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Quality assessment of protein model-structures based on structural and functional similarities

机译:基于结构和功能相似性的蛋白质模型结构的质量评估

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Background Experimental determination of protein 3D structures is expensive, time consuming and sometimes impossible. A gap between number of protein structures deposited in the World Wide Protein Data Bank and the number of sequenced proteins constantly broadens. Computational modeling is deemed to be one of the ways to deal with the problem. Although protein 3D structure prediction is a difficult task, many tools are available. These tools can model it from a sequence or partial structural information, e.g. contact maps. Consequently, biologists have the ability to generate automatically a putative 3D structure model of any protein. However, the main issue becomes evaluation of the model quality, which is one of the most important challenges of structural biology. Results GOBA - Gene Ontology-Based Assessment is a novel Protein Model Quality Assessment Program. It estimates the compatibility between a model-structure and its expected function. GOBA is based on the assumption that a high quality model is expected to be structurally similar to proteins functionally similar to the prediction target. Whereas DALI is used to measure structure similarity, protein functional similarity is quantified using standardized and hierarchical description of proteins provided by Gene Ontology combined with Wang's algorithm for calculating semantic similarity. Two approaches are proposed to express the quality of protein model-structures. One is a single model quality assessment method, the other is its modification, which provides a relative measure of model quality. Exhaustive evaluation is performed on data sets of model-structures submitted to the CASP8 and CASP9 contests. Conclusions The validation shows that the method is able to discriminate between good and bad model-structures. The best of tested GOBA scores achieved 0.74 and 0.8 as a mean Pearson correlation to the observed quality of models in our CASP8 and CASP9-based validation sets. GOBA also obtained the best result for two targets of CASP8, and one of CASP9, compared to the contest participants. Consequently, GOBA offers a novel single model quality assessment program that addresses the practical needs of biologists. In conjunction with other Model Quality Assessment Programs (MQAPs), it would prove useful for the evaluation of single protein models.
机译:背景技术蛋白质3D结构的实验确定是昂贵,费时的,并且有时是不可能的。世界蛋白质数据库中保存的蛋白质结构数量与测序蛋白质数量之间的差距不断扩大。计算建模被认为是解决该问题的方法之一。尽管蛋白质3D结构预测是一项艰巨的任务,但仍有许多工具可用。这些工具可以根据序列或部分结构信息(例如联系地图。因此,生物学家具有自动生成任何蛋白质的推定3D结构模型的能力。然而,主要问题变成了模型质量的评估,这是结构生物学最重要的挑战之一。结果GOBA-基于基因本体论的评估是一种新颖的蛋白质模型质量评估程序。它估计模型结构与其预期功能之间的兼容性。 GOBA基于以下假设:高质量模型的结构与蛋白质的功能与预测目标相似。 DALI用于衡量结构相似性,而蛋白质功能相似性则通过基因本体提供的标准化和层次化的蛋白质描述结合Wang的用于计算语义相似性的算法来量化。提出了两种方法来表达蛋白质模型结构的质量。一种是单一模型质量评估方法,另一种是其修改,它提供了模型质量的相对度量。对提交给CASP8和CASP9竞赛的模型结构数据集进行详尽评估。结论验证表明,该方法能够区分好的模型结构和坏的模型结构。经过测试的最佳GOBA得分与基于CASP8和CASP9的验证集中所观察到的模型质量的平均Pearson相关性分别为0.74和0.8。与比赛参与者相比,GOBA还获得了CASP8的两个目标和CASP9的一个目标的最佳结果。因此,GOBA提供了一种新颖的单一模型质量评估程序,可以满足生物学家的实际需求。与其他模型质量评估程序(MQAP)结合使用,对于评估单个蛋白质模型非常有用。

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