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Building Ultra-High-Density Linkage Maps Based on Efficient Filtering of Trustable Markers

机译:基于可信赖标记的有效过滤构建超高密度链接图

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摘要

The study is focused on addressing the problem of building genetic maps in the presence of ∼103–104 of markers per chromosome. We consider a spectrum of situations with intrachromosomal heterogeneity of recombination rate, different level of genotyping errors, and missing data. In the ideal scenario of the absence of errors and missing data, the majority of markers should appear as groups of cosegregating markers (“twins”) representing no challenge for map construction. The central aspect of the proposed approach is to take into account the structure of the marker space, where each twin group (TG) and singleton markers are represented as points of this space. The confounding effect of genotyping errors and missing data leads to reduction of TG size, but upon a low level of these effects surviving TGs can still be used as a source of reliable skeletal markers. Increase in the level of confounding effects results in a considerable decrease in the number or even disappearance of usable TGs and, correspondingly, of skeletal markers. Here, we show that the paucity of informative markers can be compensated by detecting kernels of markers in the marker space using a clustering procedure, and demonstrate the utility of this approach for high-density genetic map construction on simulated and experimentally obtained genotyping datasets.
机译:该研究的重点是解决在每条染色体上存在大约10 3 –10 4 标记的情况下构建遗传图谱的问题。我们考虑了一系列染色体重组率异质性,基因分型错误水平不同以及数据缺失的情况。在没有错误和数据丢失的理想情况下,大多数标记应显示为一组共同分离的标记(“双胞胎”),这对地图构造没有挑战。提出的方法的中心方面是考虑标记空间的结构,其中每个双胞胎组(TG)和单例标记都表示为该空间的点。基因分型错误和数据丢失的混杂效应导致TG尺寸减小,但是在这些效应水平较低的情况下,尚存的TG仍可以用作可靠的骨骼标记物的来源。混杂效应水平的提高会导致可用TG的数量甚至消失,甚至骨骼标记也相应地消失。在这里,我们表明,可以通过使用聚类程序检测标记空间中标记的核来补偿信息性标记的不足,并证明该方法可用于在模拟和实验获得的基因分型数据集上进行高密度遗传图谱构建。

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