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The effect of sampling from subdivided populations on species identification with DNA barcodes using a Bayesian statistical approach

机译:使用贝叶斯统计方法从细分种群中采样对DNA条码识别物种的影响

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摘要

Barcoding is an initiative to define a standard fragment of DNA to be used to assign sequences of unknown origin to existing known species whose sequences are recorded in databases. This is a difficult task when species are closely related and individuals of these species might have more than one origin. Using a previously introduced Bayesian statistical tree-less assignment algorithm based on segregating sites, we examine how it functions in the presence of hidden population subdivision with closely related species using simulations. Not surprisingly, adding samples to the database from a greater proportion of the species range leads to a consistently higher number of accurate results. Without such samples, query sequences that originate from outside of the sampled range are easily misinterpreted as coming from other species. However, we show that even the addition of a single sample from a different subpopulation is sufficient to greatly increase the probability of placement of unknown queries into the correct species group. This study highlights the importance of broad sampling, even with five reference samples per species, in the creation of a reference database.
机译:条形码是一种主动行动,旨在定义标准的DNA片段,该片段将用于将未知来源的序列分配给现有的已知物种,并将其序列记录在数据库中。当物种密切相关且这些物种的个体可能有多个起源时,这是一项艰巨的任务。使用先前介绍的基于隔离站点的贝叶斯统计无树分配算法,我们使用模拟方法研究了它在具有密切相关物种的隐藏种群细分情况下的功能。毫不奇怪,从更大范围的物种范围中将样本添加到数据库中会导致始终如一的更高数量的准确结果。如果没有此类样本,则源自采样范围之外的查询序列很容易被误解为来自其他物种。但是,我们显示,即使添加来自不同子种群的单个样本也足以大大增加将未知查询放入正确物种组的可能性。这项研究强调了在建立参考数据库时,广泛采样的重要性,即使每个物种有五个参考样本。

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