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Generalized linear mixed models for mapping multiple quantitative trait loci

机译:映射多个数量性状基因座的广义线性混合模型

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摘要

Many biological traits are discretely distributed in phenotype but continuously distributed in genetics because they are controlled by multiple genes and environmental variants. Due to the quantitative nature of the genetic background, these multiple genes are called quantitative trait loci (QTL). When the QTL effects are treated as random, they can be estimated in a single generalized linear mixed model (GLMM), even if the number of QTL may be larger than the sample size. The GLMM in its original form cannot be applied to QTL mapping for discrete traits if there are missing genotypes. We examined two alternative missing genotype-handling methods: the expectation method and the overdispersion method. Simulation studies show that the two methods are efficient for multiple QTL mapping (MQM) under the GLMM framework. The overdispersion method showed slight advantages over the expectation method in terms of smaller mean-squared errors of the estimated QTL effects. The two methods of GLMM were applied to MQM for the female fertility trait of wheat. Multiple QTL were detected to control the variation of the number of seeded spikelets.
机译:许多生物学性状以表型离散分布,而在遗传学中则连续分布,因为它们受多个基因和环境变体控制。由于遗传背景的定量性质,这些多个基因称为定量性状基因座(QTL)。将QTL效果视为随机值时,即使QTL的数量可能大于样本数量,也可以在单个广义线性混合模型(GLMM)中对其进行估计。如果缺少基因型,则原始形式的GLMM无法应用于离散性状的QTL映射。我们研究了两种替代的缺失基因型处理方法:期望方法和过度分散方法。仿真研究表明,这两种方法对于GLMM框架下的多个QTL映射(MQM)都是有效的。在估计的QTL效应的均方误差较小的方面,过分散法显示出比预期方法略有优势。针对小麦雌性育性,将两种GLMM方法应用于MQM。检测多个QTL以控制种子小​​穗数量的变化。

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