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首页> 外文期刊>Free Radical Biology and Medicine: The Official Journal of the Oxygen Society >Computational prediction of nsSNPs effects on protein function and structure, a prioritization approach for further in vitro studies applied to bovine GSTP1
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Computational prediction of nsSNPs effects on protein function and structure, a prioritization approach for further in vitro studies applied to bovine GSTP1

机译:NSSNPS对蛋白质功能和结构的影响,进一步的体外研究的优先化方法应用于牛GSTP1

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The development of high-throughput technologies in the last decade produced an exponential increase in the amount of biological data available. The case of redox biology and apoptosis is not an exception, and nowadays there is a need to integrate information from multiple "omics" studies. Therefore, validation of proposed discoveries is essential. However, the study in biological systems of the effect of the massive amounts of sequence variation data generated with next-generation sequencing (NGS) technologies can be a very difficult and expensive process. In this context, the present study aimed to demonstrate the advantages of a computational methodology to systematically analyze the structural and functional effects of protein variants, in order to prioritize further studies. This approach stands out for its easy implementation, low costs and low time consumed. First, the possible impact of mutations on protein structure and function was tested by a combination of tools based on evolutionary and structural information. Next, homology modeling was performed to predict and compare the 3D protein structures of unresolved amino acid sequences obtained from genomic resequencing. This analysis applied to the bovine GSTP1 allowed to determine that some of amino acid substitutions may generate important changes in protein structure and function. Moreover, the haplotype analysis highlighted three structure variants worthwhile studying through in vitro or in vivo experiments.
机译:在过去十年中的高通量技术的发展在可用的生物数据量中产生了指数增加。氧化还原生物学和细胞凋亡的情况并不是一个例外,现在需要从多个“OMIC”研究中集成信息。因此,拟议发现的验证至关重要。然而,使用下一代测序(NGS)技术产生的大量序列变异数据的生物系统的研究可以是非常困难和昂贵的过程。在这种情况下,本研究旨在证明计算方法的优点,以系统地分析蛋白质变异的结构和功能影响,以优先考虑进一步研究。这种方法脱颖而出,实现了易于实现,低成本和低耗时。首先,通过基于进化和结构信息的工具的组合测试突变对蛋白质结构和功能的可能影响。接下来,进行同源建模以预测和比较从基因组重构获得的未解决氨基酸序列的3D蛋白质结构。该分析适用于牛GSTP1,允许确定一些氨基酸取代可以产生蛋白质结构和功能的重要变化。此外,单倍型分析突出了三种结构变体,价值在体外或体内实验中研究。

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