首页> 外文期刊>Nucleic Acids Research >Detecting species-site dependencies in large multiple sequence alignments.
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Detecting species-site dependencies in large multiple sequence alignments.

机译:在大型多个序列比对中检测物种-位置依赖性。

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摘要

Multiple sequence alignments (MSAs) are one of the most important sources of information in sequence analysis. Many methods have been proposed to detect, extract and visualize their most significant properties. To the same extent that site-specific methods like sequence logos successfully visualize site conservations and sequence-based methods like clustering approaches detect relationships between sequences, both types of methods fail at revealing informational elements of MSAs at the level of sequence-site interactions, i.e. finding clusters of sequences and sites responsible for their clustering, which together account for a high fraction of the overall information of the MSA. To fill this gap, we present here a method that combines the Fisher score-based embedding of sequences from a profile hidden Markov model (pHMM) with correspondence analysis. This method is capable of detecting and visualizing group-specific or conflicting signals in an MSA and allows for a detailed explorative investigation of alignments of any size tractable by pHMMs. Applications of our methods are exemplified on an alignment of the Neisseria surface antigen LP2086, where it is used to detect sites of recombinatory horizontal gene transfer and on the vitamin K epoxide reductase family to distinguish between evolutionary and functional signals.
机译:多重序列比对(MSA)是序列分析中最重要的信息来源之一。已经提出了许多检测,提取和可视化其最重要特性的方法。在某种程度上,特定于位点的方法(如序列徽标)成功地可视化了位点保守性,而基于序列的方法(如聚类方法)检测了序列之间的关系,两种方法都无法在序列-位点相互作用的水平上揭示MSA的信息元素,即查找负责其聚类的序列和位点的聚类,这些聚类占了MSA总体信息的很大一部分。为了填补这一空白,我们在这里提出了一种方法,该方法将基于概要信息的隐马尔可夫模型(pHMM)中基于Fisher分数的序列嵌入与对应分析相结合。这种方法能够检测和可视化MSA中特定于组或冲突的信号,并允许对pHMM可以处理的任何大小的比对进行详细的探索性研究。我们的方法的应用以奈瑟氏球菌表面抗原LP2086的比对为例,该比对用于检测重组水平基因转移的位点和维生素K环氧还原酶家族以区分进化信号和功能信号。

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