在妇女健康倡议中,基于基因-饮食相互作用的评分预测了对饮食脂肪的反应。

K. Westerman, Qing Liu, Simin Liu, L. Parnell, P. Sebastiani, P. Jacques, D. Demeo, J. Ordovás
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引用次数: 2

摘要

虽然饮食反应预测心脏代谢危险因素(CRFs)已被证明使用单遗传变异和主效应遗传风险评分,但很少有研究进入全基因组饮食反应评分的发展。目的:我们试图利用妇女健康倡议队列的多研究设置来生成和测试6种CRFs (BMI、收缩压、LDL胆固醇、HDL胆固醇、甘油三酯和空腹血糖)对膳食脂肪的反应的遗传评分。方法对未参加饮食改变(DM)试验的女性(n ~ 9000)的每个CRF进行全基因组相互作用研究,该试验的重点是减少膳食脂肪。基于这些分析的遗传评分是使用修剪和阈值方法开发的,并测试了DM试验参与者(n ~ 5000) 1年CRF变化和长期慢性疾病发展的预测。结果:在这些遗传评分中,只有LDL胆固醇的1个评分预测了相关CRF的变化。1760个变量的评分解释了干预组1年LDL胆固醇变化的3.7% (95% CI: 0.09, 11.9)的方差,但与对照组的变化无关。相比之下,低密度脂蛋白胆固醇的主效应遗传风险评分对于预测饮食脂肪反应没有用处。对该评分与下游疾病结局的进一步调查显示,在DM试验组中,特别是在冠心病和中风亚型方面,存在暗暗性的差异关联。结论这些结果为结合许多全基因组基因-饮食相互作用来预测饮食反应奠定了基础,同时强调了进一步研究和更大样本的需求,以获得用于个性化营养的可靠生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A gene-diet interaction-based score predicts response to dietary fat in the Women's Health Initiative.
BACKGROUND Although diet response prediction for cardiometabolic risk factors (CRFs) has been demonstrated using single genetic variants and main-effect genetic risk scores, little investigation has gone into the development of genome-wide diet response scores. OBJECTIVE We sought to leverage the multistudy setup of the Women's Health Initiative cohort to generate and test genetic scores for the response of 6 CRFs (BMI, systolic blood pressure, LDL cholesterol, HDL cholesterol, triglycerides, and fasting glucose) to dietary fat. METHODS A genome-wide interaction study was undertaken for each CRF in women (n ∼ 9000) not participating in the dietary modification (DM) trial, which focused on the reduction of dietary fat. Genetic scores based on these analyses were developed using a pruning-and-thresholding approach and tested for the prediction of 1-y CRF changes as well as long-term chronic disease development in DM trial participants (n ∼ 5000). RESULTS Only 1 of these genetic scores, for LDL cholesterol, predicted changes in the associated CRF. This 1760-variant score explained 3.7% (95% CI: 0.09, 11.9) of the variance in 1-y LDL cholesterol changes in the intervention arm but was unassociated with changes in the control arm. In contrast, a main-effect genetic risk score for LDL cholesterol was not useful for predicting dietary fat response. Further investigation of this score with respect to downstream disease outcomes revealed suggestive differential associations across DM trial arms, especially with respect to coronary heart disease and stroke subtypes. CONCLUSIONS These results lay the foundation for the combination of many genome-wide gene-diet interactions for diet response prediction while highlighting the need for further research and larger samples in order to achieve robust biomarkers for use in personalized nutrition.
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