医学
体质指数
腰围
危险系数
2型糖尿病
鹿特丹研究
比例危险模型
内科学
人口
人口学
队列研究
置信区间
人体测量学
队列
前瞻性队列研究
糖尿病
内分泌学
环境卫生
社会学
作者
Navin Suthahar,Kan Wang,Victor W Zwartkruis,Stephan J. L. Bakker,Silvio E. Inzucchi,Laura M.G. Meems,Tim R. Eijgenraam,Fariba Ahmadizar,Eric J.G. Sijbrands,Ron T. Gansevoort,Lyanne M. Kieneker,Dirk J. van Veldhuisen,Maryam Kavousi,Rudolf A. de Boer
标识
DOI:10.1016/j.ejim.2022.12.024
摘要
Relative fat mass (RFM) is a novel sex-specific anthropometric equation (based on height and waist measurements) to estimate whole-body fat percentage.To examine associations of RFM with incident type-2 diabetes (T2D), and to benchmark its performance against body-mass index (BMI), waist circumference (WC) and waist-to-hip ratio (WHR).This prospective longitudinal study included data from three Dutch community-based cohorts free of baseline diabetes. First, we examined data from the PREVEND cohort (median age and follow-up duration: 48.0 and 12.5 years, respectively) using Cox regression models. Validation was performed in the Lifelines (median age and follow-up duration: 45.5 and 3.8 years, respectively) and Rotterdam (median age and follow-up duration: 68.0 and 13.9 years, respectively) cohorts.Among 7961 PREVEND participants, 522 (6.6%) developed T2D. In a multivariable model, all adiposity indices were significantly associated with incident T2D (Pall<0.001). While 1 SD increase in BMI, WC and WHR were associated with 68%, 77% and 61% increased risk of developing T2D [Hazard ratio (HR)BMI: 1.68 (95%CI: 1.57-1.80), HRWC: 1.77 (95% CI: 1.63-1.92) and HRWHR: 1.61 (95%CI: 1.48-1.75)], an equivalent increase in RFM was associated with 119% increased risk [HR: 2.19 (95%CI: 1.96-2.44)]. RFM was associated with incident T2D across all age groups, with the largest effect size in the youngest (<40 years) age category [HR: 2.90 (95%CI: 2.15-3.92)]. Results were broadly similar in Lifelines (n = 93,870) and Rotterdam (n = 5279) cohorts.RFM is strongly associated with new-onset T2D and displays the potential to be used in the general practice setting to estimate the risk of future diabetes.
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