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Longitudinal data analysis in genome-wide association studies

机译:全基因组关联研究中的纵向数据分析

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Genome-wide association studies have led to the discovery of thousands of susceptibility genetic variants (typically single-nucleotide polymorphisms [SNPs]) for a wide range of complex diseases and traits commonly measured at a single point in time. Although many novel genotype-phenotype associations have been identified and successfully replicated using cross-sectionally measured phenotypes, there is growing interest in the study of longitudinally measured phenotypes because these allow for the study of the natural trajectory of traits and disease progression. However, there are several challenges with analysis and interpretation of longitudinal data. Here, we summarize the methods and strategies proposed and applied in genome-wide association studies of blood pressure related phenotypes made available through Genetic Analysis Workshop 18 (GAW18). The investigators considered methods that incorporated correlation across time points and familial relatedness among the individuals into their studies and compared their approaches with single-time-point analysis using baseline data. Some of the studies used unrelated individuals; some also used the simulated data provided by the GAW18 organizers to assess type I error and power of their approach in detecting true associations.
机译:全基因组关联研究已经发现了数千种易感性遗传变异(通常是单核苷酸多态性[SNP]),这些变异通常是在单个时间点测量的多种复杂疾病和特征。尽管已经鉴定出许多新颖的基因型-表型关联,并使用横断面测量的表型成功复制了这些新的基因型-表型关联,但对纵向测量的表型的研究却越来越引起人们的兴趣,因为它们使人们能够研究性状和疾病进展的自然轨迹。但是,纵向数据的分析和解释存在一些挑战。在这里,我们总结了通过遗传分析研讨会18(GAW18)提供的与血压相关表型的全基因组关联研究中提出和应用的方法和策略。研究人员考虑了将个体之间时间点之间的相关性和家族相关性纳入其研究的方法,并将他们的方法与使用基线数据的单时间点分析进行了比较。一些研究使用了不相关的个​​体。有些人还使用GAW18组织者提供的模拟数据来评估I型错误及其检测真实关联的方法的功效。

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