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首页> 外文期刊>Proteins: Structure, Function, and Genetics >TASSER_low-zsc: an approach to improve structure prediction using low z-score-ranked templates.
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TASSER_low-zsc: an approach to improve structure prediction using low z-score-ranked templates.

机译:TASSER_low-zsc:一种使用低z得分排名的模板来改善结构预测的方法。

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摘要

In a variety of threading methods, often poorly ranked (low z-score) templates have good alignments. Here, a new method, TASSER_low-zsc that identifies these low z-score-ranked templates to improve protein structure prediction accuracy, is described. The approach consists of clustering of threading templates by affinity propagation on the basis of structural similarity (thread_cluster) followed by TASSER modeling, with final models selected by using a TASSER_QA variant. To establish the generality of the approach, templates provided by two threading methods, SP(3) and SPARKS(2), are examined. The SP(3) and SPARKS(2) benchmark datasets consist of 351 and 357 medium/hard proteins (those with moderate to poor quality templates and/or alignments) of length < or =250 residues, respectively. For SP(3) medium and hard targets, using thread_cluster, the TM-scores of the best template improve by approximately 4 and 9% over the original set (without low z-score templates) respectively; after TASSER modeling/refinement and ranking, the best model improves by approximately 7 and 9% over the best model generated with the original template set. Moreover, TASSER_low-zsc generates 22% (43%) more foldable medium (hard) targets. Similar improvements are observed with low-ranked templates from SPARKS(2). The template clustering approach could be applied to other modeling methods that utilize multiple templates to improve structure prediction.
机译:在各种线程方法中,排名较低(z得分较低)的模板通常具有良好的对齐方式。在这里,描述了一种新方法TASSER_low-zsc,该方法识别这些低z得分排名的模板以提高蛋白质结构预测的准确性。该方法包括根据结构相似性(thread_cluster)通过亲和力传播对线程模板进行聚类,然后进行TASSER建模,并使用TASSER_QA变体选择最终模型。为了建立该方法的通用性,将检查由两个线程方法SP(3)和SPARKS(2)提供的模板。 SP(3)和SPARKS(2)基准数据集分别由351个和357个中等/硬蛋白(具有中等至较差质量的模板和/或比对的蛋白)构成,长度分别小于或等于250个残基。对于SP(3)中目标和硬目标,使用thread_cluster,最佳模板的TM得分分别比原始集合(没有低z得分模板)提高约4%和9%;经过TASSER建模/优化和排名后,最佳模型比原始模板集生成的最佳模型提高了约7%和9%。此外,TASSER_low-zsc可产生22%(43%)的更多可折叠中(硬)目标。使用SPARKS(2)的低排名模板可以观察到类似的改进。模板聚类方法可以应用于利用多个模板来改善结构预测的其他建模方法。

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