首页> 美国卫生研究院文献>Frontiers in Genetics >Models Integrating Genetic and Lifestyle Interactions on Two Adiposity Phenotypes for Personalized Prescription of Energy-Restricted Diets With Different Macronutrient Distribution
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Models Integrating Genetic and Lifestyle Interactions on Two Adiposity Phenotypes for Personalized Prescription of Energy-Restricted Diets With Different Macronutrient Distribution

机译:两种遗传表型整合遗传和生活方式相互作用的模型,用于不同宏观营养素分布的能量受限饮食的个性化处方

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摘要

Aim: To analyze the influence of genetics and interactions with environmental factors on adiposity outcomes [waist circumference reduction (WCR) and total body fat loss (TFATL)] in response to energy-restricted diets in subjects with excessive body weight. Materials and Methods: Two hypocaloric diets (30% energy restriction) were prescribed to overweight/obese subjects during 16 weeks, which had different targeted macronutrient distribution: a low-fat (LF) diet (22% energy from lipids) and a moderately high-protein (MHP) diet (30% energy from proteins). At the end of the trial, a total of 201 participants (LF diet = 105; MHP diet = 96) who presented good/regular dietary adherence were genotyped for 95 single nucleotide polymorphisms (SNPs) previously associated with weight loss through next-generation sequencing from oral samples. Four unweighted (uGRS) and four weighted (wGRS) genetic risk scores were computed using statistically relevant SNPs for each outcome by diet. Predictions of WCR and TFATL by diet were modeled through recognized multiple linear regression models including genetic (single SNPs, uGRS, and wGRS), phenotypic (age, sex, and WC, or TFAT at baseline), and environment variables (physical activity level and energy intake at baselines) as well as eventual interactions between genes and environmental factors. Results: Overall, 26 different SNPs were associated with differential adiposity outcomes, 9 with WCR and 17 with TFATL, most of which were specific for each dietary intervention. In addition to conventional predictors (age, sex, lifestyle, and adiposity status at baseline), the calculated uGRS/wGRS and interactions with environmental factors were major contributors of adiposity responses. Thus, variances in TFATL-LF diet, TFATL-MHP diet, WCR-LF diet, and WCR-MHP diet were predicted by approximately 38% (optimism-corrected adj. R 2 = 0.3792), 32% (optimism-corrected adj. R 2 = 0.3208), 22% (optimism-corrected adj. R 2 = 0.2208), and 21% (optimism-corrected adj. R 2 = 0.2081), respectively. Conclusions: Different genetic variants and interactions with environmental factors modulate the differential individual responses to MHP and LF dietary interventions. These insights and models may help to optimize personalized nutritional strategies for modeling the prevention and management of excessive adiposity through precision nutrition approaches taking into account not only genetic information but also the lifestyle/clinical factors that interplay in addition to age and sex.
机译:目标:分析遗传因素以及与环境因素的相互作用对过量饮食受试者饮食中能量限制饮食对肥胖结局的影响[腰围减少(WCR)和全身脂肪损失(TFATL)]体重。 材料和方法:在16周内,超重/肥胖的受试者服用了两种低热量饮食(能量限制为30%),这些饮食具有不同的目标常量营养素分布:低脂(LF)饮食(能量为22%)脂肪)和中等高蛋白(MHP)饮食(30%的能量来自蛋白质)。在试验结束时,共有201名表现良好/正常饮食依从性的参与者(LF饮食= 105; MHP饮食= 96)被定型为95种单核苷酸多态性(SNP),以前通过下一代测序与体重减轻有关口服样品对于饮食中的每种结局,使用统计上相关的SNP来计算四个未加权(uGRS)和四个加权(wGRS)遗传风险评分。通过公认的多元线性回归模型对饮食中WCR和TFATL的预测进行建模,这些线性回归模型包括遗传因素(单个SNP,uGRS和wGRS),表型(年龄,性别和WC或基线时的TFAT)和环境变量(体力活动水平和基线的能量摄入)以及基因和环境因素之间的最终相互作用。 结果:总体而言,有26种不同的SNP与不同的肥胖状况相关,其中9种与WCR相关,而17种与TFATL相关,其中大多数特定于每种饮食干预。除了常规预测指标(年龄,性别,生活方式和基线肥胖状态)之外,计算出的uGRS / wGRS以及与环境因素的相互作用也是肥胖反应的主要因素。因此,预计TFATL-LF饮食,TFATL-MHP饮食,WCR-LF饮食和WCR-MHP饮食的差异约为38%(乐观校正的调整R 2 = 0.3792),32 %(优化校正后的R 2 = 0.3208),22%(优化校正后的R 2 = 0.2208)和21%(优化校正后的R. R 2 = 0.2081)。 结论:不同的遗传变异以及与环境因素的相互作用调节了个体对MHP和LF饮食干预的不同反应。这些见解和模型可以通过精确的营养方法,不仅考虑遗传信息,而且考虑年龄和性别之间相互作用的生活方式/临床因素,有助于优化个性化的营养策略,以预防和管理过多的肥胖症。

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