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Association score testing for rare variants and binary traits in family data with shared controls

机译:使用共享控件对家庭数据中的罕见变异和二进制特征进行关联评分测试

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摘要

Genome-wide association studies have been an important approach used to localize trait loci, with primary focus on common variants. The multiple rare variant–common disease hypothesis may explain the missing heritability remaining after accounting for identified common variants. Advances of sequencing technologies with their decreasing costs, coupled with methodological advances in the context of association studies in large samples, now make the study of rare variants at a genome-wide scale feasible. The resurgence of family-based association designs because of their advantage in studying rare variants has also stimulated more methods development, mainly based on linear mixed models (LMMs). Other tests such as score tests can have advantages over the LMMs, but to date have mainly been proposed for single-marker association tests. In this article, we extend several score tests (χcorrected2, WQLS, and SKAT) to the multiple variant association framework. We evaluate and compare their statistical performances relative with the LMM. Moreover, we show that three tests can be cast as the difference between marker allele frequencies (AFs) estimated in each of the group of affected and unaffected subjects. We show that these tests are flexible, as they can be based on related, unrelated or both related and unrelated subjects. They also make feasible an increasingly common design that only sequences a subset of affected subjects (related or unrelated) and uses for comparison publicly available AFs estimated in a group of healthy subjects. Finally, we show the great impact of linkage disequilibrium on the performance of all these tests.
机译:全基因组关联研究一直是定位性状基因座的重要方法,主要关注常见变异。多种罕见变体-常见疾病假说可以解释在考虑已确定的常见变体之后遗留的遗留遗传力。测序技术的进步及其降低的成本,再加上大样本关联研究中方法学的进步,现在使得在全基因组范围内研究稀有变体成为可能。基于家族的关联设计由于其在研究稀有变体方面的优势而重新兴起,这也刺激了更多方法的开发,主要是基于线性混合模型(LMM)。诸如得分测试之类的其他测试可能比LMM更具优势,但迄今为止,主要针对单标记关联测试提出了这种测试。在本文中,我们扩展了几个分数测试 χ c o r r e c t e d 2 W Q L S a n d S K A T < / mi> 到多变体关联框架。我们评估并比较它们与LMM的统计性能。此外,我们表明,可以对受影响和未受影响的受试者组中的每组估计的标记等位基因频率(AF)之间的差异进行三种检验。我们显示这些测试是灵活的,因为它们可以基于相关,不相关或相关和不相关的主题。他们还使越来越常见的设计变得可行,该设计仅对受影响的受试者(相关或不相关)的子集进行排序,并用于比较在一组健康受试者中估计的可公开获得的AF。最后,我们显示了连锁不平衡对所有这些测试的性能的巨大影响。

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