首页> 外文期刊>Proteins: Structure, Function, and Genetics >Protein model quality assessment prediction by combining fragment comparisons and a consensus C(alpha) contact potential.
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Protein model quality assessment prediction by combining fragment comparisons and a consensus C(alpha) contact potential.

机译:通过结合片段比较和一致的Cα接触电位来预测蛋白质模型的质量。

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摘要

In this work, we develop a fully automated method for the quality assessment prediction of protein structural models generated by structure prediction approaches such as fold recognition servers, or ab initio methods. The approach is based on fragment comparisons and a consensus C(alpha) contact potential derived from the set of models to be assessed and was tested on CASP7 server models. The average Pearson linear correlation coefficient between predicted quality and model GDT-score per target is 0.83 for the 98 targets, which is better than those of other quality assessment methods that participated in CASP7. Our method also outperforms the other methods by about 3% as assessed by the total GDT-score of the selected top models.
机译:在这项工作中,我们开发了一种全自动方法,用于通过结构预测方法(如折叠识别服务器或从头算方法)生成的蛋白质结构模型的质量评估预测。该方法基于片段比较和衍生自要评估的模型集的共识Cα接触电势,并在CASP7服务器模型上进行了测试。 98个目标的预测质量与每个目标的模型GDT得分之间的平均Pearson线性相关系数为0.83,这比参与CASP7的其他质量评估方法要好。根据所选顶级模型的总GDT得分评估,我们的方法也比其他方法好大约3%。

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