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Power of competing strategies of linkage analysis for complex traits.

机译:复杂性状连锁分析竞争策略的功能。

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摘要

Variance components (VC) and the Bayesian Markov chain Monte Carlo (MCMC) analysis are two of the widely used linkage analysis approaches to mapping genes for complex quantitative traits. Both approaches can handle extended pedigrees and multiple markers and do not require a prespecified genetic model. In this study, we used simulated data to compare the performance of these two approaches with the traditional parametric linkage analysis. Using simulated data sets without linkage between a quantitative trait and the markers, we estimated a critical value for various test scores used in VC or MCMC and the location (LOC) score at a fixed level of significance (5%). These critical values were then used to determine the power for the three methods for simulated data sets with linkage. We found that both the VC and MCMC approaches worked well, compared with the LOC score, when there was only one gene underlying the quantitative trait; however, VC had higher power than the other methods in a simulation study of a complex phenotype influenced by more than one gene. We also compared two implementations of MCMC analysis, finding interpretation of results using the log of placement score was more accurate for linkage inference than the Bayes factor but required much more intensive simulation studies.
机译:方差分量(VC)和贝叶斯马尔可夫链蒙特卡洛(MCMC)分析是为复杂的定量性状进行基因定位的广泛使用的连锁分析方法中的两种。两种方法都可以处理扩展的谱系和多个标记,并且不需要预先指定的遗传模型。在这项研究中,我们使用模拟数据将这两种方法的性能与传统的参数链接分析进行了比较。使用在定量性状和标记之间没有链接的模拟数据集,我们估计了在VC或MCMC中使用的各种测试得分的临界值以及在固定的显着性水平(5%)下的位置(LOC)得分。然后使用这些临界值来确定具有链接的模拟数据集的三种方法的功效。我们发现,当定量特征仅存在一个基因时,与LOC得分相比,VC和MCMC方法都工作良好。然而,在受一个以上基因影响的复杂表型的模拟研究中,VC具有比其他方法更高的功能。我们还比较了两种MCMC分析的实现方式,即使用放置分数的对数查找结果的解释比贝叶斯因子更准确地进行连锁推理,但需要进行更深入的模拟研究。

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