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Digging into the extremes: a useful approach for the analysis of rare variants with continuous traits?

机译:探究极端:分析具有连续性状的稀有变异的有用方法吗?

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摘要

The common disease/rare variant hypothesis predicts that rare variants with large effects will have a strong impact on corresponding phenotypes. Therefore it is assumed that rare functional variants are enriched in the extremes of the phenotype distribution. In this analysis of the Genetic Analysis Workshop 17 data set, my aim is to detect genes with rare variants that are associated with quantitative traits using two general approaches: analyzing the association with the complete distribution of values by means of linear regression and using statistical tests based on the tails of the distribution (bottom 10% of values versus top 10%). Three methods are used for this extreme phenotype approach: Fisher’s exact test, weighted-sum method, and beta method. Rare variants were collapsed on the gene level. Linear regression including all values provided the highest power to detect rare variants. Of the three methods used in the extreme phenotype approach, the beta method performed best. Furthermore, the sample size was enriched in this approach by adding additional samples with extreme phenotype values. Doubling the sample size using this approach, which corresponds to only 40% of sample size of the original continuous trait, yielded a comparable or even higher power than linear regression. If samples are selected primarily for sequencing, enriching the analysis by gathering a greater proportion of individuals with extreme values in the phenotype of interest rather than in the general population leads to a higher power to detect rare variants compared to analyzing a population-based sample with equivalent sample size.
机译:常见疾病/罕见变体假说预测,效果显着的稀有变体将对相应的表型产生强烈影响。因此,假定罕见的功能变体在表型分布的极端处富集。在遗传分析研讨会17数据集的此分析中,我的目的是使用两种通用方法来检测具有与数量性状相关的稀有变异的基因:通过线性回归分析与值的完整分布的关联并使用统计检验基于分布的尾部(值的底部10%与顶部的10%)。此极端表型方法使用三种方法:Fisher精确检验,加权和方法和beta方法。罕见变体在基因水平上崩溃了。包括所有值的线性回归为检测稀有变异提供了最大的能力。在极端表型方法中使用的三种方法中,β方法表现最佳。此外,通过添加具有极端表型值的其他样本,通过这种方法丰富了样本量。使用这种方法将样本量加倍(仅相当于原始连续性状的样本量的40%),其产生的功效与线性回归相当甚至更高。如果样品主要是为了测序而选择的,那么与通过分析基于人群的样品相比,通过收集更大比例的感兴趣表型而非一般人群中具有极高价值的个体来丰富分析,可以提高检测稀有变体的能力。等效样本量。

著录项

  • 期刊名称 BMC Proceedings
  • 作者

    Claudia Lamina;

  • 作者单位
  • 年(卷),期 2011(5),Suppl 9
  • 年度 2011
  • 页码 S105
  • 总页数 6
  • 原文格式 PDF
  • 正文语种
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  • 关键词

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