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Variance component models in mapping imprinted genes: Statistical theory and applications.

机译:映射印迹基因的方差成分模型:统计理论和应用。

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摘要

Genomic imprinting has been thought to play an important role in seed development in flowering plants. Seed in a flowering plant normally contains diploid embryo and triploid endosperm. Empirical studies have shown that sonic economically important endosperm traits are genetically controlled by imprinted genes. However, the exact number and location of imprinted genes are largely unknown due to the lack of efficient statistical mapping methods. When an iQTL segregates in experimental line crosses, combining different line crosses with similar genetic background can improve the accuracy of iQTLs inference. To make full use of the natural information of sex-specific allelic sharing among sibpairs in line crosses, general statistical variance components frameworks are proposed to map imprinted quantitative trait loci (iQTL) for the diploid tissue and the triploid tissue, individually. Considering the special characteristics of the diploid embryo genome and triploid endosperm genome, new variance components partition methods with respect to the diploid and triploid tissues are developed. An extension to multiple QTL analysis is proposed for both diploid and triploid tissues.;A number of studies have demonstrated that multivariate traits analysis can provide more significant power and higher resolution for major gene detection in linkage analysis (Evans 2002). Furthermore, when a QTL has the pleiotropic effect on several traits, some important biologically interesting hypotheses can be performed successfully under the multivariate traits approach. It is well known that several highly correlated traits appear commonly in endosperm. So the variance components based univariate trait iQTL model is extended to bivariate traits iQTL model for mapping the parent-of-origin effect. It may expedite the process of identifying and eventually cloning genes controlling important endosperm traits.;Except for the wide application of variance components model in flowering plants, variance components analysis has been a standard means in human genetics. In brief, the genetic effect is detected by the significance of the likelihood ratio test. However, true parameters of main interest may be on the boundary of the parameter space under the null hypothesis, thus the regularity condition for declaring asymptotic chi-square distribution of the LRT statistics is not satisfied. The threshold calculation based on current methods often yields conservative hypothesis tests as discussed in a number of studies, especially in multivariate traits cases. To solve this problem, a general approximation form of the LRT under the null hypothesis of no linkage is proposed, and the chi-square mixture proportions are shown to depend on the estimated Fisher information matrix in both univariate and multivariate trait analysis.
机译:人们认为基因组印迹在开花植物的种子发育中起重要作用。开花植物中的种子通常包含二倍体胚和三倍体胚乳。实证研究表明,声波在经济上具有重要意义的胚乳性状受印迹基因的遗传控制。然而,由于缺乏有效的统计作图方法,在很大程度上不清楚印迹基因的确切数目和位置。当iQTL在实验品系杂交中分离时,将不同的品系杂交与相似的遗传背景结合在一起可以提高iQTL推断的准确性。为了充分利用线交同胞对之间性别特异性等位基因共享的自然信息,提出了一般的统计方差成分框架来分别绘制二倍体组织和三倍体组织的印迹定量性状位点(iQTL)。考虑到二倍体胚胎基因组和三倍体胚乳基因组的特殊性,针对二倍体和三倍体组织开发了新的方差成分分配方法。提议对二倍体和三倍体组织进行多重QTL分析。大量研究表明,多元性状分析可以为连锁分析中的主要基因检测提供更强大的功能和更高的分辨率(Evans 2002)。此外,当QTL对多种性状具有多效性时,可以在多元性状方法下成功进行一些重要的生物学有趣的假设。众所周知,胚乳中普遍出现几种高度相关的性状。因此,将基于方差成分的单变量特征iQTL模型扩展到双变量特征iQTL模型,以映射原产地效应。它可以加快识别和最终克隆控制重要胚乳性状的基因的过程。除变异成分模型在开花植物中的广泛应用外,变异成分分析一直是人类遗传学的一种标准手段。简而言之,通过似然比检验的重要性来检测遗传效应。然而,在原假设下,真正感兴趣的真实参数可能位于参数空间的边界上,因此不满足用于声明LRT统计量的渐近卡方分布的正则条件。如许多研究所述,基于当前方法的阈值计算通常会产生保守的假设检验,尤其是在多性状案例中。为了解决这个问题,提出了在没有联系的零假设下LRT的一般近似形式,并且在单变量和多变量特征分析中,卡方混合比例都取决于估计的Fisher信息矩阵。

著录项

  • 作者

    Li, Gengxin.;

  • 作者单位

    Michigan State University.;

  • 授予单位 Michigan State University.;
  • 学科 Biology Genetics.;Statistics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 177 p.
  • 总页数 177
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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