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A general semi-parametric approach to the analysis of genetic association studies in population-based designs

机译:基于群体设计中遗传关联研究的一般半参数分析方法

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Background For genetic association studies in designs of unrelated individuals, current statistical methodology typically models the phenotype of interest as a function of the genotype and assumes a known statistical model for the phenotype. In the analysis of complex phenotypes, especially in the presence of ascertainment conditions, the specification of such model assumptions is not straight-forward and is error-prone, potentially causing misleading results. Results In this paper, we propose an alternative approach that treats the genotype as the random variable and conditions upon the phenotype. Thereby, the validity of the approach does not depend on the correctness of assumptions about the phenotypic model. Misspecification of the phenotypic model may lead to reduced statistical power. Theoretical derivations and simulation studies demonstrate both the validity and the advantages of the approach over existing methodology. In the COPDGene study (a GWAS for Chronic Obstructive Pulmonary Disease (COPD)), we apply the approach to a secondary, quantitative phenotype, the Fagerstrom nicotine dependence score, that is correlated with COPD affection status. The software package that implements this method is available. Conclusions The flexibility of this approach enables the straight-forward application to quantitative phenotypes and binary traits in ascertained and unascertained samples. In addition to its robustness features, our method provides the platform for the construction of complex statistical models for longitudinal data, multivariate data, multi-marker tests, rare-variant analysis, and others.
机译:背景技术对于无亲属个体设计中的遗传关联研究,当前的统计方法通常根据基因型对目标表型进行建模,并采用已知的表型统计模型。在复杂表型的分析中,尤其是在确定条件存在的情况下,此类模型假设的规范并不简单明了,而且容易出错,可能会导致误导性结果。结果在本文中,我们提出了一种替代方法,该方法将基因型视为随机变量,并以表型为条件。因此,该方法的有效性不取决于有关表型模型的假设的正确性。表型模型的规格错误可能导致统计功效降低。理论推导和仿真研究证明了该方法相对于现有方法的有效性和优势。在COPDGene研究(慢性阻塞性肺疾病(COPD)的GWAS)中,我们将该方法应用于继发性定量表型,即Fagerstrom尼古丁依赖评分,该评分与COPD患病状况相关。提供了实现此方法的软件包。结论该方法的灵活性使它可以直接应用于确定的和不确定的样品中的定量表型和二元性状。除了其鲁棒性功能外,我们的方法还为构建用于纵向数据,多元数据,多标记检验,稀有变量分析等的复杂统计模型提供了平台。

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