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A new Bayesian automatic model selection approach for mapping quantitative trait loci under variance component model

机译:方差分量模型下映射数量性状基因座的新贝叶斯自动模型选择方法

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摘要

Bayesian variable selection implemented via reversible jump Markov chain Monte Carlo (RJMCMC) is an effective method for mapping multiple QTL. Recently, it has been used for QTL mapping both in inbred line crosses and in outbred populations. However, by RJMCMC, since the model-dimension is variable, the parameters are usually subject to poor mixing and difficult to converge. In inbred lines, the fixed effect model is used for mapping QTL, various approaches which keep the model-dimension unchanged have been proposed, and it is proved that the mixing properties of Markov chains is substantially improved compared with RJMCMC. In outbred populations, the random effect model is used and the implementation via RJMCMC for variable selection still is the mainstream to map multiple QTL. Due to the poor performance RJMCMC has, it is meaningful to develop a model-dimension fixed approach for mapping QTL under random effect model. In this article, we proposed a new model-dimension fixed approach called Bayesian automatic model selection method for mapping multiple QTL under random effect model. By the new approach, all variances of QTL are subject to estimate, in which the variance of zero-effect QTL will exactly converge to zero, and those of non-zero effect QTL will be estimated precisely. Therefore, no special model selection is required. A series of simulation experiments have been conducted to investigate the performance of the method, the result showed that the new approach is very efficient for mapping multiple QTL. A computer program written in FORTRAN is available to interested users on request. Keywords Bayesian - Mapping QTL - MCMC - Model selection
机译:通过可逆跳跃马尔可夫链蒙特卡罗(RJMCMC)实现的贝叶斯变量选择是一种映射多个QTL的有效方法。近来,它已用于自交系杂交和近交群体的QTL作图。但是,通过RJMCMC,由于模型尺寸是可变的,因此参数通常容易混合且难以收敛。在自交系中,使用固定效应模型绘制QTL,提出了各种保持模型尺寸不变的方法,并证明与RJMCMC相比,马尔可夫链的混合性能得到了显着改善。在近交群体中,使用随机效应模型,通过RJMCMC进行变量选择仍然是映射多个QTL的主流。由于RJMCMC的性能较差,因此有必要开发一种模型尺寸固定的方法来在随机效应模型下映射QTL。在本文中,我们提出了一种新的模型维固定方法,称为贝叶斯自动模型选择方法,用于在随机效应模型下映射多个QTL。通过新方法,可以估计QTL的所有方差,其中零影响QTL的方差将精确收敛到零,而非零影响QTL的方差将被精确估计。因此,不需要特殊的模型选择。进行了一系列的仿真实验以研究该方法的性能,结果表明该新方法对于映射多个QTL非常有效。有兴趣的用户可以根据要求使用用FORTRAN编写的计算机程序。贝叶斯-映射QTL-MCMC-模型选择

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