Hao Ke, Xu Xin, Laird Nan, Wang Xiaobin, Xu Xiping
Program for Population Genetics, Harvard School of Public Health, Boston, Massachusetts, USA.
Genet Epidemiol. 2004 Jan;26(1):22-30. doi: 10.1002/gepi.10293.
At the current stage, a large number of single nucleotide polymorphisms (SNPs) have been deployed in searching for genes underlying complex diseases. A powerful method is desirable for efficient analysis of SNP data. Recently, a novel method for multiple SNP association test using a combination of allelic association (AA) and Hardy-Weinberg disequilibrium (HWD) has been proposed. However, the power of this test has not been systematically examined. In this study, we conducted a simulation study to further evaluate the statistical power of the new procedure, as well as of the influence of the HWD on its performance. The simulation examined the scenarios of multiple disease SNPs among a candidate pool, assuming different parameters including allele frequencies and risk ratios, dominant, additive, and recessive genetic models, and the existence of gene-gene interactions and linkage disequilibrium (LD). We also evaluated the performance of this test in capturing real disease associated SNPs, when a significant global P value is detected. Our results suggest that this new procedure is more powerful than conventional single-point analyses with correction of multiple testing. However, inclusion of HWD reduces the power under most circumstances. We applied the novel association test procedure to a case-control study of preterm delivery (PTD), examining the effects of 96 candidate gene SNPs concurrently, and detected a global P value of 0.0250 by using Cochran-Armitage chi(2)s as "starting" statistics in the procedure. In the following single point analysis, SNPs on IL1RN, IL1R2, ESR1, Factor 5, and OPRM1 genes were identified as possible risk factors in PTD.
在现阶段,大量单核苷酸多态性(SNP)已被用于寻找复杂疾病的潜在基因。需要一种强大的方法来高效分析SNP数据。最近,有人提出了一种结合等位基因关联(AA)和哈迪-温伯格不平衡(HWD)进行多SNP关联测试的新方法。然而,该测试的效能尚未得到系统检验。在本研究中,我们进行了一项模拟研究,以进一步评估新方法的统计效能,以及HWD对其性能的影响。该模拟研究了候选基因库中多个疾病SNP的情况,假设了不同参数,包括等位基因频率和风险比、显性、加性和隐性遗传模型,以及基因-基因相互作用和连锁不平衡(LD)的存在。当检测到显著的全局P值时,我们还评估了该测试在捕获实际疾病相关SNP方面的性能。我们的结果表明,这种新方法比经过多重检验校正的传统单点分析更具效能。然而,在大多数情况下,纳入HWD会降低效能。我们将这种新的关联测试方法应用于早产(PTD)的病例对照研究,同时检测96个候选基因SNP的效应,并在该方法中使用 Cochr an-Armitage chi(2)检验作为“起始”统计量,检测到全局P值为0.0250。在随后的单点分析中,IL1RN、IL1R2、ESR1、凝血因子V和OPRM1基因上的SNP被确定为PTD的可能危险因素。