Institute of Epidemiology and Preventive Medicine, College of Public Health, National Taiwan University, Taipei, Taiwan.
Genet Epidemiol. 2013 Sep;37(6):560-70. doi: 10.1002/gepi.21740. Epub 2013 Jun 5.
For most complex diseases, the fraction of heritability that can be explained by the variants discovered from genome-wide association studies is minor. Although the so-called "rare variants" (minor allele frequency [MAF] < 1%) have attracted increasing attention, they are unlikely to account for much of the "missing heritability" because very few people may carry these rare variants. The genetic variants that are likely to fill in the "missing heritability" include uncommon causal variants (MAF < 5%), which are generally untyped in association studies using tagging single-nucleotide polymorphisms (SNPs) or commercial SNP arrays. Developing powerful statistical methods can help to identify chromosomal regions harboring uncommon causal variants, while bypassing the genome-wide or exome-wide next-generation sequencing. In this work, we propose a haplotype kernel association test (HKAT) that is equivalent to testing the variance component of random effects for distinct haplotypes. With an appropriate weighting scheme given to haplotypes, we can further enhance the ability of HKAT to detect uncommon causal variants. With scenarios simulated according to the population genetics theory, HKAT is shown to be a powerful method for detecting chromosomal regions harboring uncommon causal variants.
对于大多数复杂疾病,从全基因组关联研究中发现的变异所能解释的遗传率比例很小。尽管所谓的“罕见变异”(次要等位基因频率 [MAF] < 1%)引起了越来越多的关注,但它们不太可能解释大部分“缺失的遗传率”,因为很少有人可能携带这些罕见变异。可能填补“缺失的遗传率”的遗传变异包括罕见的因果变异(MAF < 5%),这些变异通常在使用标记单核苷酸多态性(SNP)或商业 SNP 芯片的关联研究中未被分型。开发强大的统计方法可以帮助识别包含罕见因果变异的染色体区域,同时绕过全基因组或外显子组下一代测序。在这项工作中,我们提出了一种单倍型核关联测试(HKAT),它等同于测试不同单倍型的随机效应的方差分量。通过给单倍型赋予适当的加权方案,我们可以进一步提高 HKAT 检测罕见因果变异的能力。根据群体遗传学理论模拟的场景表明,HKAT 是一种强大的方法,可用于检测包含罕见因果变异的染色体区域。