用扩展倾向评分法分析遗传关联研究。

Pub Date : 2012-10-19 DOI:10.1515/1544-6115.1790
Huaqing Zhao, Timothy R Rebbeck, Nandita Mitra
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引用次数: 7

摘要

倾向评分通常用于观察性研究中的混淆。然而,它们以前并没有被用于处理遗传关联研究中的偏见。我们提出了我们之前的方法的扩展(Zhao等人,2009),该方法使用多层倾向评分方法,允许人们在加性模型下估计基因型的影响,并同时调整遗传血统、患者和疾病特征等混杂因素。通过模拟研究,我们证明了这种扩展的遗传倾向评分(eGPS)可以在各种情况下充分调整和一致地纠正由于混杂引起的偏差。在所有模拟场景下,eGPS方法产生的估计值偏差接近0(平均值=0.018,标准误差=0.01)。我们的方法还保留了统计属性,如覆盖概率、I型错误和功率。我们在一项基于人群的睾丸生殖细胞肿瘤与KITLG和SPRY4易感基因的遗传关联研究中说明了这种方法。我们的结论是,我们的方法提供了一种新的和广泛适用的分析策略,以获得更少的偏见和更有效的遗传关联估计。
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Analyzing genetic association studies with an extended propensity score approach.

Propensity scores are commonly used to address confounding in observational studies. However, they have not been previously adapted to deal with bias in genetic association studies. We propose an extension of our previous method (Zhao et al., 2009) that uses a multilevel propensity score approach and allows one to estimate the effect of a genotype under an additive model and also simultaneously adjusts for confounders such as genetic ancestry and patient and disease characteristics. Using simulation studies, we demonstrate that this extended genetic propensity score (eGPS) can adequately adjust and consistently correct for bias due to confounding in a variety of circumstances. Under all simulation scenarios, the eGPS method yields estimates with bias close to 0 (mean=0.018, standard error=0.01). Our method also preserves statistical properties such as coverage probability, Type I error, and power. We illustrate this approach in a population-based genetic association study of testicular germ cell tumors and KITLG and SPRY4 susceptibility genes. We conclude that our method provides a novel and broadly applicable analytic strategy for obtaining less biased and more valid estimates of genetic associations.

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