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Genome-wide association study for multiple phenotype analysis

机译:全基因组关联研究,用于多表型分析

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Genome-wide association studies often collect multiple phenotypes for complex diseases. Multivariate joint analyses have higher power to detect genetic variants compared with the marginal analysis of each phenotype and are also able to identify loci with pleiotropic effects. We extend the unified score-based association test to incorporate family structure, apply different approaches to analyze multiple traits in GAW20 real samples, and compare the results. Through simulation studies, we confirm that the Type I error rate of the pedigree-based unified score association test is appropriately controlled. In marginalanalysis of triglyceride levels, we found 1 subgenome-wide significant variant on chromosome 6. Joint analyses identified several suggestive genome-wide significant signals, with the pedigree-based unified score association test yielding the greatest number of significant results.
机译:全基因组关联研究通常会收集复杂疾病的多种表型。与每种表型的边缘分析相比,多变量联合分析具有更高的检测遗传变异的能力,并且还能够识别具有多效性作用的基因座。我们扩展了基于分数的统一关联测试,以纳入家庭结构,采用不同的方法分析GAW20真实样本中的多个特征,并比较结果。通过仿真研究,我们确认基于谱系的统一评分关联测试的I类错误率得到了适当控制。在甘油三酸酯水平的边缘分析中,我们在6号染色体上发现了1个全基因组范围内的显着变异。联合分析确定了几个暗示性的全基因组范围内的显着信号,基于谱系的统一评分关联测试产生了最多数量的显着结果。

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