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首页> 外文期刊>Science in China. Series C, Life sciences >Study on mapping Quantitative Trait Loci for animal complex binary traits using Bayesian-Markov chain Monte Carlo approach
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Study on mapping Quantitative Trait Loci for animal complex binary traits using Bayesian-Markov chain Monte Carlo approach

机译:贝叶斯-马尔可夫链蒙特卡罗方法绘制动物复杂二元性状的数量性状位点

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摘要

It is a challenging issue to map Quantitative Trait Loci (QTL) underlying complex discrete traits, which usually show discontinuous distribution and less information, using conventional statistical methods. Bayesian-Markov chain Monte Carlo (Bayesian-MCMC) approach is the key procedure in mapping QTL for complex binary traits, which provides a complete posterior distribution for QTL parameters using all prior information. As a consequence, Bayesian estimates of all interested variables can be obtained straightforwardly basing on their posterior samples simulated by the MCMC algorithm. In our study, utilities of Bayesian-MCMC are demonstrated using simulated several animal outbred full-sib families with different family structures for a complex binary trait underlied by both a QTL and polygene. Under the Identity-by-Descent-Based variance component random model, three samplers basing on MCMC, including Gibbs sampling, Metropolis algorithm and reversible jump MCMC, were implemented to generate the joint posterior distribution of all unknowns so that the QTL parameters were obtained by Bayesian statistical inferring. The results showed that Bayesian-MCMC approach could work well and robust under different family structures and QTL effects. As family size increases and the number of family decreases, the accuracy of the parameter estimates will be improved. When the true QTL has a small effect, using outbred population experiment design with large family size is the optimal mapping strategy.
机译:使用传统的统计方法绘制复杂的离散特征的定量特征位点(QTL)是一个具有挑战性的问题,这些特征通常显示出不连续的分布且信息较少。贝叶斯-马尔可夫链蒙特卡洛(Bayesian-MCMC)方法是为复杂的二进制性状映射QTL的关键过程,它使用所有先验信息为QTL参数提供了完整的后验分布。结果,可以基于由MCMC算法模拟的后验样本直接获得所有感兴趣变量的贝叶斯估计。在我们的研究中,贝叶斯-MCMC的效用通过模拟几个具有不同家族结构的动物近交全同胞家族而得到证明,这些家族具有QTL和多基因所依据的复杂二元性状。在基于血统身份的方差分量随机模型下,基于MCMC的三个采样器(包括Gibbs采样,Metropolis算法和可逆跳MCMC)被实现以生成所有未知数的联合后验分布,从而通过以下方法获得QTL参数:贝叶斯统计推断。结果表明,在不同的家族结构和QTL效应下,贝叶斯-MCMC方法可以很好地工作。随着家庭规模的增加和家庭数量的减少,参数估计的准确性将会提高。当真正的QTL影响不大时,使用具有较大家庭规模的远亲种群实验设计是最佳的作图策略。

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