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首页> 外文期刊>Genetic epidemiology. >Detecting rare variants for complex traits using family and unrelated data.
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Detecting rare variants for complex traits using family and unrelated data.

机译:使用家族和无关数据检测复杂性状的稀有变异。

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摘要

Large genome-wide association studies (GWAS) have been performed to detect common genetic variants involved in common diseases, but most of the variants found this way account for only a small portion of the trait variance. Furthermore, candidate gene-based resequencing suggests that many rare genetic variants contribute to the trait variance of common diseases. Here we propose two designs, sibpair and unrelated-case designs, to detect rare genetic variants in either a candidate gene-based or genome-wide association analysis. First we show that we can detect and classify together rare risk haplotypes using a relatively small sample with either of these designs, and then have increased power to test association in a larger case-control sample. This method can also be applied to resequencing data. Next we apply the method to the Wellcome Trust Case Control Consortium (WTCCC) coronary artery disease (CAD) and hypertension (HT) data, the latter being the only trait for which no genome-wide association evidence was reported in the original WTCCC study, and identify one interesting gene associated with HT and four associated with CAD at a genome-wide significance level of 5%. These results suggest that searching for rare genetic variants is feasible and can be fruitful in current GWAS, candidate gene studies or resequencing studies.
机译:已经进行了大型全基因组关联研究(GWAS),以检测与常见疾病有关的常见遗传变异,但是发现这种方式的大多数变异仅占特质变异的一小部分。此外,基于候选基因的重测序表明许多罕见的遗传变异会导致常见疾病的性状变异。在这里,我们提出了两种设计,即同卵双胞胎和无关病例设计,以在基于候选基因或全基因组的关联分析中检测罕见的遗传变异。首先,我们证明了使用这两种设计中的任何一个,我们都可以使用相对较小的样本来检测罕见风险单倍型并将其分类,然后在更大的病例对照样本中测试关联的能力增强。此方法也可以应用于重新排序数据。接下来,我们将该方法应用于惠康信任病例对照协会(WTCCC)冠状动脉疾病(CAD)和高血压(HT)数据,后者是唯一在原始WTCCC研究中未报告全基因组关联证据的特征,并确定一个与HT相关的有趣基因和四个与CAD相关的基因,其全基因组显着性水平为5%。这些结果表明,寻找罕见的遗传变异是可行的,并且在当前的GWAS,候选基因研究或重测序研究中可能会富有成果。

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