首页> 外文期刊>Heredity: An International Journal of Genetics >Inferring population size changes with sequence and SNP data: lessons from human bottlenecks.
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Inferring population size changes with sequence and SNP data: lessons from human bottlenecks.

机译:通过序列和SNP数据推断种群大小变化:来自人类瓶颈的教训。

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摘要

Reconstructing historical variation of population size from sequence and single-nucleotide polymorphism (SNP) data is valuable for understanding the evolutionary history of species. Changes in the population size of humans have been thoroughly investigated, and we review different methodologies of demographic reconstruction, specifically focusing on human bottlenecks. In addition to the classical approaches based on the site-frequency spectrum (SFS) or based on linkage disequilibrium, we also review more recent approaches that utilize atypical shared genomic fragments, such as identical by descent or homozygous segments between or within individuals. Compared with methods based on the SFS, these methods are well suited for detecting recent bottlenecks. In general, all these various methods suffer from bias and dependencies on confounding factors such as population structure or poor specification of the mutational and recombination processes, which can affect the demographic reconstruction. With the exception of SFS-based methods, the effects of confounding factors on the inference methods remain poorly investigated. We conclude that an important step when investigating population size changes rests on validating the demographic model by investigating to what extent the fitted demographic model can reproduce the main features of the polymorphism data.
机译:从序列和单核苷酸多态性(SNP)数据重建种群规模的历史变异对于理解物种的进化历史非常有价值。已经对人类人口规模的变化进行了深入研究,我们回顾了人口统计重建的不同方法,特别关注了人类瓶颈。除了基于位频谱(SFS)或基于连锁不平衡的经典方法外,我们还回顾了利用非典型共享基因组片段的最新方法,例如通过个体之间或内部的血统或纯合片段进行同源性鉴定。与基于SFS的方法相比,这些方法非常适合检测最近的瓶颈。通常,所有这些方法都存在偏差和对混杂因素的依赖,例如人口结构或突变和重组过程的不完善,这可能会影响人口统计重建。除了基于SFS的方法外,混杂因素对推理方法的影响仍然研究不足。我们得出结论,调查人口规模变化时的重要步骤在于通过调查拟合的人口模型可以在多大程度上再现多态性数据的主要特征来验证人口模型。

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