单倍型基序:一种在单倍体序列中定位进化保守模式的算法方法。

Russell Schwartz
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引用次数: 0

摘要

关于人类常见遗传变异的大量数据的前景给我们带来了希望,我们将能够发现以前的方法难以定位的常见疾病背后的遗传因素。最近对这个问题的兴趣集中在使用单倍型(相关遗传变异的连续区域),而不是孤立的变异,以减少统计分析问题的规模。为了最有效地利用这些变异数据,我们需要更好地理解单倍型结构,包括人类群体中单倍型结构的一般原理和在特定遗传区域或亚群体中发现的特定结构。本文提出了一种概率模型,用于利用统计上显著的亚种群中发现的保守基序来分析种群中的单倍型结构。它描述了模型和计算方法来推导预测基序集和单倍型结构的一个群体。进一步给出了模拟数据的结果,以验证该方法,并从文献中给出了两个真实数据集的结果,以说明其实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Haplotype motifs: an algorithmic approach to locating evolutionarily conserved patterns in haploid sequences.

The promise of plentiful data on common human genetic variations has given hope that we will be able to uncover genetic factors behind common diseases that have proven difficult to locate by prior methods. Much recent interest in this problem has focused on using haplotypes (contiguous regions of correlated genetic variations), instead of the isolated variations, in order to reduce the size of the statistical analysis problem. In order to most effectively use such variation data, we will need a better understanding of haplotype structure, including both the general principles underlying haplotype structure in the human population and the specific structures found in particular genetic regions or sub-populations. This paper presents a probabilistic model for analyzing haplotype structure in a population using conserved motifs found in statistically significant sub-populations. It describes the model and computational methods for deriving the predicted motif set and haplotype structure for a population. It further presents results on simulated data, in order to validate the method, and on two real datasets from the literature, in order to illustrate its practical application.

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