Do Time-Dependent Repeated Measures of Anthropometric and Body Composition Indices Improve the Prediction of Incident Diabetes in the Cohort Study? Findings from a Community-Based Korean Genome and Epidemiology Study.

IF 6.8 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Hye Ah Lee, Hyesook Park, Bomi Park
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引用次数: 0

Abstract

Background: Cumulative evidence consistently shows that anthropometric and body composition measurements are strongly linked to the risk of incident diabetes, typically based on baseline measurements. This study aims to assess whether repeated measurements enhance the prediction of diabetes risk beyond baseline assessments alone.

Methods: We utilized data from a 16-year population-based follow-up cohort within the Korean Genome and Epidemiology Study, comprising 6,030 individuals aged 40 to 69 years at baseline. We included eight indices: a body shape index (ABSI), body adiposity index (BAI), waist circumference (WC), body mass index (BMI), waist-to-hip ratio (WHR), weight-adjusted skeletal muscle index (SMI), percent body fat, and fat-to-muscle ratio. The effect of these measurements for incident diabetes was estimated using Harrell's C-indexes and hazard ratios with 95% confidence intervals, employing time-dependent Cox proportional hazard models.

Results: Over the 16-year follow-up, 939 new diabetes cases were identified (cumulative incidence, 15.6%). The median number of indicator measurements per participant was eight. The basic model, including 10 features (sex, age, education levels, physical activity, alcohol intake, current smoking, total energy intake, dietary diversity score, and log-transformed C-reactive protein levels, and quartiles of unweighted genetic risk score at baseline), yielded a Harrell's C-index of 0.610. The highest C-index in repeated measurements was for WC (0.668) across the general population, weight-adjusted SMI in men, and WHR in women. However, except for ABSI and BAI, the diabetes predictive power of the other indicators was comparable. Additionally, repeated measurements of WC, BMI, and WHR in women were found to contribute to improved discrimination compared to baseline measurements, but not in men.

Conclusion: Utilizing repeated measurements of general and central adiposity to predict diabetes may be helpful in predicting hidden risks, especially in women.

在队列研究中,对人体测量指标和身体成分指标的时间依赖性重复测量能改善对糖尿病发病的预测吗?基于社区的韩国基因组与流行病学研究结果。
背景:累积的证据一致表明,人体测量和身体成分测量与糖尿病发病风险密切相关,通常是基于基线测量。本研究旨在评估重复测量是否比单纯的基线评估更能预测糖尿病风险:我们利用了韩国基因组与流行病学研究中一个为期 16 年的人群随访队列中的数据,该队列由 6030 名基线年龄在 40 岁至 69 岁之间的人组成。我们纳入了八项指数:体形指数(ABSI)、体脂指数(BAI)、腰围(WC)、体重指数(BMI)、腰臀比(WHR)、体重调整后骨骼肌指数(SMI)、体脂百分比和脂肪肌肉比。采用与时间相关的 Cox 比例危险模型,使用 Harrell's C 指数和带有 95% 置信区间的危险比来估算这些测量值对糖尿病发病的影响:在 16 年的随访中,共发现 939 例新糖尿病病例(累计发病率为 15.6%)。每位参与者的指标测量中位数为 8 个。基本模型包括 10 个特征(性别、年龄、教育水平、体力活动、酒精摄入量、当前吸烟情况、总能量摄入量、膳食多样性评分、对数变换 C 反应蛋白水平以及基线非加权遗传风险评分的四分位数),哈雷尔 C 指数为 0.610。在普通人群、男性体重调整 SMI 和女性 WHR 中,重复测量的 C 指数最高的是 WC(0.668)。然而,除 ABSI 和 BAI 外,其他指标的糖尿病预测能力相当。此外,与基线测量值相比,重复测量女性的腹围、体重指数和体重减轻指数有助于提高分辨力,但对男性则没有作用:结论:利用重复测量一般脂肪和中心脂肪来预测糖尿病可能有助于预测隐藏的风险,尤其是女性。
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来源期刊
Diabetes & Metabolism Journal
Diabetes & Metabolism Journal Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
10.40
自引率
6.80%
发文量
92
审稿时长
52 weeks
期刊介绍: The aims of the Diabetes & Metabolism Journal are to contribute to the cure of and education about diabetes mellitus, and the advancement of diabetology through the sharing of scientific information on the latest developments in diabetology among members of the Korean Diabetes Association and other international societies. The Journal publishes articles on basic and clinical studies, focusing on areas such as metabolism, epidemiology, pathogenesis, complications, and treatments relevant to diabetes mellitus. It also publishes articles covering obesity and cardiovascular disease. Articles on translational research and timely issues including ubiquitous care or new technology in the management of diabetes and metabolic disorders are welcome. In addition, genome research, meta-analysis, and randomized controlled studies are welcome for publication. The editorial board invites articles from international research or clinical study groups. Publication is determined by the editors and peer reviewers, who are experts in their specific fields of diabetology.
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