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Linkage Analysis and Haplotype Phasing in Experimental Autopolyploid Populations with High Ploidy Level Using Hidden Markov Models

机译:使用隐马尔可夫模型的高倍体水平实验多倍体群体的连锁分析和单倍型阶段

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摘要

Modern SNP genotyping technologies allow measurement of the relative abundance of different alleles for a given locus and consequently estimation of their allele dosage, opening a new road for genetic studies in autopolyploids. Despite advances in genetic linkage analysis in autotetraploids, there is a lack of statistical models to perform linkage analysis in organisms with higher ploidy levels. In this paper, we present a statistical method to estimate recombination fractions and infer linkage phases in full-sib populations of autopolyploid species with even ploidy levels for a set of SNP markers using hidden Markov models. Our method uses efficient two-point procedures to reduce the search space for the best linkage phase configuration and reestimate the final parameters by maximizing the likelihood of the Markov chain. To evaluate the method, and demonstrate its properties, we rely on simulations of autotetraploid, autohexaploid and autooctaploid populations and on a real tetraploid potato data set. The results show the reliability of our approach, including situations with complex linkage phase scenarios in hexaploid and octaploid populations.
机译:现代SNP基因分型技术可以测量给定基因座的不同等位基因的相对丰度,从而估算它们的等位基因剂量,为同源多倍体的遗传研究开辟了一条新道路。尽管在同源四倍体的遗传连锁分析方面取得了进步,但缺乏在具有较高倍性水平的生物体中进行连锁分析的统计模型。在本文中,我们提出了一种统计方法,使用隐藏的马尔可夫模型,估计了具有同倍性水平的同倍体水平的全倍体物种的全同胞种群的重组分数和推断的连锁相。我们的方法使用有效的两点程序来减少用于最佳链接阶段配置的搜索空间,并通过最大化马尔可夫链的似然性来重新估计最终参数。为了评估该方法并证明其特性,我们依靠对四倍体,自六倍体和自八倍体种群的模拟以及真实的四倍体马铃薯数据集。结果表明,我们的方法的可靠性,包括在六倍体和八倍体群体中具有复杂连锁相的情况。

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