Institute of Bioinformatics, Zhejiang University, Hangzhou 310058, China.
Sci Rep. 2017 Jan 12;7:38600. doi: 10.1038/srep38600.
Most of the genome-wide association studies (GWASs) for human complex diseases have ignored dominance, epistasis and ethnic interactions. We conducted comparative GWASs for total cholesterol using full model and additive models, which illustrate the impacts of the ignoring genetic variants on analysis results and demonstrate how genetic effects of multiple loci could differ across different ethnic groups. There were 15 quantitative trait loci with 13 individual loci and 3 pairs of epistasis loci identified by full model, whereas only 14 loci (9 common loci and 5 different loci) identified by multi-loci additive model. Again, 4 full model detected loci were not detected using multi-loci additive model. PLINK-analysis identified two loci and GCTA-analysis detected only one locus with genome-wide significance. Full model identified three previously reported genes as well as several new genes. Bioinformatics analysis showed some new genes are related with cholesterol related chemicals and/or diseases. Analyses of cholesterol data and simulation studies revealed that the full model performs were better than the additive-model performs in terms of detecting power and unbiased estimations of genetic variants of complex traits.
大多数全基因组关联研究(GWAS)都忽略了显性遗传、上位性和种族相互作用对人类复杂疾病的影响。我们使用全模型和加性模型进行了总胆固醇的比较 GWAS,这说明了忽略遗传变异对分析结果的影响,并展示了多个基因座的遗传效应如何在不同种族群体中存在差异。全模型鉴定出了 15 个数量性状位点,包括 13 个个体位点和 3 对上位性位点,而多基因座加性模型仅鉴定出了 14 个位点(9 个常见位点和 5 个不同位点)。此外,多基因座加性模型未检测到 4 个全模型检测到的位点。PLINK 分析鉴定出了两个位点,GCTA 分析仅检测到一个具有全基因组意义的位点。全模型还鉴定出了之前报道的两个基因以及几个新基因。生物信息学分析表明,一些新基因与胆固醇相关的化学物质和/或疾病有关。胆固醇数据的分析和模拟研究表明,全模型在检测能力和复杂性状遗传变异的无偏估计方面的表现优于加性模型。