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LineUp: Statistical Detection of Chromosomal Homology With Application to Plant Comparative Genomics

机译:产品阵容:染色体同源性的统计检测及其在植物比较基因组学中的应用

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摘要

The identification of homologous regions between chromosomes forms the basis for studies of genome organization, comparative genomics, and evolutionary genomics. Identification of these regions can be based on either synteny or colinearity, but there are few methods to test statistically for significant evidence of homology. In the present study, we improve a preexisting method that used colinearity as the basis for statistical tests. Improvements include computational efficiency and a relaxation of the colinearity assumption. Two algorithms perform the method: FullPermutation, which searches exhaustively for runs of markers, and FastRuns, which trades faster run times for exhaustive searches. The algorithms described here are available in the LineUp package (). We explore the performance of both algorithms on simulated data and also on genetic map data from maize (Zea mays ssp. mays). The method has reasonable power to detect a homologous region; for example, in >90% of simulations, both algorithms detect a homologous region of 10 markers buried in a random background, even when the homologous regions have diverged by numerous inversion events. The methods were applied to four maize molecular maps. All maps indicate that the maize genome contains extensive regions of genomic duplication and multiplication. Nonetheless, maps differ substantially in the location of homologous regions, probably reflecting the incomplete nature of genetic map data. The variation among maps has important implications for evolutionary inference from genetic map data.
机译:染色体之间同源区域的鉴定为研究基因组组织,比较基因组学和进化基因组学奠定了基础。这些区域的识别可以基于同线性或共线性,但是很少有方法可以统计学地检测同源性的重要证据。在本研究中,我们改进了一种以共线性为统计检验基础的现有方法。改进之处包括计算效率和放宽共线性假设。有两种算法可以执行此方法:FullPermutation(用于彻底搜索标记的运行)和FastRuns(用于快速运行标记的交易)。 LineUp包()中提供了此处描述的算法。我们探索了两种算法在模拟数据以及玉米(Zea mays ssp。mays)遗传图谱数据上的性能。该方法具有检测同源区域的合理能力。例如,在> 90%的模拟中,即使当同源区域因众多反演事件而发散时,这两种算法都可以检测到10个标记埋在随机背景下的同源区域。将该方法应用于四个玉米分子图谱。所有图谱都表明玉米基因组包含广泛的基因组复制和繁殖区域。但是,图谱在同源区域的位置上有很大不同,可能反映了遗传图谱数据的不完整性质。图谱之间的差异对于根据遗传图谱数据进行进化推断具有重要意义。

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