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Pleiotropy and principal components of heritability combine to increase power for association analysis.

机译:多效性和遗传力的主要成分相结合,以增加关联分析的能力。

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When many correlated traits are measured the potential exists to discover the coordinated control of these traits via genotyped polymorphisms. A common statistical approach to this problem involves assessing the relationship between each phenotype and each single nucleotide polymorphism (SNP) individually (PHN); and taking a Bonferroni correction for the effective number of independent tests conducted. Alternatively, one can apply a dimension reduction technique, such as estimation of principal components, and test for an association with the principal components of the phenotypes (PCP) rather than the individual phenotypes. Building on the work of Lange and colleagues we develop an alternative method based on the principal component of heritability (PCH). For each SNP the PCH approach reduces the phenotypes to a single trait that has a higher heritability than any other linear combination of the phenotypes. As a result, the association between a SNP and derived trait is often easier to detect than an association with any of the individual phenotypes or the PCP. When applied to unrelated subjects, PCH has a drawback. For each SNP it is necessary to estimate the vector of loadings that maximize the heritability over all phenotypes. We develop a method of iterated sample splitting that uses one portion of the data for training and the remainder for testing. This cross-validation approach maintains the type I error control and yet utilizes the data efficiently, resulting in a powerful test for association. Genet. Epidemiol. 2007. (c) 2007 Wiley-Liss, Inc.
机译:当测量许多相关性状时,存在通过基因型多态性发现这些性状协调控制的潜力。解决此问题的常用统计方法是分别评估每个表型与每个单核苷酸多态性(SNP)之间的关系。并对进行的独立测试的有效次数进行Bonferroni校正。或者,可以应用降维技术,例如估算主成分,并测试与表型(PCP)的主成分而不是各个表型的关联。在Lange及其同事的工作基础上,我们开发了一种基于遗传力(PCH)主成分的替代方法。对于每个SNP,PCH方法将表型减少为具有比其他任何线性组合的表型更高的遗传力的单一性状。结果,与与任何单个表型或PCP的关联相比,SNP与衍生性状之间的关联通常更易于检测。当应用于无关主题时,PCH有一个缺点。对于每个SNP,有必要估计使所有表型的遗传力最大化的载荷向量。我们开发了一种迭代的样本拆分方法,该方法使用一部分数据进行训练,其余部分用于测试。这种交叉验证方法保持了I类错误控制,但仍有效地利用了数据,从而为关联测试提供了强大的工具。基因流行病。 2007(c)2007 Wiley-Liss,Inc.

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