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首页> 外文期刊>Proteins: Structure, Function, and Genetics >Absolute quality evaluation of protein model structures using statistical potentials with respect to the native and reference states.
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Absolute quality evaluation of protein model structures using statistical potentials with respect to the native and reference states.

机译:使用相对于天然和参考状态的统计潜力对蛋白质模型结构进行绝对质量评估。

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摘要

In protein structure prediction, it is crucial to evaluate the degree of native-likeness of given model structures. Statistical potentials extracted from protein structure data sets are widely used for such quality assessment problems, but they are only applicable for comparing different models of the same protein. Although various other methods, such as machine learning approaches, were developed to predict the absolute similarity of model structures to the native ones, they required a set of decoy structures in addition to the model structures. In this paper, we tried to reformulate the statistical potentials as absolute quality scores, without using the information from decoy structures. For this purpose, we regarded the native state and the reference state, which are necessary components of statistical potentials, as the good and bad standard states, respectively, and first showed that the statistical potentials can be regarded as the state functions, which relate a model structure to the native and reference states. Then, we proposed a standardized measure of protein structure, called native-likeness, by interpolating the score of a model structure between the native and reference state scores defined for each protein. The native-likeness correlated with the similarity to the native structures and discriminated the native structures from the models, with better accuracy than the raw score. Our results show that statistical potentials can quantify the native-like properties of protein structures, if they fully utilize the statistical information obtained from the data set.
机译:在蛋白质结构预测中,至关重要的是评估给定模型结构的天然相似程度。从蛋白质结构数据集中提取的统计潜力已广泛用于此类质量评估问题,但它们仅适用于比较同一蛋白质的不同模型。尽管开发了各种其他方法(例如机器学习方法)来预测模型结构与本机模型的绝对相似性,但除模型结构外,它们还需要一组诱饵结构。在本文中,我们尝试不使用诱饵结构的信息而将统计潜力重新表述为绝对质量得分。为此,我们将作为统计势必不可少的组成部分的原始状态和参考状态分别视为好和坏标准状态,并且首先表明,统计势可被视为状态函数,它们与原始和参考状态的模型结构。然后,我们通过在为每种蛋白质定义的自然状态和参考状态分数之间插入模型结构的分数,提出了一种蛋白质结构的标准化度量,称为自然相似性。原生相似度与与原生结构的相似性相关,并从模型中区分出原生结构,其准确性高于原始分数。我们的结果表明,如果统计潜力完全利用了从数据集中获得的统计信息,则可以量化蛋白质结构的天然样特性。

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