MRC Human Genetics Unit, Institute of Genetics and Cancer, University of Edinburgh, Edinburgh, United Kingdom.
Faculty of Forensic Medicine, Zhongshan School of Medicine, Sun Yat-Sen University, China.
PLoS Genet. 2021 Sep 9;17(9):e1009750. doi: 10.1371/journal.pgen.1009750. eCollection 2021 Sep.
Variation in obesity-related traits has a genetic basis with heritabilities between 40 and 70%. While the global obesity pandemic is usually associated with environmental changes related to lifestyle and socioeconomic changes, most genetic studies do not include all relevant environmental covariates, so the genetic contribution to variation in obesity-related traits cannot be accurately assessed. Some studies have described interactions between a few individual genes linked to obesity and environmental variables but there is no agreement on their total contribution to differences between individuals. Here we compared self-reported smoking data and a methylation-based proxy to explore the effect of smoking and genome-by-smoking interactions on obesity related traits from a genome-wide perspective to estimate the amount of variance they explain. Our results indicate that exploiting omic measures can improve models for complex traits such as obesity and can be used as a substitute for, or jointly with, environmental records to better understand causes of disease.
肥胖相关特征的变化具有遗传基础,遗传率在 40%至 70%之间。虽然全球肥胖流行通常与生活方式和社会经济变化相关的环境变化有关,但大多数遗传研究并未包括所有相关的环境协变量,因此无法准确评估遗传对肥胖相关特征变化的贡献。一些研究描述了少数与肥胖相关的基因与环境变量之间的相互作用,但对于它们对个体差异的总贡献尚无共识。在这里,我们比较了自我报告的吸烟数据和基于甲基化的替代物,从全基因组角度探讨了吸烟和基因组-吸烟相互作用对肥胖相关特征的影响,以估计它们所解释的方差量。我们的结果表明,利用组学测量可以改善肥胖等复杂特征的模型,并且可以替代或与环境记录一起使用,以更好地了解疾病的原因。