Ghosh Saurabh, Sanapala Krishna Rao, Ghosh Abhik, Chakladar Sujatro
Human Genetics Unit, Indian Statistical Institute, Kolkata, India.
BMC Proc. 2009 Dec 15;3 Suppl 7(Suppl 7):S18. doi: 10.1186/1753-6561-3-s7-s18.
Genetic association of population-based quantitative trait data has traditionally been analyzed using analysis of variance (ANOVA). However, violations of certain statistical assumptions may lead to false-positive association results. In this study, we have explored model-free alternatives to ANOVA using correlations between allele frequencies in the different quantile intervals of the quantitative trait and the quantile values. We performed genome-wide association scans on anti-cyclic citrullinated peptide and rheumatoid factor-immunoglobulin M, two quantitative traits correlated with rheumatoid arthritis, using the data provided in Genetic Analysis Workshop 16. Both the quantitative traits exhibited significant evidence of association on Chromosome 6, although not in the human leukocyte antigen region which is known to harbor a major gene predisposing to rheumatoid arthritis. We found that while a majority of the significant findings using the asymptotic thresholds of ANOVA was not validated using permutations, a relatively higher proportion of the significant findings using the asymptotic cut-offs of the correlation statistic were validated using permutations.
传统上,基于人群的数量性状数据的基因关联分析是使用方差分析(ANOVA)进行的。然而,违反某些统计假设可能会导致假阳性关联结果。在本研究中,我们利用数量性状不同分位数区间的等位基因频率与分位数值之间的相关性,探索了ANOVA的无模型替代方法。我们使用遗传分析研讨会16提供的数据,对与类风湿性关节炎相关的两个数量性状——抗环瓜氨酸肽和类风湿因子免疫球蛋白M进行了全基因组关联扫描。这两个数量性状在6号染色体上均显示出显著的关联证据,尽管不在已知含有类风湿性关节炎主要易感基因的人类白细胞抗原区域。我们发现,虽然使用ANOVA渐近阈值的大多数显著发现未通过置换验证,但使用相关统计量渐近截止值的显著发现中有相对较高比例通过置换得到了验证。