fRMSDAlign: Protein Sequence Alignment Using Predicted Local Structure Information for Pairs with Low Sequence Identity

H. Rangwala, G. Karypis
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引用次数: 3

Abstract

As the sequence identity between a pair of proteins decreases, alignment strategies that are based on sequence and/or sequence profiles become progressively less effective in identifying the correct structural correspondence between residue pairs. This significantly reduces the ability of comparative modelingbased approaches to build accurate structural models. Incorporating into the alignment process predicted information about the local structure of the protein holds the promise of significantly improving the alignment quality of distant proteins. This paper studies the impact on the alignment quality of a new class of predicted local structural features that measure how well fixed-length backbone fragments centered around each residue-pair align with each other. It presents a comprehensive experimental evaluation comparing these new features against existing state-of-the-art approaches utilizing profile-based and predicted secondary-structure information. It shows that for protein pairs with low sequence similarity (less than 12% sequence identity) the new structural features alone or in conjunction with profile-based information lead to alignments that are considerably better than those obtained by previous schemes.
fRMSDAlign:利用预测的局部结构信息对低序列同一性的蛋白质序列进行比对
随着一对蛋白质之间的序列一致性降低,基于序列和/或序列谱的比对策略在识别残基对之间正确的结构对应方面逐渐变得不那么有效。这大大降低了基于比较建模的方法构建精确结构模型的能力。将有关蛋白质局部结构的预测信息纳入比对过程有望显著提高远端蛋白质的比对质量。本文研究了一类新的预测局部结构特征对对齐质量的影响,这些特征测量以每个残基对为中心的固定长度骨干片段彼此对齐的程度。它提出了一个综合的实验评估,将这些新特征与现有的最先进的方法进行比较,利用基于剖面和预测的二级结构信息。结果表明,对于序列相似性较低的蛋白质对(序列一致性小于12%),单独使用新结构特征或结合基于谱的信息,比对结果明显优于以前的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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