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Using cases to strengthen inference on the association between single nucleotide polymorphisms and a secondary phenotype in genome-wide association studies.

机译:在全基因组关联研究中,利用案例来加强对单核苷酸多态性与二级表型之间关联的推断。

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Case-control genome-wide association studies provide a vast amount of genetic information that may be used to investigate secondary phenotypes. We study the situation in which the primary disease is rare and the secondary phenotype and genetic markers are dichotomous. An analysis of the association between a genetic marker and the secondary phenotype based on controls only (CO) is valid, whereas standard methods that also use cases result in biased estimates and highly inflated type I error if there is an interaction between the secondary phenotype and the genetic marker on the risk of the primary disease. Here we present an adaptively weighted (AW) method that combines the case and control data to study the association, while reducing to the CO analysis if there is strong evidence of an interaction. The possibility of such an interaction and the misleading results for standard methods, but not for the AW or CO approaches, are illustrated by data from a case-control study of colorectal adenoma. Simulations and asymptotic theory indicate that the AW method can reduce the mean square error for estimation with a prespecified SNP and increase the power to discover a new association in a genome-wide study, compared to CO analysis. Further experience with genome-wide studies is needed to determine when methods that assume no interaction gain precision and power, thereby can be recommended, and when methods such as the AW or CO approaches are needed to guard against the possibility of nonzero interactions.
机译:病例对照全基因组关联研究提供了大量的遗传信息,可用于研究次级表型。我们研究的情况是,原发疾病很少见,继发表型和遗传标记是二分的。仅基于对照(CO)对遗传标志物与次要表型之间的关联进行分析是有效的,而如果次要表型与标准表型之间存在相互作用,则还使用案例的标准方法会导致估计偏倚和I型错误严重夸大。有关原发疾病风险的遗传标记。在这里,我们提出了一种自适应加权(AW)方法,该方法结合了案例和控制数据来研究关联,同时,如果存在有力的证据,则简化为CO分析。结肠直肠腺瘤病例对照研究的数据说明了这种相互作用的可能性以及标准方法(而不是AW或CO方法)的误导性结果。仿真和渐近理论表明,与CO分析相比,AW方法可以减少使用预先确定的SNP进行估计的均方误差,并可以提高在全基因组研究中发现新关联的能力。需要进一步的全基因组研究经验,以确定什么时候可以假设不假设相互作用的方法具有更高的精确度和功效,以及何时需要使用诸如AW或CO方法之类的方法来防止非零相互作用的可能性。

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