Dynamic Visualization and Comparative Analysis of Multiple Collinear Genomic Data.

Jeremy Wang, Fernando Pardo-Manuel de Villena, Leonard McMillan
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引用次数: 4

Abstract

We have developed a novel tool for visualizing and analyzing multiple collinear genomes. Unlike previous genome browsers and viewers, ours allows for simultaneous and comparative analysis. Our browser is web-based and provides intuitive selection and interactive navigation about features of interest. Dynamic visualizations adjust to scale and data content making analysis at variable resolutions and of multiple data sets more informative. Our tool illustrates genome-sequence similarity through a mosaic of intervals representing local phylogeny, subspecific origin, and haplotype identity. Comparative analysis is facilitated through reordering and clustering of tracks, which can vary throughout the genome. In addition, we provide local phylogenetic trees as an alternate visualization to assess local variations. We demonstrate our genome browser for an extensive set of genomic data sets composed of almost 200 distinct mouse strains.

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多个共线性基因组数据的动态可视化与比较分析。
我们已经开发了一种新的工具,用于可视化和分析多个共线基因组。不像以前的基因组浏览器和查看器,我们的允许同时和比较分析。我们的浏览器是基于web的,并提供直观的选择和有关感兴趣的功能的交互式导航。动态可视化调整规模和数据内容,使分析在可变分辨率和多个数据集更翔实。我们的工具通过表示局部系统发育、亚特异性起源和单倍型同一性的马赛克间隔来说明基因组序列相似性。比较分析是通过重新排序和聚类的轨道,这可以改变整个基因组。此外,我们还提供了局部系统发育树作为评估局部变异的替代可视化方法。我们展示了我们的基因组浏览器的一套广泛的基因组数据集组成的近200个不同的小鼠品系。
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