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Ranking the quality of protein structure models using sidechain based network properties

机译:使用基于侧链的网络属性对蛋白质结构模型的质量进行排名

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摘要

Determining the correct structure of a protein given its sequence still remains an arduous task with many researchers working towards this goal. Most structure prediction methodologies result in the generation of a large number of probable candidates with the final challenge being to select the best amongst these. In this work, we have used Protein Structure Networks of native and modeled proteins in combination with Support Vector Machines to estimate the quality of a protein structure model and finally to provide ranks for these models. Model ranking is performed using regression analysis and helps in model selection from a group of many similar and good quality structures. Our results show that structures with a rank greater than 16 exhibit native protein-like properties while those below 10 are non-native like. The tool is also made available as a web-server( ), where, 5 modelled structures can be evaluated at a given time.
机译:要确定具有正确序列的蛋白质的正确结构仍然是一项艰巨的任务,许多研究人员正在努力实现这一目标。大多数结构预测方法会导致生成大量可能的候选对象,而最终的挑战是在这些候选对象中选择最好的候选对象。在这项工作中,我们将天然和建模蛋白质的蛋白质结构网络与支持向量机结合使用,以评估蛋白质结构模型的质量,并最终为这些模型提供排名。使用回归分析执行模型排名,并有助于从许多相似且质量良好的结构中选择模型。我们的结果表明,等级大于16的结构表现出天然的蛋白样特性,而低于10的结构则是非天然样的特性。该工具还可以作为web-server()使用,其中可以在给定时间评估5种建模结构。

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