Lin D Y
Department of Biostatistics, University of North Carolina, Chapel Hill, 27599-7420, USA.
Am J Hum Genet. 2006 Mar;78(3):505-9. doi: 10.1086/500812. Epub 2006 Jan 11.
Genomewide association studies are being conducted to unravel the genetic etiology of complex human diseases. Because of cost constraints, these studies typically employ a two-stage design, under which a large panel of markers is examined in a subsample of subjects, and the most-promising markers are then examined in all subjects. This report describes a simple and efficient method to evaluate statistical significance for such genome studies. The proposed method, which properly accounts for the correlated nature of polymorphism data, provides accurate control of the overall false-positive rate and is substantially more powerful than the standard Bonferroni correction, especially when the markers are in strong linkage disequilibrium.
全基因组关联研究正在开展,以揭示复杂人类疾病的遗传病因。由于成本限制,这些研究通常采用两阶段设计,即在受试者的一个子样本中检查一大组标记,然后在所有受试者中检查最有前景的标记。本报告描述了一种简单有效的方法来评估此类基因组研究的统计显著性。所提出的方法正确考虑了多态性数据的相关性,能准确控制总体假阳性率,并且比标准的邦费罗尼校正更具效力,尤其是当标记处于强连锁不平衡状态时。