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Segregation analysis of continuous phenotypes by using higher sample moments.

机译:通过使用更高的样本矩进行连续表型的分离分析。

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摘要

The present article discusses the use of computational methods based on generalized estimating equations (GEE), as a potential alternative to full maximum-likelihood methods, for performing segregation analysis of continuous phenotypes by using randomly selected family data. The method that we propose can estimate effect and degree of dominance of a major gene in the presence of additional nongenetic or polygenetic familial associations, by relating sample moments to their expectations calculated under the genetic model. It is known that all parameters in basic major-gene models cannot be identified, for estimation purposes, solely in terms of the first two sample moments of data from randomly selected families. Thus, we propose the use of higher (third order) sample moments to resolve this identifiability problem, in a pseudo-profile likelihood estimation scheme. In principle, our methods may be applied to fitting genetic models by using complex pedigrees and for estimation in the presence of missing phenotype data for family members. In order to assess its statistical efficiency we compare several variants of the method with each other and with maximum-likelihood estimates provided by the SAGE computer package in a simulation study.
机译:本文讨论了基于广义估计方程(GEE)的计算方法的使用,它是完全最大似然法的一种潜在替代方法,用于通过使用随机选择的家族数据进行连续表型的分离分析。我们提出的方法可以通过将样本矩与他们在遗传模型下计算出的期望值相关联,来估计存在其他非遗传或多遗传家族关联时主要基因的作用和优势程度。众所周知,出于估计的目的,不能仅根据随机选择的族的数据的前两个样本矩来识别基本主要基因模型中的所有参数。因此,我们建议在伪轮廓似然估计方案中使用较高(三阶)样本矩来解决此可识别性问题。原则上,我们的方法可能适用于通过使用复杂的谱系来拟合遗传模型,以及在存在缺失的家庭成员表型数据的情况下进行估算的方法。为了评估其统计效率,我们将方法的几种变体相互比较,并与SAGE计算机软件包在模拟研究中提供的最大似然估计进行比较。

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