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What your genes can (and can't) tell you about BMI and diabetes

机译:你的基因可以(不能)告诉你关于BMI和糖尿病

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摘要

Body mass index (BMI) is commonly used as a proxy for adiposity in epidemiological and public health studies. However, BMI may suffer from issues of misreporting and, because it fluctuates over the life course, its association with morbidities such as diabetes is difficult to measure. We examined the associations between actual BMI, genetic propensity for high BMI, and diabetes to better understand whether a BMI polygenic score (PGS) explained more variation in diabetes than self-reported BMI. We used a sample of non-Hispanic white adults from the longitudinal Health and Retirement Study (1992-2016). Structural equation models were used to determine how much variation in BMI could be explained by a BMI PGS. Then, we used logistic regression models (n = 12,086) to study prevalent diabetes at baseline and Cox regression models (n = 11,129) to examine incident diabetes with up to 24 years of follow-up. We observed that while both actual BMI and the BMI PGS were significantly associated with diabetes, actual BMI had a stronger association than its genetic counterpart and resulted in better model performance. Moreover, actual BMI explained more variation in baseline and incident diabetes than its genetic counterpart which may suggest that actual BMI captures more than just adiposity as intended.
机译:体重指数(BMI)通常用作流行病学和公共卫生研究中的肥胖的代理。然而,BMI可能会遭受误报的问题,因为它波动在生活课程中,它与糖尿病如糖尿病的关系难以测量。我们审查了实际BMI之间的关联,高BMI的遗传倾向,糖尿病更好地了解BMI多种子基评分(PGS)是否对自我报告的BMI解释了糖尿病的更多变异。我们使用了来自纵向健康和退休研究的非西班牙裔白人样本(1992-2016)。结构方程模型用于确定BMI PGS可以解释BMI的多大变化。然后,我们使用Logistic回归模型(n = 12,086)来研究基线和Cox回归模型(n = 11,129)的普遍型糖尿病,以检查最多24年的事故糖尿病。我们观察到,虽然实际BMI和BMI PGs都与糖尿病显着相关,但实际的BMI具有比其遗传对应更强的关联,并导致更好的模型性能。此外,实际的BMI在基线和入射型糖尿病中解释了比其遗传对应物更多的变化,这可能表明实际的BMI捕获比预期的更肥胖。

著录项

  • 来源
    《Social Biology》 |2021年第1期|40-49|共10页
  • 作者

    Carmen D. Ng; Jordan Weiss;

  • 作者单位

    Hubert Department of Global Health and the Emory Global Diabetes Research Center Emory University Atlanta GA USA;

    Population Studies Center and the Leonard Davis Institute of Health Economics University of Pennsylvania Philadelphia PA USA Department of Demography University of California Berkeley Berkeley CA USA;

  • 收录信息 美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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