首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Accounting for variability in the use of permutation testing to detect quantitative trait loci.
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Accounting for variability in the use of permutation testing to detect quantitative trait loci.

机译:在使用置换测试检测定量性状基因座中考虑变异性。

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摘要

Locating quantitative trait loci (QTL), or genomic regions associated with known molecular markers, is of increasing interest in a wide variety of applications ranging from human genetics to agricultural genetics. The hope of locating QTL (or genes) affecting a quantitative trait is that it will lead to characterization and possible manipulations of these genes. However, the complexity of both statistical and genetic issues surrounding the location of these regions calls into question the asymptotic statistical results supplying the distribution of the test statistics employed. Coupled with the power of current-day computing, permutation theory was reintroduced for the purpose of estimating the distribution of any test statistic used to test for the location of QTL. Permutation techniques have offered an attractive alternative to significance measures based on asymptotic theory. The ideas of permutation testing are extended in this application to include confidence intervals for the thresholds and p-values estimated in permutation testing procedures. The confidence intervals developed account for the Monte Carlo error associated with practical applications of permutation testing and lead to an effective method of determining an efficient permutation sample size.
机译:在从人类遗传学到农业遗传学的广泛应用中,定位与已知分子标记相关的数量性状基因座(QTL)或基因组区域的兴趣日益增加。定位影响定量性状的QTL(或基因)的希望是,它将导致这些基因的表征和可能的操纵。但是,围绕这些区域位置的统计和遗传问题的复杂性,使渐近统计结果难以提供所采用的检验统计量的分布,这引起了质疑。结合当前的计算能力,重新引入了排列理论,以估计用于测试QTL位置的任何测试统计量的分布。置换技术为基于渐近理论的显着性度量提供了一种有吸引力的替代方法。置换测试的思想在此应用程序中得到扩展,以包括置换测试过程中估计的阈值和p值的置信区间。所建立的置信区间考虑了与置换测试的实际应用相关联的蒙特卡洛误差,并导致确定有效置换样本大小的有效方法。

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