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Asymptotic tests of association with multiple SNPs in linkage disequilibrium.

机译:连锁不平衡中与多个SNP关联的渐近测试。

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We consider detecting associations between a trait and multiple single nucleotide polymorphisms (SNPs) in linkage disequilibrium (LD). To maximize the use of information contained in multiple SNPs while minimizing the cost of large degrees of freedom (DF) in testing multiple parameters, we first theoretically explore the sum test derived under a working assumption of a common association strength between the trait and each SNP, testing on the corresponding parameter with only one DF. Under the scenarios that the association strengths between the trait and the SNPs are close to each other (and in the same direction), as considered by Wang and Elston [Am. J. Hum. Genet. [2007] 80:353-360], we show with simulated data that the sum test was powerful as compared to several existing tests; otherwise, the sum test might have much reduced power. To overcome the limitation of the sum test, based on our theoretical analysis of the sum test, we propose five new tests that are closely related to each other and are shown to consistently perform similarly well across a wide range of scenarios. We point out the close connection of the proposed tests to the Goeman test. Furthermore, we derive the asymptotic distributions of the proposed tests so that P-values can be easily calculated, in contrast to the use of computationally demanding permutations or simulations for the Goeman test. A distinguishing feature of the five new tests is their use of a diagonal working covariance matrix, rather than a full covariance matrix as used in the usual Wald or score test. We recommend the routine use of two of the new tests, along with several other tests, to detect disease associations with multiple linked SNPs.
机译:我们考虑检测一个性状和连锁不平衡(LD)中的多个单核苷酸多态性(SNP)之间的关联。为了最大程度地利用多个SNP中包含的信息,同时最大程度地降低测试多个参数时的大自由度(DF)的成本,我们首先在理论上探索在性状与每个SNP之间具有共同关联强度的工作假设下得出的和检验,仅使用一个DF测试相应的参数。 Wang和Elston认为,在性状和SNP之间的关联强度彼此接近(且方向相同)的情况下。 J.哼基因[2007] 80:353-360],我们通过仿真数据表明,与几种现有测试相比,总和测试功能强大;否则,总和测试可能会大大降低功耗。为了克服总和测试的局限性,基于我们对总和测试的理论分析,我们提出了五个彼此密切相关的新测试,这些新测试在各种情况下均表现出良好的一致性。我们指出了拟议的测试与Goeman测试的紧密联系。此外,与Goeman检验使用计算要求高的置换或模拟方法相比,我们得出了拟议测试的渐近分布,因此可以轻松计算P值。这五个新测试的一个显着特征是它们使用对角工作协方差矩阵,而不是通常的Wald或Score检验中使用的完整协方差矩阵。我们建议常规使用其中两个新测试以及其他几个测试来检测与多个连锁SNP相关的疾病。

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