Smith Hannah M, Ng Hong Kiat, Moodie Joanna E, Gadd Danni A, McCartney Daniel L, Bernabeu Elena, Campbell Archie, Redmond Paul, Taylor Adele, Page Danielle, Corley Janie, Harris Sarah E, Tay Darwin, Deary Ian J, Evans Kathryn L, Robinson Matthew R, Chambers John C, Loh Marie, Cox Simon R, Marioni Riccardo E, Hillary Robert F
Centre for Genomic and Experimental Medicine, Institute of Genetics and Cancer, University of Edinburgh, Edinburgh, UK.
Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore.
Am J Hum Genet. 2025 Jan 2;112(1):106-115. doi: 10.1016/j.ajhg.2024.11.012. Epub 2024 Dec 19.
Exploring the molecular correlates of metabolic health measures may identify their shared and unique biological processes and pathways. Molecular proxies of these traits may also provide a more objective approach to their measurement. Here, DNA methylation (DNAm) data were used in epigenome-wide association studies (EWASs) and for training epigenetic scores (EpiScores) of six metabolic traits: body mass index (BMI), body fat percentage, waist-hip ratio, and blood-based measures of glucose, high-density lipoprotein cholesterol, and total cholesterol in >17,000 volunteers from the Generation Scotland (GS) cohort. We observed a maximum of 12,033 significant findings (p < 3.6 × 10) for BMI in a marginal linear regression EWAS. By contrast, a joint and conditional Bayesian penalized regression approach yielded 27 high-confidence associations with BMI. EpiScores trained in GS performed well in both Scottish and Singaporean test cohorts (Lothian Birth Cohort 1936 [LBC1936] and Health for Life in Singapore [HELIOS]). The EpiScores for BMI and total cholesterol performed best in HELIOS, explaining 20.8% and 7.1% of the variance in the measured traits, respectively. The corresponding results in LBC1936 were 14.4% and 3.2%, respectively. Differences were observed in HELIOS for body fat, where the EpiScore explained ∼9% of the variance in Chinese and Malay -subgroups but ∼3% in the Indian subgroup. The EpiScores also correlated with cognitive function in LBC1936 (standardized β: 0.08-0.12, false discovery rate p [p] < 0.05). Accounting for the correlation structure across the methylome can vastly affect the number of lead findings in EWASs. The EpiScores of metabolic traits are broadly applicable across populations and can reflect differences in cognition.
探索代谢健康指标的分子关联可能会识别出它们共有的和独特的生物学过程及途径。这些特征的分子代理指标也可能为其测量提供一种更客观的方法。在此,DNA甲基化(DNAm)数据被用于全表观基因组关联研究(EWAS),并用于训练来自苏格兰一代(GS)队列中超过17,000名志愿者的六种代谢特征的表观遗传评分(EpiScores):体重指数(BMI)、体脂百分比、腰臀比以及血液中的葡萄糖、高密度脂蛋白胆固醇和总胆固醇指标。在边际线性回归EWAS中,我们观察到BMI最多有12,033个显著结果(p < 3.6 × 10)。相比之下,联合和条件贝叶斯惩罚回归方法产生了27个与BMI的高置信度关联。在GS中训练的EpiScores在苏格兰和新加坡的测试队列(1936年洛锡安出生队列[LBC1936]和新加坡生命健康研究[HELIOS])中表现良好。BMI和总胆固醇的EpiScores在HELIOS中表现最佳,分别解释了所测特征中20.8%和7.1%的方差。LBC1936中的相应结果分别为14.4%和3.2%。在HELIOS中观察到体脂方面存在差异,其中EpiScore在中国和马来亚亚组中解释了约9%的方差,但在印度亚组中约为3%。EpiScores在LBC1936中也与认知功能相关(标准化β:0.08 - 0.12,错误发现率p [p] < 0.05)。考虑甲基化组的相关结构会极大地影响EWAS中主要发现的数量。代谢特征的EpiScores在不同人群中具有广泛适用性,并且可以反映认知差异。