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Inferring Piecewise Ancestral History from Haploid Sequences

机译:从单倍体序列推断分段祖先的历史

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There has been considerable recent interest in the use of haplotype structure to aid in the design and analysis of case-control association studies searching for genetic predictors of human disease. The use of haplotype structure is based on the premise that genetic variations that are physically close on the genome will often be predictive of one another due to their frequent descent intact through recent evolution. Understanding these correlations between sites should make it possible to minimize the amount of redundant information gathered through assays or examined in association tests, improving the power and reducing the cost of the studies. In this work, we evaluate the potential value of haplotype structure in this context by applying it to two key sub-problems: inferring hidden polymorphic sites in partial haploid sequences and choosing subsets of variants that optimally capture the information content of the full set of sequences. We develop methods for these approaches based on a prior method we developed for predicting piece-wise shared ancestry of haploid sequences. We apply these methods to a case study of two genetic regions with very different levels of sequence diversity. We conclude that haplotype correlations do have considerable potential for these problems, but that the degree to which they are useful will be strongly dependent on the population sizes available and the specifics of the genetic regions examined.
机译:最近人们对使用单倍型结构来协助设计和分析病例-对照关联研究以寻找人类疾病的遗传预测因子的兴趣浓厚。单倍型结构的使用是基于这样一个前提,即在基因组上物理上接近的遗传变异通常会相互预测,这是由于它们通过最近的进化而经常完整地下降。了解站点之间的这些相关性应该可以最大程度地减少通过分析收集或在关联测试中检查的冗余信息的数量,从而提高功能并降低研究成本。在这项工作中,我们通过将其应用于两个关键子问题来评估单倍型结构的潜在价值:推断部分单倍体序列中的隐藏多态位点以及选择能最佳捕获整个序列信息内容的变异子集。我们基于先前开发的用于预测单倍体序列的分段共享祖先的现有方法,开发了用于这些方法的方法。我们将这些方法应用于两个具有非常不同水平的序列多样性的遗传区域的案例研究。我们得出结论,单倍型相关确实对这些问题具有相当大的潜力,但是它们的有用程度将在很大程度上取决于可用的种群规模和所检查的遗传区域的具体情况。

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