首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Bayesian Methods for Quantitative Trait Loci Mapping Based on Model Selection: Approximate Analysis Using the Bayesian Information Criterion
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Bayesian Methods for Quantitative Trait Loci Mapping Based on Model Selection: Approximate Analysis Using the Bayesian Information Criterion

机译:基于模型选择的量化特征位点映射的贝叶斯方法:使用贝叶斯信息准则的近似分析

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We describe an approximate method for the analysis of quantitative trait loci (QTL) based on model selection from multiple regression models with trait values regressed on marker genotypes, using a modification of the easily calculated Bayesian information criterion to estimate the posterior probability of models with various subsets of markers as variables. The BIC-δ criterion, with the parameter δ increasing the penalty for additional variables in a model, is further modified to incorporate prior information, and missing values are handled by multiple imputation. Marginal probabilities for model sizes are calculated, and the posterior probability of nonzero model size is interpreted as the posterior probability of existence of a QTL linked to one or more markers. The method is demonstrated on analysis of associations between wood density and markers on two linkage groups in Pinus radiata. Selection bias, which is the bias that results from using the same data to both select the variables in a model and estimate the coefficients, is shown to be a problem for commonly used non-Bayesian methods for QTL mapping, which do not average over alternative possible models that are consistent with the data.
机译:我们描述了一种基于定量回归特征分析(QTL)的近似方法,该方法基于模型的选择,这些回归模型具有根据标记基因型回归特征值的多个回归模型,使用易于计算的贝叶斯信息准则的修改来估计具有各种特征的模型的后验概率标记的子集作为变量。带有参数δ的BIC-δ准则增加了模型中其他变量的惩罚,进一步修改了该准则以合并先验信息,并通过多次插补来处理缺失值。计算模型大小的边际概率,将非零模型大小的后验概率解释为存在链接到一个或多个标记的QTL的后验概率。通过分析辐射松两个连锁群上木材密度与标记之间的关联,证明了该方法。选择偏倚是使用相同数据选择模型中的变量并估计系数所导致的偏倚,这对于常见的非贝叶斯QTL映射方法来说是一个问题,该方法无法在替代方法上求平均值与数据一致的可能模型。

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