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A Random Model Approach to Mapping Quantitative Trait Loci for Complex Binary Traits in Outbred Populations

机译:外来种群复杂二元性状的数量性状基因座定位的随机模型方法

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Mapping quantitative trait loci (QTL) for complex binary traits is more challenging than for normally distributed traits due to the nonlinear relationship between the observed phenotype and unobservable genetic effects, especially when the mapping population contains multiple outbred families. Because the number of alleles of a QTL depends on the number of founders in an outbred population, it is more appropriate to treat the effect of each allele as a random variable so that a single variance rather than individual allelic effects is estimated and tested. Such a method is called the random model approach. In this study, we develop the random model approach of QTL mapping for binary traits in outbred populations. An EM-algorithm with a Fisher-scoring algorithm embedded in each E-step is adopted here to estimate the genetic variances. A simple Monte Carlo integration technique is used here to calculate the likelihood-ratio test statistic. For the first time we show that QTL of complex binary traits in an outbred population can be scanned along a chromosome for their positions, estimated for their explained variances, and tested for their statistical significance. Application of the method is illustrated using a set of simulated data.
机译:由于观察到的表型与无法观察到的遗传效应之间存在非线性关系,因此绘制复杂的二元性状的数量性状基因座(QTL)比正态分布的性状更具挑战性,尤其是当作图种群包含多个近交家庭时。由于QTL的等位基因数量取决于异交群体中创建者的数量,因此将每个等位基因的影响视为随机变量更为合适,这样就可以估计和测试单个变异而不是单个等位基因的影响。这种方法称为随机模型方法。在这项研究中,我们开发了QTL映射的随机模型方法,用于近交群体的二元性状。这里采用嵌入每个电子步骤的Fisher评分算法的EM算法来估计遗传方差。这里使用一种简单的蒙特卡洛积分技术来计算似然比检验统计量。我们首次展示了可以在染色体上扫描近交群体中复杂二元性状的QTL的位置,估算其解释的方差,并测试其统计显着性。使用一组模拟数据说明了该方法的应用。

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