首页> 外文期刊>European journal of human genetics: EJHG >Smoothed functional principal component analysis for testing association of the entire allelic spectrum of genetic variation
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Smoothed functional principal component analysis for testing association of the entire allelic spectrum of genetic variation

机译:平滑的功能主成分分析,用于测试遗传变异的整个等位基因谱的关联

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摘要

Fast and cheaper next-generation sequencing technologies will generate unprecedentedly massive and highly dimensional genetic variation data that allow nearly complete evaluation of genetic variation including both common and rare variants. There are two types of association tests: variant-by-variant test and group test. The variant-by-variant test is designed to test the association of common variants, while the group test is suitable to collectively test the association of multiple rare variants. We propose here a smoothed functional principal component analysis (SFPCA) statistic as a general approach for testing association of the entire allelic spectrum of genetic variation (both common and rare variants), which utilizes the merits of both variant-by-variant analysis and group tests. By intensive simulations, we demonstrate that the SFPCA statistic has the correct type 1 error rates and much higher power than the existing methods to detect association of (1) common variants, (2) rare variants, (3) both common and rare variants and (4) variants with opposite directions of effects. To further evaluate its performance, the SFPCA statistic is applied to ANGPTL4 sequence and six continuous phenotypes data from the Dallas Heart Study as an example for testing association of rare variants and a GWAS of schizophrenia data as an example for testing association of common variants. The results show that the SFPCA statistic has much smaller P-values than many existing statistics in both real data analysis examples.
机译:更快,更便宜的下一代测序技术将生成前所未有的大规模和高维数的遗传变异数据,这些数据几乎可以完整评估遗传变异,包括常见变异和稀有变异。关联测试有两种类型:逐变量测试和组测试。逐变项测试旨在测试常见变体的关联,而分组测试则适合于集体测试多个稀有变体的关联。我们在这里提出一种平滑的功能主成分分析(SFPCA)统计数据,作为测试遗传变异的整个等位基因谱(常见变异和稀有变异)的关联的一种通用方法,该方法利用了逐个变异分析和组的优点测试。通过深入的模拟,我们证明了SFPCA统计信息具有正确的1型错误率,并且与检测(1)常见变体,(2)稀有变体,(3)常见和稀有变体以及(4)具有相反作用方向的变体。为了进一步评估其性能,将SFPCA统计数据应用于ANGPTL4序列,并将来自达拉斯心脏研究的六种连续表型数据用作测试稀有变异的关联的示例,并将精神分裂症数据的GWAS作为测试通用变异的关联的示例。结果表明,在两个真实数据分析示例中,SFPCA统计量的P值都比许多现有统计量小。

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