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Estimating pairwise relatedness in a small sample of individuals

机译:估计个人小样本中的脚向相关性

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摘要

The genetic relatedness between individuals because of their recent common ancestry is now routinely estimated from marker genotype data in molecular ecology, evolutionary biology and conservation studies. The estimators developed for this purpose assume that marker allele frequencies in a population are known without errors. Unfortunately, however, these frequencies, upon which both the definition and the estimation of relatedness are based, are rarely known in reality. Frequently, the only data available in a relatedness analysis are a sample of multilocus genotypes from which both allele frequencies and relatedness must be deduced. Furthermore, because of various constraints, sample sizes of individuals can be quite small (say < 50 individuals) in practice. This study shows, for the first time, that the widely used relatedness estimators become severely biased when they use allele frequencies calculated from an extremely small sample (say < 10 individuals). The extent of bias depends on the sample size, the (unknown) population allele frequencies, the actual relatedness and the estimators. It also shows that relatedness estimators become even more biased when they use allele frequencies calculated from a sample by omitting a focal pair of individuals whose relatedness is being estimated. This study modifies two estimators to suit small samples and shows, both analytically and by analysing simulated and empirical data, that the two modified estimators are much less biased, more precise and more accurate than the original estimators. These performance advantages of the modified estimators are shown to increase with a decreasing sample size of individuals and with an increasing value of actual relatedness.
机译:由于其最近的常见祖先,个人之间的遗传相关性来自分子生态学,进化生物学和保护研究中的标志物基因型数据常规估计。为此目的而开发的估计人假设人口中的标记等位基因频率是已知的没有错误。然而,遗憾的是,这些频率,其中定义和相关性估计是基于的,在现实中很少知道。通常,相关性分析中唯一可用的数据是多层基因型的样本,其中必须推导出等位基因频率和相关性。此外,由于各种限制,在实践中,个体的样本尺寸可以非常小(例如<50个体)。这项研究首次展示了广泛使用的相关性估计在使用从极小样本计算的等位基因频率时变得严重偏见(例如<10个体)。偏差的程度取决于样本大小,(未知)群体等位基因频率,实际相关性和估算。它还表明,当通过省略估计相关性的相关性的焦点对使用来自样品计算的等位基因频率时,相关性估计变得更加偏置。该研究修改了两种估计器以适应分析和通过分析模拟和经验数据的小型样本,并显示两个修改的估计器的偏置,更精确更准确,比原始估算值更加精确。这些改进估计器的这些性能优势显示随着个体的样本大小和增加的实际相关性值而增加。

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