AlignScape, displaying sequence similarity using self-organizing maps

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
I. Filella-Merce, Vincent Mallet, Eric Durand, Michael Nilges, G. Bouvier, Riccardo Pellarin
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引用次数: 0

Abstract

The current richness of sequence data needs efficient methodologies to display and analyze the complexity of the information in a compact and readable manner. Traditionally, phylogenetic trees and sequence similarity networks have been used to display and analyze sequences of protein families. These methods aim to shed light on key computational biology problems such as sequence classification and functional inference. Here, we present a new methodology, AlignScape, based on self-organizing maps. AlignScape is applied to three large families of proteins: the kinases and GPCRs from human, and bacterial T6SS proteins. AlignScape provides a map of the similarity landscape and a tree representation of multiple sequence alignments These representations are useful to display, cluster, and classify sequences as well as identify functional trends. The efficient GPU implementation of AlignScape allows the analysis of large MSAs in a few minutes. Furthermore, we show how the AlignScape analysis of proteins belonging to the T6SS complex can be used to predict coevolving partners.
AlignScape,使用自组织图显示序列相似性
当前丰富的序列数据需要高效的方法,以简洁易读的方式显示和分析复杂的信息。传统上,系统发生树和序列相似性网络被用来显示和分析蛋白质家族的序列。这些方法旨在揭示序列分类和功能推断等关键计算生物学问题。在此,我们介绍一种基于自组织图的新方法 AlignScape。AlignScape 适用于三个大型蛋白质家族:人类的激酶和 GPCR,以及细菌的 T6SS 蛋白。AlignScape 提供了相似性图谱和多序列比对的树形表示法,这些表示法有助于显示、聚类和分类序列,以及识别功能趋势。AlignScape 的高效 GPU 实现允许在几分钟内分析大型 MSA。此外,我们还展示了如何利用 AlignScape 分析属于 T6SS 复合体的蛋白质来预测共同进化的伙伴。
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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CiteScore
2.60
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0.00%
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