Fingerlin Tasha E, Boehnke Michael, Abecasis Gonçalo R
Department of Epidemiology, School of Public Health, and Center for Statistical Genetics, University of Michigan, Ann Arbor, MI, USA.
Am J Hum Genet. 2004 Mar;74(3):432-43. doi: 10.1086/381652. Epub 2004 Feb 2.
Case-control disease-marker association studies are often used in the search for variants that predispose to complex diseases. One approach to increasing the power of these studies is to enrich the case sample for individuals likely to be affected because of genetic factors. In this article, we compare three case-selection strategies that use allele-sharing information with the standard strategy that selects a single individual from each family at random. In affected sibship samples, we show that, by carefully selecting sibships and/or individuals on the basis of allele sharing, we can increase the frequency of disease-associated alleles in the case sample. When these cases are compared with unrelated controls, the difference in the frequency of the disease-associated allele is therefore also increased. We find that, by choosing the affected sib who shows the most evidence for pairwise allele sharing with the other affected sibs in families, the test statistic is increased by >20%, on average, for additive models with modest genotype relative risks. In addition, we find that the per-genotype information associated with the allele sharing-based strategies is increased compared with that associated with random selection of a sib for genotyping. Even though we select sibs on the basis of a nonparametric statistic, the additional gain for selection based on the unknown underlying mode of inheritance is minimal. We show that these properties hold even when the power to detect linkage to a region in the entire sample is negligible. This approach can be extended to more-general pedigree structures and quantitative traits.
病例对照疾病标志物关联研究常用于寻找易患复杂疾病的变异体。提高这些研究效力的一种方法是在病例样本中富集可能因遗传因素而患病的个体。在本文中,我们将三种利用等位基因共享信息的病例选择策略与从每个家族中随机选择一个个体的标准策略进行比较。在患病同胞样本中,我们表明,通过基于等位基因共享仔细选择同胞对和/或个体,可以提高病例样本中疾病相关等位基因的频率。当将这些病例与无关对照进行比较时,疾病相关等位基因频率的差异也会增加。我们发现,对于具有适度基因型相对风险的加性模型,通过选择在家族中与其他患病同胞表现出最强成对等位基因共享证据的患病同胞,平均而言,检验统计量会增加20%以上。此外,我们发现,与基于等位基因共享的策略相关的每个基因型信息相比于随机选择一个同胞进行基因分型有所增加。尽管我们基于非参数统计量选择同胞,但基于未知潜在遗传模式的选择所带来的额外收益很小。我们表明,即使在整个样本中检测与一个区域连锁的效力可忽略不计的情况下,这些特性依然成立。这种方法可以扩展到更一般的家系结构和数量性状。