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Minimal haplotype tagging.

机译:最小的单体型标记。

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摘要

The high frequency of single-nucleotide polymorphisms (SNPs) in the human genome presents an unparalleled opportunity to track down the genetic basis of common diseases. At the same time, the sheer number of SNPs also makes unfeasible genomewide disease association studies. The haplotypic nature of the human genome, however, lends itself to the selection of a parsimonious set of SNPs, called haplotype tagging SNPs (htSNPs), able to distinguish the haplotypic variations in a population. Current approaches rely on statistical analysis of transmission rates to identify htSNPs. In contrast to these approximate methods, this contribution describes an exact, analytical, and lossless method, called BEST (Best Enumeration of SNP Tags), able to identify the minimum set of SNPs tagging an arbitrary set of haplotypes from either pedigree or independent samples. Our results confirm that a small proportion of SNPs is sufficient to capture the haplotypic variations in a population and that this proportion decreases exponentially as the haplotype length increases. We used BEST to tag the haplotypes of 105 genes in an African-American and a European-American sample. An interesting finding of this analysis is that the vast majority (95%) of the htSNPs in the European-American sample is a subset of the htSNPs of the African-American sample. This result seems to provide further evidence that a severe bottleneck occurred during the founding of Europe and the conjectured "Out of Africa" event.
机译:人类基因组中单核苷酸多态性(SNP)的高频率为追踪常见疾病的遗传基础提供了无与伦比的机会。同时,单核苷酸多态性的绝对数量也使不可行的全基因组疾病关联研究。然而,人类基因组的单倍型性质使其适合选择一组简约的SNP,称为单倍型标记SNP(htSNP),它们能够区分群体中的单倍型变异。当前的方法依赖于传输速率的统计分析来识别htSNP。与这些近似方法相反,此贡献描述了一种精确,分析且无损的方法,称为BEST(SNP标签的最佳枚举),能够从谱系或独立样本中识别出标记任意单倍型的SNP的最小集。我们的结果证实,一小部分SNP足以捕获种群中的单倍型变异,并且随着单倍型长度的增加,该比例呈指数下降。我们使用BEST标记了非裔美国人和欧美样本中105个基因的单倍型。该分析的一个有趣发现是,欧美样本中的绝大多数htSNPs(95%)是非裔美国人样本中htSNP的子集。这一结果似乎提供了进一步的证据,证明在欧洲成立期间和所谓的“走出非洲”事件中出现了严重的瓶颈。

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