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Evaluation of a phenotype imputation approach using GAW20 simulated data

机译:利用GAW20模拟数据评估表型估算方法

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摘要

Statistical power, which is the probability of correctly rejecting a false null hypothesis, is a limitation of genome-wide association studies (GWAS). Sample size is a major component of statistical power that can be easily affected by missingness in phenotypic data and restrain the ability to detect associated single-nucleotide polymorphisms (SNPs) with small effect sizes. Although some phenotypes are hard to collect because of cost and loss to follow-up, correlated phenotypes that are easily collected can be leveraged for association analysis. In this paper, we evaluate a phenotype imputation method that incorporates family structure and correlation between multiple phenotypes using GAW20 simulated data. The distribution of missing values is derived using information contained in the missing sample’s relatives and additional correlated phenotypes. We show that this imputation method can improve power in the association analysis compared with excluding observations with missing data, while achieving the correct Type I error rate.We also examine factors that may affect the imputation accuracy.
机译:统计能力是正确拒绝错误的虚假假设的可能性,是全基因组关联研究(GWAS)的局限性。样本量是统计能力的主要组成部分,很容易受到表型数据缺失的影响,并限制了以较小的效应量检测相关的单核苷酸多态性(SNP)的能力。尽管由于成本和随访损失而难以收集某些表型,但可以利用易于收集的相关表型进行关联分析。在本文中,我们使用GAW20模拟数据评估了一种表型插补方法,该方法结合了家族结构和多种表型之间的相关性。缺失值的分布是使用缺失样本的亲戚和其他相关表型中包含的信息得出的。我们证明,与排除具有缺失数据的观察结果相比,这种估算方法可以提高关联分析的功效,同时可以实现正确的I型错误率。我们还研究了可能影响估算准确性的因素。

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