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Vorescore—fold recognition improved by rescoring of protein structure models

机译:Vorescore-通过记录蛋白质结构模型改善了折叠识别

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摘要

>Summary: The identification of good protein structure models and their appropriate ranking is a crucial problem in structure prediction and fold recognition. For many alignment methods, rescoring of alignment-induced models using structural information can improve the separation of useful and less useful models as compared with the alignment score. Vorescore, a template-based protein structure model rescoring system is introduced. The method scores the model structure against the template used for the modeling using Vorolign. The method works on models from different alignment methods and incorporates both knowledge from the prediction method and the rescoring.>Results: The performance of Vorescore is evaluated in a large-scale and difficult protein structure prediction context. We use different threading methods to create models for 410 targets, in three scenarios: (i) family members are contained in the template set; (ii) superfamily members (but no family members); and (iii) only fold members (but no family or superfamily members). In all cases Vorescore improves significantly (e.g. 40% on both Gotoh and HHalign at the fold level) on the model quality, and clearly outperforms the state-of-the-art physics-based model scoring system Rosetta. Moreover, Vorescore improves on other successful rescoring approaches such as Pcons and ProQ. In an additional experiment we add high-quality models based on structural alignments to the set, which allows Vorescore to improve the fold recognition rate by another 50%.>Availability: All models of the test set (about 2 million, 44 GB gzipped) are available upon request.>Contact: ;
机译:>总结:好的蛋白质结构模型的识别及其适当的排名是结构预测和折叠识别中的关键问题。对于许多比对方法,与比对得分相比,使用结构信息对比对诱导的模型进行记录可以改善有用和较不有用的模型的分离。介绍了基于模板的蛋白质结构模型记录系统Vorescore。该方法对照使用Vorolign进行建模的模板对模型结构进行评分。该方法适用于来自不同比对方法的模型,并结合了预测方法和预测方法的知识。>结果:Vorescore的性能是在大规模且困难的蛋白质结构预测上下文中进行评估的。在三种情况下,我们使用不同的线程化方法为410个目标创建模型:(i)家族成员包含在模板集中; (ii)超家族成员(但无家族成员); (iii)仅折叠成员(不包括家庭成员或超家族成员)。在所有情况下,Vorescore的模型质量都有显着改善(例如Gotoh和HHalign均达到40%),并且明显优于基于物理学的最新模型评分系统Rosetta。此外,Vorescore改进了其他成功的计分方法,例如Pcons和ProQ。在另一个实验中,我们向该集合中添加了基于结构对齐的高质量模型,这使Vorescore可以将折叠识别率再提高50%。>可用性::测试集的所有模型(约2个百万,已压缩44 GB)。>联系人:

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