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A Two-Stage Variable-Stringency Semiparametric Method for Mapping Quantitative-Trait Loci with the Use of Genomewide-Scan Data on Sib Pairs

机译:利用全基因组扫描数据对同胞对映射数量性状位点的两阶段可变严格半参数方法

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摘要

Genomewide scans for mapping loci have proved to be extremely powerful and popular. We present a semiparametric method of mapping a quantitative-trait locus (QTL) or QTLs with the use of sib-pair data generated from a two-stage genomic scan. In a two-stage genomic scan, either the entire genome or a large portion of the genome is saturated with low-density markers at the first stage. At the second stage, the intervals that are identified as probable locations of the trait loci, by means of analysis of data from the first stage, are then saturated with higher-density markers. These data are then analyzed for fine mapping of the loci. Our statistical strategy for analysis of data from the first stage is a low-stringency method based on the rank correlation of squared trait-difference values of the sib pairs and the estimated identity-by-descent scores at the marker loci. We suggest the use of a low-stringency method at the first stage, to save on computational time and to avoid missing any marker interval that may contain the trait loci. For analysis of data from the second stage, we have developed a high-stringency nonparametric-regression approach, using the kernel-smoothing technique. Through extensive simulations, we show that this approach is more powerful than is a currently used method for mapping QTLs by use of sib pairs, particularly in the presence of dominance and epistatic effects at the trait loci.
机译:基因组定位图位的全基因组扫描被证明是非常强大和流行的。我们提出了一种利用从两阶段基因组扫描生成的同胞对数据来映射定量特征位点(QTL)或QTL的半参数方法。在两阶段基因组扫描中,整个基因组或基因组的大部分在第一阶段都被低密度标记物饱和。在第二阶段,通过分析来自第一阶段的数据,将被识别为性状基因座可能位置的区间,然后用较高密度的标记饱和。然后分析这些数据以进行基因座的精细定位。我们用于分析来自第一阶段的数据的统计策略是一种低严格性方法,该方法基于同胞对的特征差异平方值的等级相关性和标记位点处的估计逐个身份得分而定。我们建议在第一阶段使用低严格度方法,以节省计算时间并避免遗漏任何可能包含特征位点的标记间隔。为了分析第二阶段的数据,我们使用核平滑技术开发了一种高严格度的非参数回归方法。通过广泛的仿真,我们证明了这种方法比目前使用的同胞对映射QTL的方法更强大,尤其是在特征位点存在显性和上位性效应的情况下。

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