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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Multipoint Identity-by-Descent Prediction Using Dense Markers to Map Quantitative Trait Loci and Estimate Effective Population Size
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Multipoint Identity-by-Descent Prediction Using Dense Markers to Map Quantitative Trait Loci and Estimate Effective Population Size

机译:使用密集标记绘制定量性状位点并估计有效种群大小的按血统的多点身份预测

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A novel multipoint method, based on an approximate coalescence approach, to analyze multiple linked markers is presented. Unlike other approximate coalescence methods, it considers all markers simultaneously but only two haplotypes at a time. We demonstrate the use of this method for linkage disequilibrium (LD) mapping of QTL and estimation of effective population size. The method estimates identity-by-descent (IBD) probabilities between pairs of marker haplotypes. Both LD and combined linkage and LD mapping rely on such IBD probabilities. The method is approximate in that it considers only the information on a pair of haplotypes, whereas a full modeling of the coalescence process would simultaneously consider all haplotypes. However, full coalescence modeling is computationally feasible only for few linked markers. Using simulations of the coalescence process, the method is shown to give almost unbiased estimates of the effective population size. Compared to direct marker and haplotype association analyses, IBD-based QTL mapping showed clearly a higher power to detect a QTL and a more realistic confidence interval for its position. The modeling of LD could be extended to estimate other LD-related parameters such as recombination rates.
机译:提出了一种基于近似合并方法的新型多点方法,用于分析多个链接标记。与其他近似合并方法不同,它同时考虑所有标记,但一次仅考虑两个单倍型。我们证明了这种方法的QTL连锁不平衡(LD)映射和有效人口规模的估计的使用。该方法估计标记单倍型对之间的按血统身份(IBD)概率。 LD和组合链接以及LD映射都依赖于这种IBD概率。该方法是近似的,因为它仅考虑有关一对单体型的信息,而对合并过程进行完整建模将同时考虑所有单体型。但是,仅对于很少的链接标记,完全合并建模在计算上是可行的。使用合并过程的模拟,该方法显示出对有效种群大小的几乎无偏估计。与直接标记和单倍型关联分析相比,基于IBD的QTL映射显示出更高的检测QTL的能力和更现实的置信区间。 LD的建模可以扩展以估计其他与LD相关的参数,例如重组率。

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