A layout framework for genome-wide multiple sequence alignment graphs.

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Frontiers in bioinformatics Pub Date : 2024-08-16 eCollection Date: 2024-01-01 DOI:10.3389/fbinf.2024.1358374
Jeremias Schebera, Dirk Zeckzer, Daniel Wiegreffe
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Abstract

Sequence alignments are often used to analyze genomic data. However, such alignments are often only calculated and compared on small sequence intervals for analysis purposes. When comparing longer sequences, these are usually divided into shorter sequence intervals for better alignment results. This usually means that the order context of the original sequence is lost. To prevent this, it is possible to use a graph structure to represent the order of the original sequence on the alignment blocks. The visualization of these graph structures can provide insights into the structural variations of genomes in a semi-global context. In this paper, we propose a new graph drawing framework for representing gMSA data. We produce a hierarchical graph layout that supports the comparative analysis of genomes. Based on a reference, the differences and similarities of the different genome orders are visualized. In this work, we present a complete graph drawing framework for gMSA graphs together with the respective algorithms for each of the steps. Additionally, we provide a prototype and an example data set for analyzing gMSA graphs. Based on this data set, we demonstrate the functionalities of the framework using two examples.

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全基因组多序列比对图的布局框架。
序列比对通常用于分析基因组数据。然而,出于分析目的,这类比对通常只在较小的序列间隔上进行计算和比较。在比较较长的序列时,为了获得更好的比对结果,通常会将这些序列分成较短的序列间隔。这通常意味着原始序列的顺序上下文会丢失。为了避免这种情况,可以使用图形结构来表示比对块上原始序列的顺序。这些图结构的可视化可以让人们在半全局的背景下深入了解基因组的结构变化。在本文中,我们提出了一种新的图形绘制框架,用于表示 gMSA 数据。我们制作的分层图布局可支持基因组的比较分析。在参考文献的基础上,不同基因组顺序的异同被可视化。在这项工作中,我们提出了一个完整的 gMSA 图绘制框架,以及每个步骤的相应算法。此外,我们还提供了分析 gMSA 图的原型和示例数据集。在此数据集的基础上,我们通过两个示例演示了该框架的功能。
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