College of Health and Human Sciences, Purdue University, West Lafayette, Indiana, USA
Division of Cardiology, Yale School of Medicine, New Haven, Connecticut, USA.
BMJ Open Diabetes Res Care. 2023 Sep;11(5). doi: 10.1136/bmjdrc-2023-003558.
Social and behavioral determinants of health (SBDH) have been linked to diabetes risk, but their role in explaining variations in cardiometabolic risk across race/ethnicity in US adults is unclear. This study aimed to classify adults into distinct cardiometabolic risk subgroups using SBDH and clinically measured metabolic risk factors, while comparing their associations with undiagnosed diabetes and pre-diabetes by race/ethnicity.
We analyzed data from 38,476 US adults without prior diabetes diagnosis from the National Health and Nutrition Examination Survey (NHANES) 1999-2018. The k-prototypes clustering algorithm was used to identify subgroups based on 16 SBDH and 13 metabolic risk factors. Each participant was classified as having no diabetes, pre-diabetes or undiagnosed diabetes using contemporaneous laboratory data. Logistic regression was used to assess associations between subgroups and diabetes status, focusing on differences by race/ethnicity.
Three subgroups were identified: cluster 1, primarily middle-aged adults with high rates of smoking, alcohol use, short sleep duration, and low diet quality; cluster 2, mostly young non-white adults with low income, low health insurance coverage, and limited healthcare access; and cluster 3, mostly older males who were the least physically active, but with high insurance coverage and healthcare access. Compared with cluster 2, adjusted ORs (95% CI) for undiagnosed diabetes were 14.9 (10.9, 20.2) in cluster 3 and 3.7 (2.8, 4.8) in cluster 1. Clusters 1 and 3 (vs cluster 2) had high odds of pre-diabetes, with ORs of 1.8 (1.6, 1.9) and 2.1 (1.8, 2.4), respectively. Race/ethnicity was found to modify the relationship between identified subgroups and pre-diabetes risk.
Self-reported SBDH combined with metabolic factors can be used to classify adults into subgroups with distinct cardiometabolic risk profiles. This approach may help identify individuals who would benefit from screening for diabetes and pre-diabetes and potentially suggest effective prevention strategies.
社会和行为决定因素与健康(SBDH)与糖尿病风险相关,但它们在解释美国成年人种族/族裔之间的心血管代谢风险差异方面的作用尚不清楚。本研究旨在使用 SBDH 和临床测量的代谢风险因素将成年人分为不同的心血管代谢风险亚组,同时比较这些亚组与种族/族裔相关的未确诊糖尿病和糖尿病前期的关联。
我们分析了来自无糖尿病既往诊断的 38476 名美国成年人的数据,这些数据来自 1999 年至 2018 年的全国健康和营养调查(NHANES)。使用 k-原型聚类算法基于 16 项 SBDH 和 13 项代谢风险因素对亚组进行分类。根据同期实验室数据,将每位参与者归类为无糖尿病、糖尿病前期或未确诊糖尿病。使用 logistic 回归评估亚组与糖尿病状态之间的关联,重点关注种族/族裔差异。
确定了三个亚组:第 1 组主要是中年吸烟者、饮酒者、睡眠持续时间短和饮食质量低的人群;第 2 组主要是年轻的非白人成年人,他们收入低、健康保险覆盖率低且获得医疗保健的机会有限;第 3 组主要是年龄较大的男性,他们的身体活动最少,但保险覆盖率和获得医疗保健的机会最高。与第 2 组相比,第 3 组的未确诊糖尿病调整后比值比(95%CI)为 14.9(10.9,20.2),第 1 组为 3.7(2.8,4.8)。第 1 组和第 3 组(与第 2 组相比)糖尿病前期的几率较高,比值比分别为 1.8(1.6,1.9)和 2.1(1.8,2.4)。种族/族裔被发现改变了确定的亚组与糖尿病前期风险之间的关系。
自我报告的 SBDH 与代谢因素相结合可用于将成年人分为具有不同心血管代谢风险特征的亚组。这种方法可以帮助识别那些可能受益于糖尿病和糖尿病前期筛查的个体,并可能提出有效的预防策略。