碳水化合物结合蛋白和结合位点的计算预测

Q1 Biochemistry, Genetics and Molecular Biology Current Protocols in Protein Science Pub Date : 2018-08-14 DOI:10.1002/cpps.75
Huiying Zhao, Ghazaleh Taherzadeh, Yaoqi Zhou, Yuedong Yang
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引用次数: 3

摘要

蛋白质-碳水化合物相互作用在生物系统中是必不可少的,碳水化合物结合蛋白(CBPs)是设计抗病毒和抗癌药物时的重要靶点。由于与实验方法相关的高成本和困难,许多计算方法已被开发作为预测CBPs或碳水化合物结合位点的补充方法。然而,这些计算方法中的大多数都不是公开可用的。在此,我们对相关研究进行了全面的回顾,并展示了我们最近开发的两种生物信息学方法。SPOT-CBP方法是一种基于模板的基于结构的cbp检测方法,通过结构同源性搜索和基于知识的评分功能相结合来检测cbp。该方法除了可以准确预测CBPs外,还可以得到复杂的模型结构。此外,已经观察到使用同源建模的结构可以做出同样准确的预测,这大大扩展了其适用性。另一种方法是SPRINT-CBH,它是一种新的方法,通过使用序列信息和预测的结构特性直接从蛋白质序列中预测结合残基。这种方法不需要结构相似的模板,因此不受当前已知蛋白质-碳水化合物复合物结构数据库的限制。这两种互补的方法可在https://sparks-lab.org上获得。©2018 by John Wiley &儿子,Inc。
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Computational Prediction of Carbohydrate-Binding Proteins and Binding Sites

Protein-carbohydrate interaction is essential for biological systems, and carbohydrate-binding proteins (CBPs) are important targets when designing antiviral and anticancer drugs. Due to the high cost and difficulty associated with experimental approaches, many computational methods have been developed as complementary approaches to predict CBPs or carbohydrate-binding sites. However, most of these computational methods are not publicly available. Here, we provide a comprehensive review of related studies and demonstrate our two recently developed bioinformatics methods. The method SPOT-CBP is a template-based method for detecting CBPs based on structure through structural homology search combined with a knowledge-based scoring function. This method can yield model complex structure in addition to accurate prediction of CBPs. Furthermore, it has been observed that similarly accurate predictions can be made using structures from homology modeling, which has significantly expanded its applicability. The other method, SPRINT-CBH, is a de novo approach that predicts binding residues directly from protein sequences by using sequence information and predicted structural properties. This approach does not need structurally similar templates and thus is not limited by the current database of known protein-carbohydrate complex structures. These two complementary methods are available at https://sparks-lab.org. © 2018 by John Wiley & Sons, Inc.

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来源期刊
Current Protocols in Protein Science
Current Protocols in Protein Science Biochemistry, Genetics and Molecular Biology-Biochemistry
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期刊介绍: With the mapping of the human genome, more and more researchers are exploring protein structures and functions in living organisms. Current Protocols in Protein Science provides protein scientists, biochemists, molecular biologists, geneticists, and others with the first comprehensive suite of protocols for this growing field.
期刊最新文献
Issue Information De Novo Protein Design Using the Blueprint Builder in Rosetta Methods for Expression of Recombinant Proteins Using a Pichia pastoris Cell-Free System Histone Purification Combined with High-Resolution Mass Spectrometry to Examine Histone Post-Translational Modifications and Histone Variants in Caenorhabditis elegans Issue Information
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