Jawara Dawda, Krebsbach Craig M, Venkatesh Manasa, Murtha Jacqueline A, Hanlon Bret M, Lauer Kate V, Stalter Lily N, Funk Luke M
Department of Surgery, University of Wisconsin, Madison, WI, USA.
Department of Biostatistics and Medical Informatics, University of Wisconsin, Madison, WI, USA.
Int J Obes (Lond). 2025 Feb;49(2):315-321. doi: 10.1038/s41366-024-01661-w. Epub 2024 Oct 29.
Obesity is a major public health challenge in the U.S. Existing datasets utilized for calculating obesity prevalence, such as the National Health and Nutrition Examination Survey (NHANES) and Behavioral Risk Factor Surveillance System (BRFSS), have limitations. Our objective was to analyze weight trends in the U.S. using a nationally representative dataset that incorporates longitudinal electronic health record data.
Using the National Institutes of Health All of Us Research Program (AoU) dataset, we identified patients aged 18-70 years old who had at least two height and weight measurements within a 5-year period from 2008 to 2021. Baseline and most recent BMI values were used to calculate total body weight (%TBW) changes. %TBW change predictors were determined using multivariable linear regression.
We included 30,862 patients (mean age 48.9 [ ± 12.6] years; 60.5% female). At the 5-year follow-up, the prevalences of obesity and severe obesity were 37.4% and 20.7%, respectively. The frequency of patients with normal weight or overweight BMI who gained ≥5% TBW at follow-up was 37.8% and 33.1%, respectively. Nearly 24% of the cohort lost ≥ 5% TBW, and 6.5% with severe obesity lost weight to achieve a BMI < 30 kg/m. In adjusted analyses, male sex (-1.10%, 95% CI [-1.36, -0.85]), non-Hispanic Asian race/ethnicity (-1.69% [-2.44, -0.94]), and type 2 diabetes (-1.58% [-1.95, -1.22]) were associated with weight loss, while obstructive sleep apnea (1.80% [1.40, 2.19]) was associated with weight gain.
This evaluation of an NIH-partnered dataset suggests that patients are continuing to gain weight in the U.S. AoU represents a unique tool for obesity prediction, prevention, and treatment given its longitudinal nature and unique behavioral and genetic data.
肥胖是美国面临的一项重大公共卫生挑战。用于计算肥胖患病率的现有数据集,如美国国家健康与营养检查调查(NHANES)和行为危险因素监测系统(BRFSS),存在局限性。我们的目标是使用一个纳入纵向电子健康记录数据的全国代表性数据集来分析美国的体重趋势。
利用美国国立卫生研究院的“我们所有人”研究计划(AoU)数据集,我们确定了年龄在18至70岁之间、在2008年至2021年的5年期间至少有两次身高和体重测量值的患者。使用基线和最近的体重指数(BMI)值来计算总体重(%TBW)变化。使用多变量线性回归确定%TBW变化的预测因素。
我们纳入了30862名患者(平均年龄48.9 [±12.6]岁;60.5%为女性)。在5年随访时,肥胖和重度肥胖的患病率分别为37.4%和20.7%。体重正常或超重的BMI患者在随访时体重增加≥5%TBW的频率分别为37.8%和33.1%。近24%的队列体重减轻≥5%TBW,6.5%的重度肥胖患者体重减轻以达到BMI<30 kg/m²。在多因素分析中,男性(-1.10%,95%CI [-1.36,-0.85])、非西班牙裔亚裔种族/族裔(-1.69% [-2.44,-0.94])和2型糖尿病(-1.58% [-1.95,-1.22])与体重减轻相关,而阻塞性睡眠呼吸暂停(1.80% [1.40,2.19])与体重增加相关。
对一个与美国国立卫生研究院合作的数据集的评估表明,美国患者的体重仍在增加。鉴于其纵向性质以及独特的行为和基因数据,AoU是肥胖预测、预防和治疗的一个独特工具。