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GalaxyTBM: template-based modeling by building a reliable core and refining unreliable local regions

机译:GalaxyTBM:通过建立可靠的核心并优化不可靠的本地区域来进行基于模板的建模

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Background Protein structures can be reliably predicted by template-based modeling (TBM) when experimental structures of homologous proteins are available. However, it is challenging to obtain structures more accurate than the single best templates by either combining information from multiple templates or by modeling regions that vary among templates or are not covered by any templates. Results We introduce GalaxyTBM, a new TBM method in which the more reliable core region is modeled first from multiple templates and less reliable, variable local regions, such as loops or termini, are then detected and re-modeled by an ab initio method. This TBM method is based on “Seok-server,” which was tested in CASP9 and assessed to be amongst the top TBM servers. The accuracy of the initial core modeling is enhanced by focusing on more conserved regions in the multiple-template selection and multiple sequence alignment stages. Additional improvement is achieved by ab initio modeling of up to 3 unreliable local regions in the fixed framework of the core structure. Overall, GalaxyTBM reproduced the performance of Seok-server, with GalaxyTBM and Seok-server resulting in average GDT-TS of 68.1 and 68.4, respectively, when tested on 68 single-domain CASP9 TBM targets. For application to multi-domain proteins, GalaxyTBM must be combined with domain-splitting methods. Conclusion Application of GalaxyTBM to CASP9 targets demonstrates that accurate protein structure prediction is possible by use of a multiple-template-based approach, and ab initio modeling of variable regions can further enhance the model quality.
机译:当同源蛋白的实验结构可用时,可以通过基于模板的建模(TBM)可靠地预测背景蛋白的结构。然而,通过组合来自多个模板的信息或通过对模板之间变化或未被任何模板覆盖的区域进行建模来获得比单个最佳模板更准确的结构是具有挑战性的。结果我们引入了GalaxyTBM,这是一种新的TBM方法,其中首先从多个模板中对更可靠的核心区域进行建模,然后通过从头算起的方法检测并重新建模较不可靠的可变局部区域。这种TBM方法基于“ Seok服务器”,该服务器在CASP9中进行了测试,并被认为是顶级TBM服务器之一。通过将重点放在多模板选择和多个序列比对阶段中更保守的区域,可以提高初始核心建模的准确性。通过从头开始对核心结构的固定框架中的3个不可靠局部区域进行建模,可以实现进一步的改进。总体而言,在68个单域CASP9 TBM目标上进行测试时,GalaxyTBM再现了Seok服务器的性能,GalaxyTBM和Seok服务器的平均GDT-TS分别为68.1和68.4。为了应用于多域蛋白,GalaxyTBM必须与域分裂方法结合使用。结论GalaxyTBM在CASP9靶标上的应用表明,使用基于多模板的方法可以准确预测蛋白质结构,并且从头开始对可变区进行建模可以进一步提高模型质量。

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