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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Mixture generalized linear models for multiple interval mapping of quantitative trait Loci in experimental crosses.
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Mixture generalized linear models for multiple interval mapping of quantitative trait Loci in experimental crosses.

机译:混合广义线性模型用于在实验杂交中定量性状基因座的多区间作图。

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摘要

SUMMARY: Quantitative trait loci mapping in experimental organisms is of great scientific and economic importance. There has been a rapid advancement in statistical methods for quantitative trait loci mapping. Various methods for normally distributed traits have been well established. Some of them have also been adapted for other types of traits such as binary, count, and categorical traits. In this article, we consider a unified mixture generalized linear model (GLIM) for multiple interval mapping in experimental crosses. The multiple interval mapping approach was proposed by Kao, Zeng, and Teasdale (1999, Genetics 152, 1203-1216) for normally distributed traits. However, its application to nonnormally distributed traits has been hindered largely by the lack of an efficient computation algorithm and an appropriate mapping procedure. In this article, an effective expectation-maximization algorithm for the computation of the mixture GLIM and an epistasis-effect-adjusted multiple interval mapping procedure is developed. A real data set, Radiata Pine data, is analyzed and the data structure is used in simulation studies to demonstrate the desirable features of the developed method.
机译:摘要:实验生物中的数量性状基因座图谱具有重要的科学和经济意义。用于定量性状基因座作图的统计方法已经有了快速的发展。已经很好地建立了多种用于正态分布特征的方法。其中一些还适用于其他类型的特征,例如二进制,计数和分类特征。在本文中,我们考虑用于实验交叉中多个区间映射的统一混合广义线性模型(GLIM)。多间隔映射方法由Kao,Zeng和Teasdale(1999,Genetics 152,1203-1216)提出,用于正态分布的性状。然而,由于缺乏有效的计算算法和适当的映射程序,极大地阻碍了其在非正态分布特征上的应用。在本文中,开发了一种有效的期望最大化算法,用于计算混合GLIM和上位效应调整的多区间映射程序。分析了真实的数据集Radiata Pine数据,并在模拟研究中使用了数据结构,以证明所开发方法的理想功能。

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