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Bias-reduced estimators and confidence intervals for odds ratios in genome-wide association studies

机译:全基因组关联研究中比值估计的偏倚估计量和置信区间

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摘要

Genome-wide association studies (GWAS) provide an important approach to identifying common genetic variants that predispose to human disease. A typical GWAS may genotype hundreds of thousands of single nucleotide polymorphisms (SNPs) located throughout the human genome in a set of cases and controls. Logistic regression is often used to test for association between a SNP genotype and case versus control status, with corresponding odds ratios (ORs) typically reported only for those SNPs meeting selection criteria. However, when these estimates are based on the original data used to detect the variant, the results are affected by a selection bias sometimes referred to the “winner's curse” (). The actual genetic association is typically overestimated. We show that such selection bias may be severe in the sense that the conditional expectation of the standard OR estimator may be quite far away from the underlying parameter. Also standard confidence intervals (CIs) may have far from the desired coverage rate for the selected ORs. We propose and evaluate 3 bias-reduced estimators, and also corresponding weighted estimators that combine corrected and uncorrected estimators, to reduce selection bias. Their corresponding CIs are also proposed. We study the performance of these estimators using simulated data sets and show that they reduce the bias and give CI coverage close to the desired level under various scenarios, even for associations having only small statistical power.
机译:全基因组关联研究(GWAS)提供了一种重要方法,可识别易患人类疾病的常见遗传变异。在一组病例和对照中,典型的GWAS可能对遍布整个人类基因组的数十万个单核苷酸多态性(SNP)进行基因分型。 Logistic回归通常用于测试SNP基因型与病例与对照状态之间的关联,通常仅针对满足选择标准的那些SNP报告相应的优势比(OR)。但是,当这些估算值基于用于检测变体的原始数据时,结果会受到有时被称为“获胜者的诅咒”()的选择偏见的影响。实际的遗传关联通常被高估。我们表明,在标准OR估计量的条件期望可能与基础参数相距甚远的意义上,这种选择偏差可能很严重。同样,标准置信区间(CI)可能与所选OR的期望覆盖率相差甚远。我们提出并评估了3种减少偏倚的估算器,以及结合了校正后的校正子和未校正过的估算器的相应加权估算器,以减少选择偏差。还建议了它们的相应配置项。我们使用模拟数据集研究了这些估计量的性能,结果表明,即使对于只有很小统计能力的关联,它们也可以减少偏差并在各种情况下使CI覆盖率接近所需水平。

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