,PCP基序方法可能是一种有效的方法来检测参与活性的区域并建议新基因组序列的功能。

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