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Nonmetric Multidimensional Scaling Corrects for Population Structure in Association Mapping With Different Sample Types

机译:不同样本类型的关联映射中人口结构的非度量多维标度校正

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摘要

Recent research has developed various promising methods to control for population structure in genomewide association mapping of complex traits, but systematic examination of how well these methods perform under different genetic scenarios is still lacking. Appropriate methods for controlling genetic relationships among individuals need to balance the concern of false positives and statistical power, which can vary for different association sample types. We used a series of simulated samples and empirical data sets from cross- and self-pollinated species to demonstrate the performance of several contemporary methods in correcting for different types of genetic relationships encountered in association analysis. We proposed a two-stage dimension determination approach for both principal component analysis and nonmetric multidimensional scaling (nMDS) to capture the major structure pattern in association mapping samples. Our results showed that by exploiting both genotypic and phenotypic information, this two-stage dimension determination approach balances the trade-off between data fit and model complexity, resulting in an effective reduction in false positive rate with minimum loss in statistical power. Further, the nMDS technique of correcting for genetic relationship proved to be a powerful complement to other existing methods. Our findings highlight the significance of appropriate application of different statistical methods for dealing with complex genetic relationships in various genomewide association studies.
机译:最近的研究已经开发出各种有前途的方法来控制复杂性状的全基因组关联映射中的种群结构,但是仍然缺乏对这些方法在不同遗传情况下的表现的系统检查。控制个体之间遗传关系的适当方法需要平衡对假阳性和统计能力的关注,这可能因不同的关联样本类型而异。我们使用了来自交叉授粉物种和自花授粉物种的一系列模拟样本和经验数据集,以证明几种当代方法在校正关联分析中遇到的不同类型的遗传关系方面的性能。我们提出了一种用于主成分分析和非度量多维缩放(nMDS)的两阶段维确定方法,以捕获关联映射样本中的主要结构模式。我们的结果表明,通过同时利用基因型和表型信息,这种两阶段维确定方法平衡了数据拟合和模型复杂性之间的折衷,从而有效地减少了假阳性率,同时统计损失最小。此外,nMDS校正遗传关系的技术被证明是对其他现有方法的有力补充。我们的发现突出了在各种全基因组关联研究中适当应用不同的统计方法来处理复杂的遗传关系的重要性。

著录项

  • 期刊名称 Genetics
  • 作者

    Chengsong Zhu; Jianming Yu;

  • 作者单位
  • 年(卷),期 2009(182),3
  • 年度 2009
  • 页码 875–888
  • 总页数 25
  • 原文格式 PDF
  • 正文语种
  • 中图分类 遗传学;
  • 关键词

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