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Bayesian Composite Model Space Approach for Mapping Quantitative Trait Loci in Variance Component Model

机译:方差分量模型中定量性状位点映射的贝叶斯复合模型空间方法

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摘要

In this article, we successfully apply the novel model selection method, Bayesian composite model space approach which has been used to map quantitative trait loci (QTL) for allelic substitution model, to map QTL for variance component model. The novel model selection approach has two advantages compared to the reversible jump Markov chain Monte Carlo method. Firstly, it mixes well due to the fixedness of the model dimension; secondly, it can map multiple QTL with higher power especially in genome-wide QTL mapping; finally, in the new method, it is also easy to incorporate our prior information about the variance components, which may bring precise estimate for variance components. A series of simulation experiments were conducted to demonstrate the general characters of the proposed method. The computer program is written in FORTRAN language, which is also built into a software “BayesMapQTL”, and they also can be used for real data analysis and are available for request. Keywords Mapping QTL - MCMC - Bayesian model selection - Variance component model Edited by David Allison.
机译:在本文中,我们成功地应用了新颖的模型选择方法贝叶斯复合模型空间方法,该方法已用于映射等位基因替换模型的定量特征位点(QTL),用于映射方差分量模型的QTL。与可逆跳跃马尔可夫链蒙特卡洛方法相比,新颖的模型选择方法具有两个优点。首先,由于模型尺寸的固定性,它混合得很好。其次,它可以以更高的功率映射多个QTL,尤其是在全基因组QTL映射中。最后,在新方法中,也很容易合并我们关于方差成分的先前信息,这可能会带来对方差成分的精确估计。进行了一系列的仿真实验,以证明该方法的一般特性。该计算机程序用FORTRAN语言编写,该语言也内置在软件“ BayesMapQTL”中,它们也可用于真实数据分析,并可应要求提供。关键字映射QTL-MCMC-贝叶斯模型选择-方差组件模型由David Allison编辑。

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