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FFAS-3D: improving fold recognition by including optimized structural features and template re-ranking

机译:FFAS-3D:通过包括优化的结构特征和模板重新排序来改善折叠识别

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摘要

>Motivation: Homology detection enables grouping proteins into families and prediction of their structure and function. The range of application of homology-based predictions can be significantly extended by using sequence profiles and incorporation of local structural features. However, incorporation of the latter terms varies a lot between existing methods, and together with many examples of distant relations not recognized even by the best methods, suggests that further improvements are still possible.>Results: Here we describe recent improvements to the fold and function assignment system (FFAS) method, including adding optimized structural features (experimental or predicted), ‘symmetrical’ Z-score calculation and re-ranking the templates with a neural network. The alignment accuracy in the new FFAS-3D is now 11% higher than the original and comparable with the most accurate template-based structure prediction algorithms. At the same time, FFAS-3D has high success rate at the Structural Classification of Proteins (SCOP) family, superfamily and fold levels. Importantly, FFAS-3D results are not highly correlated with other programs suggesting that it may significantly improve meta-predictions. FFAS-3D does not require 3D structures of the templates, as using predicted features instead of structure-derived does not lead to the decrease of accuracy. Because of that, FFAS-3D can be used for databases other than Protein Data Bank (PDB) such as Protein families database or Clusters of orthologous groups thus extending its applications to functional annotations of genomes and protein families.>Availability and implementation: FFAS-3D is available at .>Contact: >Supplementary Information:  are available at Bioinformatics online.
机译:>动机:通过同源性检测,可以将蛋白质分为多个家族,并预测其结构和功能。基于同源性的预测的应用范围可以通过使用序列图谱和结合局部结构特征来显着扩展。但是,后一种术语的并入在现有方法之间有很大差异,再加上许多即使是最好的方法也无法识别的遥远关系的例子,这表明仍然有可能进一步改进。>结果:这里我们描述折叠和功能分配系统(FFAS)方法的最新改进,包括添加优化的结构特征(实验性或预测性),“对称” Z分数计算以及使用神经网络对模板进行重新排序。现在,新型FFAS-3D的对准精度比原始FFAS-3D高11%,可与最精确的基于模板的结构预测算法相媲美。同时,FFAS-3D在蛋白质结构分类(SCOP)家族,超家族和折叠水平上具有很高的成功率。重要的是,FFAS-3D的结果与其他程序没有高度相关,这表明它可以显着改善元预测。 FFAS-3D不需要模板的3D结构,因为使用预测特征而不是结构派生不会导致准确性降低。因此,FFAS-3D可以用于蛋白质数据库(PDB)以外的数据库,例如蛋白质家族数据库或直系同源群,从而将其应用扩展到基因组和蛋白质家族的功能注释中。>可用性和实现: FFAS-3D可从以下网站获取。>联系方式: >补充信息:可从在线生物信息学获取。

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