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Improved alignment quality by combining evolutionary information predicted secondary structure and self-organizing maps

机译:通过结合进化信息预测的二级结构和自组织图来提高对准质量

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摘要

BackgroundProtein sequence alignment is one of the basic tools in bioinformatics. Correct alignments are required for a range of tasks including the derivation of phylogenetic trees and protein structure prediction. Numerous studies have shown that the incorporation of predicted secondary structure information into alignment algorithms improves their performance. Secondary structure predictors have to be trained on a set of somewhat arbitrarily defined states (e.g. helix, strand, coil), and it has been shown that the choice of these states has some effect on alignment quality. However, it is not unlikely that prediction of other structural features also could provide an improvement. In this study we use an unsupervised clustering method, the self-organizing map, to assign sequence profile windows to "structural states" and assess their use in sequence alignment.
机译:BackgroundProtein序列比对是生物信息学中的基本工具之一。一系列任务(包括系统树的衍生和蛋白质结构预测)需要正确的比对。大量研究表明,将预测的二级结构信息纳入比对算法可以提高其性能。二级结构预测变量必须在一组任意定义的状态(例如,螺旋,链,线圈)上进行训练,并且已经表明,选择这些状态会对对齐质量产生一定的影响。但是,对其他结构特征的预测也可以提供改进的可能性不大。在这项研究中,我们使用一种无​​监督的聚类方法,即自组织图,将序列概况窗口分配给“结构状态”,并评估它们在序列比对中的用途。

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